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2026年第1期共收录40篇
1. Agri-Eval: Multi-level Large Language Model Valuation Benchmark for Agriculture
Accession number: 20260119857526
Title of translation: Agri-Eval:农业领域大语言模型多层次评估基准
Authors: Wang, Yaojun (1); Ge, Mingliang (1); Xu, Guowei (1); Zhang, Qiyu (1); Bie, Yuhui (1)
Author affiliation: (1) College of Information and Electrical Engineering, China Agricultural University, Beijing; 100083, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 290-299
Language: English
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Model evaluation using benehmark datasets is an important method to measure the capability of large language models (LLMs) in specific domains, and it is mainly used to assess the knowledge and reasoning abilities of LLMs. Therefore, in order to better assess the capability of LLMs in the agricultural domain, Agri-Eval was proposed as a benchmark for assessing the knowledge and reasoning ability of LLMs in agriculture. The assessment dataset used in Agri-Eval covered seven major disciplines in the agricultural domain; crop science, horticulture, plant protection, animal husbandry, forest science, aquaculture science, and grass science, and contained a total of 2 283 questions. Among domestic general-purpose LLMs, DeepSeek — Rl performed best with an accuracy rate of 75. 4 9 % . In the realm of international general-purpose LLMs, Gemini —2.0 — pro — exp — 02 — 05 standed out as the top performer, achieving an accuracy rate of 74. 2 8 % . As an LLMs in agriculture vertical, Shennong V2. 0 outperformed all the LLMs in China, and the answer accuracy rate of agricultural knowledge exceeded that of all the existing general-purpose LLMs. The launch of Agri-Eval helped the LLM developers to comprehensively evaluate the model’s capability in the field of agriculture through a variety of tasks and tests to promote the development of the LLMs in the field of agriculture. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 23
Main heading: Large datasets
Controlled terms: Agribusiness? - ?Agriculture? - ?Domain Knowledge? - ?Livestock? - ?Plants (botany)
Uncontrolled terms: Accuracy rate? - ?Agricultural dataset? - ?Agricultural knowledge? - ?Assessment system? - ?Knowledge abilities? - ?Language model? - ?Large language model? - ?Model evaluation? - ?Multilevels? - ?Reasoning ability
Classification code: 103 Biology? - ?821 Agricultural Equipment and Methods; Vegetation and Pest Control? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?1101 Artificial Intelligence? - ?1106.2 Data Handling and Data Processing
Numerical data indexing: Percentage 8.00E+00%, Percentage 9.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.027
Funding text: Foundation item: National Key R&D Program (2024YFD2000805)
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
2. Agricultural UAV Path Planning Based on Improved Hippopotamus Optimization Algorithm
Accession number: 20260119851369
Title of translation: 基于改进河马算法的农业无人机路径规划
Authors: Han, Tao (1); Li, Tingling (1); Huang, Yourui (1)
Author affiliation: (1) College of Electrical and Information Engineering, Anhui University of Science and Technology, Huainan; 232001, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 339-347
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming to address the inefficiency, high cost, and poor safety of traditional agricultural vehicle-based transport, a dynamic modified hippopotamus optimization ( DMHO ) was proposed for agricultural UAV path planning. The algorithm synthesized the advantages of Levy flight, growth ratio mechanism, lens opposition-based learning (LOBL) algorithm with adaptive learning rate and stochastic diffusion to comprehensively improve the algorithm’s global search and exploration capabilities. Based on the test results of the algorithm on 23 classical benchmark functions, it was shown that dynamic modified hippopotamus optimization exhibited optimal performance on 21 of these functions and had the best optimization searching effect compared with eight algorithms such as the original hippopotamus optimization algorithm. The three-dimensional terrain of the unmanned aerial vehicle flight environment in the hilly planting area was constructed, the trajectory planning model of the agricultural unmanned aerial vehicle in this environment was built, and the trajectory planning cost function was designed to satisfy the multi-conditional constraints. In the three different complexity tasks, dynamic modified hippopotamus optimization had the lowest average fitness result among all the compared algorithms, and the standard deviation in the test results was decreased by 33.39%, 72.81% and 7.08%, respectively, in comparison with hippopotamus optimization algorithm. The dynamic modified hippopotamus optimization algorithm demonstrated remarkable superiority and stability in experimental evaluations. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 21
Main heading: Motion planning
Controlled terms: Agricultural robots? - ?Agriculture? - ?Antennas? - ?Benchmarking? - ?Flight paths? - ?Learning algorithms? - ?Optimization? - ?Stochastic systems? - ?Unmanned aerial vehicles (UAV)
Uncontrolled terms: Aerial vehicle? - ?Agricultural UAV? - ?Agricultural vehicles? - ?Dynamic modified? - ?High costs? - ?Hippopotamus optimization algorithm? - ?Optimisations? - ?Optimization algorithms? - ?Synthesised? - ?Trajectory Planning
Classification code: 652 Aircraft and Avionics? - ?652.1 Aircraft? - ?716.5.1 Antennas? - ?731.6 Robot Applications? - ?821 Agricultural Equipment and Methods; Vegetation and Pest Control? - ?821.2 Agricultural Machinery and Equipment? - ?913.3 Quality Assurance and Control? - ?1101 Artificial Intelligence? - ?1101.2 Machine Learning? - ?1201.7 Optimization Techniques? - ?1202.1 Probability Theory
Numerical data indexing: Percentage 3.339E+01%, Percentage 7.08E+00%, Percentage 7.281E+01%
DOI: 10.6041/j.issn.1000-1298.2026.01.032
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
3. Prediction Method of Tobacco Sensory Indicators Based on Near Infrared Spectroscopy and Transformer
Accession number: 20260119851310
Title of translation: 基于近红外光谱与Transformer的烟叶感官指标预测方法
Authors: Zhang, Yunwei (1); Zhang, Jiantao (1); Zhang, Hai (2); Zhou, Weihao (2); Li, Bin (2); Tao, Chengjin (2)
Author affiliation: (1) Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming; 650504, China; (2) Yunnan Tobacco and Leaf Company, Kunming; 650271, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 386-396
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In order to overcome the technical bottlenecks of strong subjectivity, over-reliance on manual experience and sensory evaluation in the process of traditional cigarette formula design and maintenance, an indirect correlation model of “near infrared spectroscopy-chemical composition-sensory indicators” was constructed, and an end-to-end tobacco sensory quality indicators prediction method was proposed based on near infrared spectroscopy and Transformer architecture. Firstly, three spectral preprocessing techniques, Savitzky - Golay convolution smoothing method (SG), first derivative method ( D1 ), and multivariate scattering correction ( MSG ), were used to effectively eliminate baseline drift and scattering interference; then a Transformer prediction model oriented to spectral data features was designed to achieve accurate prediction of the three-dimensional evaluation system of tobacco sensory quality ( style characteristics; freshness, sweet, and burnt; smoke characteristics; concentration and strength; quality characteristics: quality of aroma, volume of aroma, offensive taste, irritating, and pleasant aftertaste ). The model was analyzed by using the SHAP method to enhance its interpretability. Results showed that the model’s mean absolute error for each sensory indicators test set was no more than 0. 56, demonstrating good usability. For different sensory indicators, the model demonstrated strong capture of distinct spectral feature bands, effectively exploring the synergistic mechanism of spectral features and demonstrating good interpretability. Furthermore, a method for assisting tobacco leaf substitution was designed by combining multidimensional similarity analysis, providing quantitative decision support for tobacco leaf substitution and blend optimization. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 39
Main heading: Near infrared spectroscopy
Controlled terms: Convolution? - ?Decision support systems? - ?Forecasting? - ?Odors? - ?Prediction models? - ?Quality control? - ?Sensory analysis? - ?Smoke? - ?Statistical tests? - ?Tobacco
Uncontrolled terms: Infrared: spectroscopy? - ?Near Infrared? - ?Near-infrared? - ?Prediction methods? - ?Prediction modelling? - ?Sensory qualities? - ?Tobacco leaf? - ?Tobacco leaf substitute? - ?Tobacco sensory indicator? - ?Transformer
Classification code: 101.5 Ergonomics and Human Factors Engineering? - ?716.1 Information Theory and Signal Processing? - ?821.5 Agricultural Products? - ?912.2 Management? - ?913.3 Quality Assurance and Control? - ?1101 Artificial Intelligence? - ?1106 Computer Software, Data Handling and Applications? - ?1202 Statistical Methods? - ?1202.2 Mathematical Statistics? - ?1301.1.3.1 Spectroscopy? - ?1502.1.1.1.1 Air Pollution Sources
DOI: 10.6041/j.issn.1000-1298.2026.01.037
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
4. Lightweight Tomato Crop Disease Detection Model Based on Residual Connections
Accession number: 20260119857614
Title of translation: 基于残差连接的轻量化番茄作物病害检测模型
Authors: Zou, Qiang (1); Song, Xin (1); Song, Zhongyue (2, 3); Tian, Ying (4); Chao, Bo (1); Jia, Xueqin (1)
Author affiliation: (1) College of Engineering and Technology, Tianjin Agricultural University, Tianjin; 300392, China; (2) Tianjin Beidou Navigation and Aviation Electronics Technology Co. , Ltd., Tianjin; 300459, China; (3) School of Energy Engineering, Tianjin Sino-German University of Applied Sciences, Tianjin; 300350, China; (4) School of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing; 100044, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 140-148
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Tomato crops are prone to be attacked by various diseases during their growth process. The computational load of disease detection strategies based on deep learning models was usually substantial. To address this issue, a lightweight deep learning model called ResDepSepNet was proposed. This model was constructed based on residual modules to alleviate the gradient vanishing problem that may occur during model training, thereby improving the overall performance of the model. To reduce the model’s computational load, depthwise separable convolutions were introduced, and downsampling was achieved by increasing the stride of the convolutional operations. Additionally, an squeeze-and-excitation (SE) attention module was introduced to enable the model to focus more on feature information crucial for disease identification, thereby enhancing its disease recognition capability. The ResDepSepNet model was tested by using the PlantVillage tomato disease dataset, and the test results were compared with the MobileNetV2 model and the TrioConvTomatoNet model. The test results showed that the overall accuracy of the ResDepSepNet model was 4. 8 and 1. 1 percentage points higher than that of the MobileNetV2 and TrioConvTomatoNet models, respectively. Moreover, its floating-point operations count was merely 3. 5 X 10, approximately 1/18 and 1/7 of those of the MobilenetV2 and TrioConvTomatoNet models, respectively. The research result can provide a technical reference for disease detection in tomato crops. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 30
Main heading: Fruits
Controlled terms: Convolution? - ?Crops? - ?Deep learning? - ?Digital arithmetic? - ?Learning systems? - ?Plant diseases? - ?Plants (botany)? - ?Statistical tests
Uncontrolled terms: Computational loads? - ?Crop disease? - ?Detection models? - ?Disease detection? - ?Learning models? - ?Lightweight design? - ?Model-based OPC? - ?Residual module? - ?Tomato? - ?Tomato crops
Classification code: 103 Biology? - ?716.1 Information Theory and Signal Processing? - ?821.5 Agricultural Products? - ?1101.2 Machine Learning? - ?1101.2.1 Deep Learning? - ?1102.1 Computer Theory, Includes Computational Logic, Automata Theory, Switching Theory, Programming Theory? - ?1202.2 Mathematical Statistics
DOI: 10.6041/j.issn.1000-1298.2026.01.013
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
5. 3D Point Cloud Stem Leaf Segmentation and Phenotypic Analysis of Maize Plants
Accession number: 20260119857726
Title of translation: 玉米植株三维点云茎叶分割与表型解析
Authors: Liang, Yajie (1); Han, Dong (1); Zhang, Zhibin (1); Zhao, Mengdi (1); Yang, Si (2)
Author affiliation: (1) Department of Computer Science, Inner Mongolia University, Hohhot; 010021, China; (2) Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing; 100097, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 104-113
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: ; Plant phenotyping plays a vital role in precision agriculture, crop breeding, and production management, among which maize phenotyping research is of particular significance for yield improvement, quality enhancement, and agricultural modernization. With the advantages of high precision and rich structural information, 3D point cloud technology has emerged as an important tool in plant phenotyping. Compared with traditional 2D image-based methods, point clouds provide a more accurate description of plant organ morphology, thereby enabling precise monitoring of maize growth and extraction of phenotypic traits. Nevertheless, existing point cloud segmentation methods still face challenges in maize stem-leaf analysis, especially in recognizing newly emerging leaves, segmenting overlapping or closely spaced leaves, and delineating stem-leaf boundaries, which restricted the accuracy of phenotypic parameter measurement. To address these issues, a distance field-based stem-leaf segmentation method for maize point clouds was proposed. Specifically, Quickshift + + and Minkowski distance fields were integrated with a constrained median-normalized region growing algorithm for precise stem extraction. Furthermore, the segmentation framework based on skeleton and optimal transport distance has been refined, enhancing the accuracy of boundary recognition between stems and leaves. Experiments were conducted on both self-collected and public maize point cloud datasets. The results demonstrated that the proposed method significantly improved segmentation accuracy and enhanced the precision of phenotypic trait extraction, including stem height, stem diameter, leaf length, and leaf width. The research result can provide methodological support for maize phenotyping and offer valuable references for intelligent agriculture and precision crop management. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 28
Main heading: Extraction
Controlled terms: Agribusiness? - ?Crops? - ?Grain (agricultural product)? - ?Image segmentation? - ?Morphology? - ?Plant diseases? - ?Plants (botany)? - ?Precision agriculture
Uncontrolled terms: 3D point cloud? - ?Distance field? - ?Features extraction? - ?Maize phenotyping? - ?Phenotypic traits? - ?Phenotyping? - ?Plant phenotyping? - ?Point-clouds? - ?Segmentation methods? - ?Stem-leaf segmentation
Classification code: 103 Biology? - ?214 Materials Science? - ?802.3 Chemical Operations? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?1106.3.1 Image Processing
DOI: 10.6041/j.issn.1000-1298.2026.01.010
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
6. Vision-guided Tomato Continuous Picking Sequence Optimization Method
Accession number: 20260119851366
Title of translation: 基于视觉引导的番茄连续采摘序列优化方法
Authors: Li, Xiaojuan (1); Han, Ruichun (1); Liang, Zhi (1); Chen, Tao (1); Lin, Zhonglong (1); Liu, Bo (1); Zou, Xiangjun (1); Wu, Letian (2)
Author affiliation: (1) College of Mechanical Engineering, Xinjiang University, Urumqi; 830017, China; (2) Institute of Agricultural Machinery, Xinjiang Academy of Agricultural Science, Urumqi; 830091, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 329-338
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In order to solve the problems of low picking success rate and long planning path when the picking robot picks multiple target tomatoes continuously, a multi-objective tomato picking sequence optimization method based on visual guidance was proposed. A spatially heterogeneous binocular stereo vision positioning system was established to obtain the three-dimensional coordinates of multi-objective tomatoes, to judge the maturity and occlusion of tomatoes, establish the space and collection of tomato picking tasks based on visual guidance in non-enclosed space, and transform the continuous picking problem into a three-dimensional traveling salesman problem. A continuous picking sequence optimization method based on improved sparrow algorithm ( VG - ISSA ) was constructed, the population was initialized by cubic chaos mapping, and the sparrow population with high randomness and ergodic nature was obtained, the position of the explorer was adaptively adjusted by combining the particle swarm optimization strategy, the Levy flight strategy was added to enhance the traversal of the followers, and a visual information introduction strategy was proposed, so that the algorithm could carry out reasonable sequence optimization according to the actual occlusion. The results showed that compared with the genetic algorithm, particle swarm optimization and standard sparrow algorithm, the improved algorithm reduced the response time by 19. 8%, 32. 9% and 42. 4%, and the path length was reduced by 25. 8%, 24. 0% and 16. 24%, respectively. Experiments showed that the proposed method had certain advancement in the process of continuous tomato picking by picking robot. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 27
Main heading: Fruits
Controlled terms: Genetic algorithms? - ?Motion planning? - ?Multiobjective optimization? - ?Particle swarm optimization (PSO)? - ?Problem solving? - ?Robot programming? - ?Stereo image processing? - ?Stereo vision? - ?Traveling salesman problem
Uncontrolled terms: Multi objective? - ?Optimization method? - ?Particle swarm? - ?Picking robot? - ?Picking sequence? - ?Sequence optimization? - ?Sparrow algorithm? - ?Tomato picking robot? - ?Travel salesman problems? - ?Visual guidance
Classification code: 731.5 Robotics? - ?731.6 Robot Applications? - ?821.5 Agricultural Products? - ?1101 Artificial Intelligence? - ?1106 Computer Software, Data Handling and Applications? - ?1106.1 Computer Programming? - ?1106.3.1 Image Processing? - ?1201.7 Optimization Techniques? - ?1201.8 Discrete Mathematics and Combinatorics, Includes Graph Theory, Set Theory
Numerical data indexing: Percentage 0.00E00%, Percentage 2.40E+01%, Percentage 4.00E+00%, Percentage 8.00E+00%, Percentage 9.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.031
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
7. Near-infrared Fluorescent Aptamer Sensor for ATP Based on CuInS2 @ ZnS Quantum Dots
Accession number: 20260119851304
Title of translation: 基于CuInS2@ZnS量子点的ATP近红外荧光适配体传感器研究
Authors: Wang, Qirui (1, 2); Yan, Yuting (2); Mao, Hanping (2)
Author affiliation: (1) School of Mechanical Engineering, Changzhou Institute of Technology, Changzhou; 213032, China; (2) Key Laboratory of Modern Agriculture Equipment and Technology, Ministry of Education, Jiangsu University, Zhenjiang; 212013, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 397-403
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Detecting the level of adenosine triphosphate (ATP) in plants is of significant importance for evaluating plant growth and metabolism, monitoring plants’ responses to environmental stresses, conducting research on plant pathology and physiological processes, as well as guiding agricultural production practices. A near-infrared fluorescent sensor for the sensitive detection of ATP was developed based on CuInS2, @ ZnS quantum dots ( QDs). The CuInS2, @ ZnS QDs were prepared by using the hot decomposition method. Negatively charged MPA-modified CuInS2 @ ZnS QDs were able to interact with positively charged carboxymethyl chitosan, resulting in the formation of carboxymethyl chitosan-coated CHIT/CuInS2, @ ZnS nanocomposites. The aptamer of ATP, possessing a strong negative charge, induced aggregation of the positively charged nanocomposites through electrostatic and hydrogen bonding interactions, leading to fluorescence quenching. The sensor exhibited a linear relationship between the fluorescence intensity (I/I0) of the CHIT/CuInS2 @ ZnS nanocomposites and the logarithm of ATP concentration within the range of 5 pmol/L to 10 nmol/L. The detection limit of the sensor was determined to be 1. 67 pmol/L. The research successfully established a CuInS2@ ZnS quantum dot-based near-infrared fluorescent sensor for sensitively detecting ATP. This sensor has important theoretical significance and practical value for the growth and development of plants and the judgment of their stress responses to the external environment. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 28
Main heading: Semiconductor quantum dots
Controlled terms: Adenosinetriphosphate? - ?Agriculture? - ?Carbon Quantum Dots? - ?Chitosan? - ?Copper compounds? - ?Fluorescence quenching? - ?Graphene quantum dots? - ?II-VI semiconductors? - ?Indium compounds? - ?Infrared devices ? - ?Nanocomposites? - ?Nanocrystals? - ?Phosphates? - ?Physiological models? - ?Physiology? - ?Plant life extension? - ?Zinc sulfide? - ?ZnS nanoparticles
Uncontrolled terms: Adenosine triphosphate? - ?Adenosine triphosphate detection? - ?Aptamers? - ?CuInS 2? - ?Fluorescence sensors? - ?Infrared fluorescence sensor? - ?Infrared fluorescences? - ?Near-infrared fluorescent? - ?Quantum dot? - ?ZnS quantum dots
Classification code: 101.1 Biomedical Engineering? - ?103 Biology? - ?201.7.1 Heat Treatment Processes? - ?202.4.1 Copper? - ?712.1.2 Compound Semiconducting Materials? - ?714.2 Semiconductor Devices and Integrated Circuits? - ?741.3 Optical Devices and Systems? - ?761 Nanotechnology? - ?801.1 Biochemistry? - ?804.1 Organic Compounds? - ?804.2 Inorganic Compounds? - ?821 Agricultural Equipment and Methods; Vegetation and Pest Control? - ?912 Industrial Engineering and Management? - ?1301.4.1 Crystalline Solids and Crystallography
Numerical data indexing: Amount of substance 1.00E-08mol, Amount of substance 5.00E-12mol, Amount of substance 6.70E-11mol
DOI: 10.6041/j.issn.1000-1298.2026.01.038
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
8. Distributed Access Method for Multimodal Crop Phenotypic Data
Accession number: 20260119851352
Title of translation: 多模态作物表型数据分布式存取方法研究
Authors: Hao, Zichao (1, 2); Zhao, Xiangyu (2); Pan, Shouhui (2, 3); Liu, Dongming (3); Wang, Kaiyi (2)
Author affiliation: (1) College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang; 110866, China; (2) Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing; 100097, China; (3) Beijing PAIDE Science and Technology Development Co., Ltd., Beijing; 100097, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 51-61
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: The rapid development of high-throughput crop phenotyping acquisition equipment has provided modern data collection means for breeding and cultivation research, while spawning massive multi-modal and unstructured phenotypic data. Traditional structured data storage models can no longer meet the efficient access requirements of such data. A hybrid access framework was proposed based on distributed technology, which used HBase and HDFS to build a structured and unstructured fusion storage engine, integrated client-side cache and Redis cache to design an efficient retrieval mechanism, and optimized core issues; aiming at the inherent defects of native HDFS in storing phenotypic data, a modal aggregation-based MCH storage framework was designed. By classifying and merging phenotypic data according to modalities and constructing local indexes by using double-layer hashing technology, it effectively reduced NameNode memory pressure while improving access efficiency and storage space utilization of single-modal data. For high-concurrency data reading scenarios, a double-layer cache mechanism based on data popularity was constructed. It optimized hot data reading efficiency through metadata hierarchical caching and innovatively proposed a data popularity evaluation model combining access frequency and time characteristics, which effectively improved cache hit rate. Experimental results showed that when the data scale was 1. 0 × 103, the proposed distributed access method reduced the NameNode memory occupancy rate by 31.2% compared with the optimal native solution ( SequenceFile), and the retrieval time by 25. 4% compared with the optimal native solution ( MapFile), providing technical support for the storage and retrieval of massive multi-modal phenotypic data. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 26
Main heading: Crops
Controlled terms: Cache memory? - ?Composite beams and girders? - ?Cultivation? - ?Data accuracy? - ?Data acquisition? - ?Data reduction? - ?Efficiency? - ?Merging? - ?Modal analysis? - ?Search engines
Uncontrolled terms: Access methods? - ?Cache mechanism? - ?Distributed access? - ?Double layers? - ?File merging? - ?Multi-modal? - ?Multimodal crop phenotypic data? - ?Phenotypic data? - ?Two-level cache mechanism? - ?Two-level caches
Classification code: 217.2 Concrete? - ?408.1 Structural Members and Shapes? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?913.1 Production Engineering? - ?1103.1 Data Storage, Equipment and Techniques? - ?1106 Computer Software, Data Handling and Applications? - ?1106.2 Data Handling and Data Processing? - ?1201.5 Computational Mathematics
Numerical data indexing: Percentage 3.12E+01%, Percentage 4.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.005
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
9. Design and Experiment of Sub-micron Macro-micro Drive System Based on Positioning Error Compensation
Accession number: 20260119851316
Title of translation: 基于定位误差补偿的亚微米级宏微驱动系统设计与试验
Authors: Yang, Manzhi (1); Liu, Jiahao (1); Zhang, Chuanwei (1, 2); Gui, Haochen (1); Li, Linyue (1); Feng, Bin (1)
Author affiliation: (1) School of Mechanical Engineering, Xi’an University of Science and Technology, Xi’an; 710054, China; (2) Shaanxi College of Communications Technology, Xi’an; 710018, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 404-412
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In order to solve the problem of high-precision positioning of traditional mechanical systems in a wide range of motion, a precision macro-micro drive system was designed, which compensated for the positioning error of the macro-drive system through the micro-drive system to realize sub-micron precision positioning. Based on the principle of flexible hinge lever and the principle of balanced additional force, a micro-amplification mechanism was designed, which can precisely amplify the input displacement according to the design amplification ratio of 1.5 without additional displacement. In the macro-micro drive system, the servo motor and ball screw was combined as the macro-drive system, and the piezoelectric ceramic actuator was used to drive the micro-amplification mechanism as the micro-drive system, which was used to compensate for the positioning error of the macro-drive system to realize the large-stroke and high-precision motion. On the basis of completing the working principle design of macro- micro drive system, the positioning error of the system was analyzed and the error compensation scheme was put forward, and the macro-micro drive system positioning error compensation experiment was completed. The experimental results showed that the average positioning error of the macro-micro drive system was reduced from 14. 49 μm to 0. 34 μm after the positioning error compensation within the range of 2 mm stroke, and the average positioning error was reduced by 97.65%, which verified the validity and accuracy of the design of the macro-micro drive system and the error compensation scheme. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 26
Main heading: Ball screws
Controlled terms: Amplification? - ?Crystallography? - ?Error compensation? - ?Hinges? - ?Machine tool drives? - ?MEMS
Uncontrolled terms: Drive mechanism? - ?Drive systems? - ?Flexible hinges? - ?Macro micro? - ?Macro-micro drive system? - ?Micro-drive mechanism? - ?Microdrives? - ?Positioning error? - ?Positioning error compensation
Classification code: 601.2 Machine Components? - ?602.1 Mechanical Drives? - ?704.1 Electric Components? - ?713.1 Amplifiers? - ?731.1.1 Error Handling? - ?732.1 Control Equipment? - ?1106.3 Digital Signal Processing? - ?1301.4.1 Crystalline Solids and Crystallography
Numerical data indexing: Percentage 9.765E+01%, Size 2.00E-03m, Size 3.40E-05m, Size 4.90E-05m to 0.00E00m
DOI: 10.6041/j.issn.1000-1298.2026.01.039
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
10. Design and Experiment of Selective Picking Mechanism for Premium Tea with Lifting-picking
Accession number: 20260119857468
Title of translation: 提采式名优茶选择性采摘机构设计与试验
Authors: Chen, Lin (1); Song, Yan (1, 2); Zhang, Hang (1); Ning, Jingming (3); Wang, Rongyan (1, 2)
Author affiliation: (1) School of Engineering, Anhui Agricultural University, Hefei; 230036, China; (2) Anhui Provincial Engineering Research Center of Intelligent Agricultural Machinery, Hefei; 230036, China; (3) State Key Laboratory of Tea Plant Germplasm Innovation and Resource Utilization, Hefei; 230036, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 227-238
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: ; Currently premium teas are primarily harvested manually, as mechanical picking faces challenges such as the reddening of tea stem cut surfaces, which affects quality, and the large size of end effectors, impacting precision in picking. An end effector that simulated the action of human fingers in gripping and lifting tea stems was designed. The design of the picking mechanism and collection mechanism components was constrained by the geometric parameters and biomechanical properties of tea leaves, which were measured. Kinematic simulations using Matlab and Solidworks software were conducted to verify the dimensional parameters of the mechanism components. The key factors influencing the picking success rate—gripper thickness, picking height, and gripper opening angle—were identified, and their parameter ranges were determined. The Box — Behnken response surface analysis method was used to establish a quadratic regression model, with the picking success rate as the response value, to explore the interactive effects of these factors on picking success. The significance of each factor’s impact on the picking success rate was ranked as follows: gripper opening angle, gripper thickness, and picking height. By optimizing these factors with the picking success rate as the objective, the optimization results were obtained as follows; gripper thickness was 6 m m, gripper opening angle was 5 9 °, and picking height was 3 mm. Field experimental tests using the optimized parameters indicated a picking success rate of 9 1 . 6 7 %, with the error between the experimental and predicted values being less than 5%, thereby confirming the reliability of the optimization results, indicating that the designed picking end-effector can meet the requirements for efficient tea picking. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 23
Main heading: Grippers
Controlled terms: Biomechanics? - ?Kinematics? - ?Machine design? - ?MATLAB? - ?Optimization? - ?Regression analysis? - ?Tea
Uncontrolled terms: Biomechanical properties? - ?Block mechanism? - ?Compound crank block mechanism? - ?Human fingers? - ?Mechanical? - ?Opening angle? - ?Optimisations? - ?Picking success rate? - ?Premium tea? - ?Tea-leaves
Classification code: 101.4 Biomechanics, Bionics and Biomimetics? - ?601 Mechanical Design? - ?731.5 Robotics? - ?822.3 Food Products? - ?904 Design? - ?1106.5 Computer Applications? - ?1201.5 Computational Mathematics? - ?1201.7 Optimization Techniques? - ?1202.2 Mathematical Statistics? - ?1301.1.1 Mechanics
Numerical data indexing: Percentage 5.00E+00%, Percentage 7.00E+00%, Size 3.00E-03m, Size 6.00E+00m
DOI: 10.6041/j.issn.1000-1298.2026.01.021
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
11. Research of Energy-saving Hydraulic Steering System Based on Load-sensitive Self-propelled Sprayer
Accession number: 20260119857618
Title of translation: 基于负载敏感的自走式喷雾机节能型液压转向系统研究
Authors: Liu, Xinyue (1); Wen, Haojun (2); Luo, Changhai (3); Jing, Wuhui (1); Liu, Xuzhen (1); Qin, Wuchang (4)
Author affiliation: (1) College of Mechanical and Electrical Engineering, Shihezi University, Shihezi; 832000, China; (2) Key Laboratory of Northwest Agricultural Equipment, Ministry of Agriculture and Rural Affairs, Shihezi; 832000, China; (3) Intelligent Equipment Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing; 100093, China; (4) Nongxin Technology (Beijing) Co., Ltd., Beijing; 100097, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 215-226
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming to address the issues of high energy consumption and low efficiency in the hydraulic steering systems of traditional self-propelled sprayers, taking the 3WPZ — 1800G self-propelled sprayer as the research object, the energy losses in its hydraulic steering system were analyzed, including throttling and overflow losses. Based on this analysis, an energy-saving hydraulic steering system was designed and implemented, which employed a load-sensitive variable pump as the core component combined with an electro-hydraulic proportional valve. This system dynamically matched the output pressure and flow of the steering hydraulic pump with the load demand of the steering cylinder. To verify the effectiveness of the proposed system, simulation models of the original and energy-saving systems were constructed by using AMESim and Matlab/Simulink software, respectively. A fuzzy PID controller was designed for steering synchronization control, and the energy consumption of both systems under different working conditions was compared through simulation. The results demonstrated that the energy-saving system reduced energy output by approximately 90. 1%, 71. 3%, and 66. 7% compared with the original system. Additionally, real vehicle tests were conducted, the experimental results showed that the energy-saving system reduced energy output by about 90. 7%, 60. 7%, and 68. 1% compared with the original system, which aligned well with the simulation results. These findings confirmed the excellent energy-saving performance of the proposed load-sensitive hydraulic steering system. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 26
Main heading: Three term control systems
Controlled terms: Automobile steering equipment? - ?Energy dissipation? - ?Energy efficiency? - ?Energy utilization? - ?Hydraulic machinery? - ?MATLAB? - ?Proportional control systems? - ?Steering
Uncontrolled terms: Energy? - ?Energy savings? - ?Energy output? - ?Energy saving systems? - ?Energy-savings? - ?Hydraulic steering system? - ?Load-sensitive? - ?Reduced energy? - ?Self-propelled sprayer? - ?Steering systems
Classification code: 662.3 Automobile Components and Materials? - ?731.1 Control Systems? - ?1009 Energy Management? - ?1009.1 Energy Conservation? - ?1009.2 Energy Consumption? - ?1106.5 Computer Applications? - ?1201.5 Computational Mathematics? - ?1401.2 Hydraulic Equipment and Machinery
Numerical data indexing: Percentage 1.00E00%, Percentage 3.00E+00%, Percentage 7.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.020
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
12. Topological Design and Performances Analysis of Kinematically Decoupled 3-DOF Parallel Mechanism with Alternately Used Moving Platforms
Accession number: 20260119851298
Title of translation: 可轮换用动平台的运动解耦三自由度并联机构拓扑设计与性能分析
Authors: Shen, Huiping (1); Zhu, Xiao (1); Li, Ju (1); Meng, Qingmei (1); Li, Tao (1); Ye, Pengda (1)
Author affiliation: (1) Research Center for Advanced Mechanism Theory, Changzhou University, Changzhou; 213164, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 413-426
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: A class of three-degree-of-freedom parallel mechanisms was firstly proposed with alternately used moving platforms, the innovation of which lay in the adoption of alternately used moving platforms structure. This type of mechanism can alternately use two different moving platforms during different stages of the working process to generate two distinct modes of output motion-two translations and one rotation (2T1R) and three translations (3T)-thereby achieving different process operations. It can be regarded as a novel dual-mode output motion mechanism. Furthermore, the topological, kinematic, and dynamic performance of this three-degree-of-freedom parallel mechanism under the two different modes was analyzed. This included topological analysis based on position and orientation characteristics ( POC ), degree of freedom (DOF), and coupling degree (k); the derivation of symbolic forward and inverse position solutions based on its topological characteristics; workspace analysis based on forward position solutions; singularity analysis based on inverse position solutions; dynamic modeling of the mechanism using the virtual work principle and the ordered single-open-chain method, along with the solution of its driving force curves; and the optimization design of the mechanism’s dimensional parameters with the reachable workspace as the optimization objective. Finally, the application of this mechanism as an actuator in laser cutting processes was discussed, and the conceptual design for two process application scenarios-material handling in the 2T1R mode and cutting in the 3T mode-was elaborated. The research result can provide a theoretical basis for the design, analysis, and potential applications of parallel mechanisms with alternately used moving platforms, while also expanding the concept, design methods, and application scope of multi-mode mechanisms. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 24
Main heading: Kinematics
Controlled terms: Conceptual design? - ?Curve fitting? - ?Degrees of freedom (mechanics)? - ?Dynamic models? - ?Inverse problems? - ?Machine design? - ?Materials handling? - ?Rotation? - ?Structural design? - ?Topology
Uncontrolled terms: Alternately used moving platform? - ?Design Analysis? - ?Kinematic Analysis? - ?Moving platform? - ?Optimization design? - ?Output motion? - ?Parallel mechanisms? - ?Three degree of freedoms? - ?Topological design? - ?Workspace
Classification code: 408 Structural Design? - ?601 Mechanical Design? - ?691.1 Materials Handling Equipment? - ?691.2 Materials Handling Methods? - ?904 Design? - ?1201 Mathematics? - ?1201.2 Calculus and Analysis? - ?1201.9 Numerical Methods? - ?1201.14 Geometry and Topology? - ?1301.1.1 Mechanics? - ?1301.7 Statistical and Nonlinear Physics
Numerical data indexing: Magnetic flux density 3.00E+00T
DOI: 10.6041/j.issn.1000-1298.2026.01.040
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
13. Peanut Phenotype Estimation Model Based on Multi-source Data from Unmanned Aerial Vehicles
Accession number: 20260119857449
Title of translation: 基于无人机多源数据的花生表型估算模型
Authors: He, Ning (1, 2); Wang, Jian (3); Lu, Xianju (1, 2); Chen, Bo (1, 2); Bai, Bo (4, 5); Fan, Jiangchuan (1, 2)
Author affiliation: (1) Information Technology Research Center, Beijing Academy oj Agriculture and Forestry Sciences, Beijing; 100097, China; (2) Beijing Key Laboratory of Digital Plant, Beijing; 100097, China; (3) Beijing Digital Agriculture Rural Promotion Center, Beijing; 101117, China; (4) Institute of Crop Germplasm Resources, Shandong Academy of Agricultural Sciences, Ji’nan; 250100, China; (5) Shandong Provincial Key Laboratory of Crop Genetic Improvement and Ecological Physiology, Ji’nan; 250100, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 114-124
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Peanut (Arachis hypogaea L.), a critical oilseed crop, plays a crucial role in ensuring food and oil production security. Accurate, nondestructive, and real-time phenotypic monitoring is essential for optimizing peanut production management. Multispectral data acquired by an unmanned aerial vehicle (UAV) platform during key growth stages were leveraged to extract canopy multispectral (MS), structural (CHM), and textural (TEX) parameters. Four machine learning algorithms, partial least squares regression (PLSR), support vector machine (SVM), artificial neural network (ANN), and random forest regression (R F R), were employed to construct estimation models for plant height, SPAD values, and aboveground biomass. Results demonstrated strong correlations between peanut aboveground biomass/plant height and the near-infrared band (Pearson correlation coefficients were 0. 77 and 0. 69, respectively). The random forest model, integrating textural, structural, and spectral features, achieved optimal biomass estimation accuracy (R = 0. 96) . For plant height inversion, the PLSR model combining textural and spectral features performed best (R = 0 . 9 4) . SPAD estimation using PLSR with fused textural and structural features yielded moderate accuracy (R = 0 . 3 9, RMSE = 3 . 0 6, nRMSE = 0. 0 6 2, RPD = 1. 3 0) . The research identified feature-specific requirements for machine learning-based estimation of distinct peanut phenotypic traits and established a UAV multi-source data fusion framework capable of accurate, nondestructive, and efficient assessment of plant height and biomass. These findings can provide a robust technical approach for growth monitoring and precision management in peanut cultivation systems. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 40
Main heading: Infrared devices
Controlled terms: Agricultural machinery? - ?Antennas? - ?Biomass? - ?Correlation methods? - ?Learning systems? - ?Least squares approximations? - ?Neural networks? - ?Nondestructive examination? - ?Random forests? - ?Regression analysis ? - ?Support vector machines? - ?Unmanned aerial vehicles (UAV)
Uncontrolled terms: Aerial vehicle? - ?Estimation models? - ?Machine-learning? - ?Multi-source data fusion? - ?Multi-Sources? - ?Peanut? - ?Phenotypic trait estimation model? - ?Phenotypic traits? - ?Remote-sensing? - ?Source data ? - ?Unmanned aerial vehicle remote sensing
Classification code: 101.1 Biomedical Engineering? - ?215.2.1 Non-mechanical Properties Testing Equipment and Methods? - ?652.1 Aircraft? - ?716.5.1 Antennas? - ?741.3 Optical Devices and Systems? - ?821.2 Agricultural Machinery and Equipment? - ?821.5 Agricultural Products? - ?1008 Renewable Energy? - ?1008.7 Bioenergy and Biomass Energy Conversion? - ?1101 Artificial Intelligence? - ?1101.2 Machine Learning? - ?1201.7 Optimization Techniques? - ?1202.2 Mathematical Statistics
DOI: 10.6041/j.issn.1000-1298.2026.01.011
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
14. Review of Integrated Technology and Equipment System for Crop Phenomics Big Data Factory
Accession number: 20260119857465
Title of translation: 农作物表型组大数据工厂成套技术装备研究综述
Authors: Guo, Xinyu (3); Wu, Sheng (1, 2); Gou, Wenbo (1, 3); Wen, Weiliang (3); Li, Yinglun (1, 3); Zhang, Ying (1, 2); Fan, Jiangchuan (1, 2); Wang, Chuanyu (1, 3); Gu, Shenghao (1, 2); Lu, Xianju (2, 3); Liu, Haishen (2, 3); Zhao, Chunjiang (1, 2)
Author affiliation: (1) Information Technology Research Center, Beijing Academy oj Agriculture and Forestry Sciences, Beijing; 100097, China; (2) National Engineering Research Center for Information Technology in Agriculture, Beijing; 100097, China; (3) Beijing Key Laboratory of Digital Plant, Beijing; 100097, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 1-18 and 61
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: The rapid development of crop phenomics d e m a n d s high-efficiency, intelligent, and cost-effective technologies and systems for large-scale data acquisition and analysis, as well as for germplasm phenotyping. To address these challenges, multidisciplinary innovations was integrated to overcome key technical bottlenecks in high-throughput data acquisition and intelligent traits extraction for crop phenomics. A suite of proprietary technologies was developed, including lightweight and agile multisensor arrays, universal imaging box, and both fixed and mobile high-throughput phenotyping platforms adaptable to diverse environments, together with corresponding algorithms and software systems. These developments culminate in the Crop Phenomics Big Data Factory (CPBDF). CPBDF is a comprehensive technology and equipment framework that conceptualizes farmlands, greenhouses, and growth chambers as “factories”, where phenotyping platforms function as “production lines”, and the output is high-quality phenomics big data. The system integrated field-based and facility-based autonomous phenotyping platforms, organ- and microscopy-level phenotyping systems, automated cultivation control devices, crop modeling systems, a digital-twin intelligent management platform, and a big data computing center. It enabled automated, multi-source, and multi-scale data acquisition with high throughput, precision, and integration, supporting three-dimensional reconstruction and quantitative phenotypic analysis across crop populations, individuals, organs, and microstructures. The proposed framework established a paradigm for the production, processing, and application of crop phenomics big data. It provided foundational infrastructure for digital breeding and smart cultivation, and served as a key enabler for AI for Science-driven research platforms and factory-style germplasm phenotyping. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 53
Main heading: Fixed platforms
Controlled terms: Big data? - ?Computer software? - ?Cost effectiveness? - ?Crops? - ?Cultivation? - ?Data acquisition? - ?Digital devices? - ?Digital twin? - ?Extraction? - ?Information management ? - ?Throughput? - ?Tools
Uncontrolled terms: Big data factory? - ?Crop p h e n o m i c s? - ?Digital twin management platform? - ?Germplasms? - ?High-throughput phenotyping? - ?High-throughput phenotyping platform? - ?Management platforms? - ?Phenotyping? - ?Pipelined trait extraction software? - ?Technology and equipments
Classification code: 511.2 Oil Field Equipment? - ?802.3 Chemical Operations? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?903 Information Science? - ?911.2 Industrial Economics? - ?913.2 Production Control? - ?942.2 Miscellaneous Devices, Equipment and Components? - ?1106.2 Data Handling and Data Processing? - ?1106.5 Computer Applications? - ?1106.9 Computer Software
DOI: 10.6041/j.issn.1000-1298.2026.01.001
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
15. Design and Experiment of a Low-resistance Composite Bionic Digging Shovel for Panax notoginseng
Accession number: 20260119857822
Title of translation: 低阻力三七挖掘复合仿生铲设计与试验
Authors: Wang, Chenglin (1); Zhao, Zedong (1); Li, Pengfei (1); Pan, Weiyu (1); Zhang, Zhaoguo (1); Liu, Weijian (1)
Author affiliation: (1) Faculty of Modern Agricultural Engineering, Kunming University of Science and Technology, Kunming; 650500, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 239-251
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Panax notoginseng is a valuable traditional Chinese medicine in Yunnan. The mechanized harvesting of Panax notoginseng has severe digging resistance. Reducing digging resistance has a significant impact on improving the efficiency of mechanized harvesting of Panax notoginseng. To address this issue, a composite bionic shovel was proposed. The factors affecting the digging resistance of composite bionic shovel were determined through theoretical analysis as follows; the length, width and height of the bionic knife, the width, length and bevel angle of the shovel blade. By combining the above factors and the physical parameters obtained from the calibration test, an orthogonal test was designed by using the Hertz — Mindlin (no-slip) model. The combination of composite bionic shovel structural parameters with the smallest digging resistance was obtained. Simulation tests of tracking the particle displacement flow direction were designed to evaluate the resistance reduction capability and excavation effect of the proposed composite bionic shovel. Based on verifying the simulation test through field tests, the best combination of working parameters of the composite bionic shovel was determined by using orthogonal test methods in the field test under the shed environment of the team as follows; the entry angle was 1 5 °, the forward speed was 0. 3 m / s, and the center distance of the shovel blade was 80 mm. The composite bionic shovel exhibited an average digging resistance of 1 094. 51 N. This value was reduced by 25. 3 0 %, 19. 5 5 %, and 10. 7 6 % compared with the following shovels that were effective in Panax notoginseng excavation; the flat shovel, second-order shovel, and combination shovel, respectively. The above results showed that the proposed composite bionic shovel can meet the requirements of reducing the digging resistance and improving the mechanized harvesting efficiency of Panax notoginseng. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 29
Main heading: Efficiency
Controlled terms: Biomimetics? - ?Bionics? - ?Excavation? - ?Harvesting? - ?Medicine? - ?Shovels
Uncontrolled terms: Composite bionic shovel? - ?Digging resistance? - ?Digging shovels? - ?Discrete-element simulations? - ?Field test? - ?Mechanized harvesting? - ?Orthogonal test? - ?Panax notoginseng? - ?Panax notoginseng digging shovel? - ?Simulation tests
Classification code: 101.1 Biomedical Engineering? - ?101.7 Biotechnology? - ?102.1 Medicine? - ?103 Biology? - ?405.2 Construction Methods? - ?605.2 Small Tools, Unpowered? - ?821.4 Agricultural Methods? - ?913.1 Production Engineering
Numerical data indexing: Force 5.10E+01N, Percentage 0.00E00%, Percentage 5.00E+00%, Percentage 6.00E+00%, Size 8.00E-02m, Velocity 3.00E+00m/s
DOI: 10.6041/j.issn.1000-1298.2026.01.022
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
16. Comparison of Crop Three-dimensional Phenotyping Methods and Performance Based on UGV Phenotyping Platform
Accession number: 20260119851309
Title of translation: 基于UGV表型平台的作物三维表型获取方法与性能对比研究
Authors: Yang, Si (1, 2); Guo, Xinyu (1, 2); Cai, Shuangze (1, 2); Gou, Wenbo (1, 2); Lu, Xianju (1, 2); Qiu, Guangjie (1, 2)
Author affiliation: (1) Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing; 100097, China; (2) National Engineering Research Center for Information Technology in Agriculture, Beijing; 100097, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 41-50
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: High-throughput 3D crop phenotyping is one of the core methodologies in modern crop phenomics research, providing crucial data support for holistic morphological structure analysis, precise evaluation of plant architectural traits, and genotype-phenotype association analysis. Aiming to address the challenges of low efficiency and limited data accuracy inherent in traditional manual measurements, a high-throughput 3D crop phenotyping data acquisition platform was developed based on an unmanned ground vehicle (UGV). The performance of four mainstream sensors (FLIR visible light camera, Kinect DK, Velodyne VLP - 16, and Livox Avia) and their corresponding 3D reconstruction algorithms for crop phenotyping were systematically investigated. Specifically, it was compared the 3D reconstruction from visible light images based on structure-from-motion ( SfM ) and multi-view stereo ( MVS ), 3D reconstruction from RGB-depth images based on iterative closest point (ICP), point cloud reconstruction from solid-state LiDAR leveraging LiDAR-inertial odometry ( LIO ) and point cloud stitching from mechanical rotating LiDAR by using uniform velocity frame superposition. Experiments were conducted on potted lettuce plants in a greenhouse, where point cloud data acquired by the four methods underwent standardized processing. An automated processing pipeline was developed, enabling precise extraction and analysis of key phenotypic parameters, such as plant height and maximum canopy width. This research thoroughly explored and analyzed the characteristics, advantages, and disadvantages of each method. Their applicability was comprehensively evaluated based on point cloud quality, reconstruction efficiency, phenotypic trait accuracy and system cost. The findings can not only provide experimental basis for sensor selection and algorithm development of 3D phenotyping UGVs but also can offer valuable references for breeders and agronomists in selecting efficient and accurate phenotyping data acquisition approaches. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 26
Main heading: 3D reconstruction
Controlled terms: Automation? - ?Crops? - ?Data accuracy? - ?Data acquisition? - ?Data handling? - ?Image reconstruction? - ?Iterative methods? - ?Optical radar? - ?Plants (botany)? - ?Three dimensional computer graphics ? - ?Throughput? - ?Vision
Uncontrolled terms: 3D reconstruction? - ?Crop phenotyping? - ?Data support? - ?High-throughput? - ?Image-based? - ?Morphological structures? - ?Performance based? - ?Phenotyping? - ?Point-clouds? - ?Structure analysis
Classification code: 101.5 Ergonomics and Human Factors Engineering? - ?103 Biology? - ?716.2 Radar Systems and Equipment? - ?731 Automatic Control Principles and Applications? - ?741.2 Vision? - ?741.3 Optical Devices and Systems? - ?821.5 Agricultural Products? - ?902.1 Engineering Graphics? - ?913.1 Production Engineering? - ?913.2 Production Control? - ?1106.2 Data Handling and Data Processing? - ?1106.3.1 Image Processing? - ?1106.8 Computer Vision? - ?1201.9 Numerical Methods
DOI: 10.6041/j.issn.1000-1298.2026.01.004
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
17. Design and Experiment on Tilting Angle Kneading Type Residual Film Baling Device for Corn Large Stubble Crop
Accession number: 20260119858706
Title of translation: 玉米大根茬作物倾角揉搓型残膜打包装置设计与试验
Authors: Jin, Wei (2); Liu, Jingyi (1); Jiang, Tao (1); He, Hu (1); Zhang, Chaoshu (2)
Author affiliation: (1) College of Mechanical and Electrical Engineering, Xinjiang Agricultural University, Urumqi; 830052, China; (2) Aksu City Tiandi Agricultural Machinery Manufacturing Co. , Ltd., Aksu; 843000, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 252-261 and 310
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming at the problem that corn stubble is large and easily entangled with residual film, which makes it difficult for film rolls to be baled and easy to be scattered, a tilting angle kneading residual film baling device suitable for corn stubble crops was designed. Through the design and optimization of the baling support frame and baling space, the friction force on the film rolls in the baling process was improved to make the film rolls easier to be baled. The force analysis model of the baling device was established. By analyzing and optimizing the experimental parameters through field tests and Design-Expert 13, it was determined that the primary and secondary orders affecting the bale formation rate were baling belt friction coefficient, baling space angle and forward speed, and the primary and secondary orders affecting the film roll density were baling space angle, forward speed and baling belt friction coefficient. The optimized theoretical best parameter combinations were forward speed of 6.758 k m / h, baling belt friction coefficient of 1. 3 7 8, baling space angle of 5 5 °, under which can be concluded that the bale formation rate reached 100%, the film roll density was 131. 835 kg/m . Under the condition of advancing speed of 6. 8 k m / h, the pattern of baling tape was a word pattern (/t = 1. 38), and the baling space angle was 55°, the actual bale formation rate was 100%, the density of film rolls was 127. 31 kg/m, and the film roll density error was 3. 5 5 %, which confirmed that the model was in line with the actual situation, meeting the operational requirements, and providing practical basis for the technological innovation of residual film recycling. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 24
Main heading: Friction
Controlled terms: Agricultural machinery? - ?Belts
Uncontrolled terms: Baling device? - ?Corn? - ?EDEM? - ?Field test? - ?Formation rates? - ?Forward speed? - ?Friction coefficients? - ?Optimization analysis? - ?Residual film recovery machine? - ?Residual films
Classification code: 601.2 Machine Components? - ?602.2 Mechanical Transmissions? - ?606 Lubrication and Tribology? - ?821.2 Agricultural Machinery and Equipment? - ?1301.1.1 Mechanics
Numerical data indexing: Linear density 3.10E+01kg/m, Linear density 8.35E+02kg/m, Percentage 1.00E+02%, Percentage 5.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.023
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
18. Design and Testing of Hard Disk Tray Placement and Removal Machine for Rice Seedling Cultivation
Accession number: 20260119857723
Title of translation: 水稻育秧硬盘摆盘收盘机设计与试验
Authors: Yu, Chennan (1, 2); Fang, Ziyun (1); Zhang, Yujie (1); Zhu, Zhiyuan (1); Huan, Xiaolong (1, 2); Chen, Jianneng (1, 2)
Author affiliation: (1) School of Mechanical Engineering, Zhejiang Sci-Tech University, Hangzhou; 310018, China; (2) Zhejiang Key Laboratory of Intelligent Sensing and Robotics for Agriculture, Hangzhou; 310018, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 191-202
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In order to solve the problems of single function, large volume and poor effect of swing plate closing device for rice seedling raising tray in the field, a small integrated device of swing plate closing for rice seedling raising tray with both swing plate and closing function was designed. The device was composed of swing plate closing integrated mechanism, connecting rod plate splitting mechanism, conveyor belt and chain plate collecting mechanism, which could realize the switching of swing plate closing mode and complete swing plate and closing efficiently. The basic structure and working principle of the wobble plate closing mechanism and the connecting rod type plate mechanism were expounded, the working parameters of the key mechanism were determined, and the feasibility of the mechanism was verified by ADAMS. A prototype was designed and built for testing. The closing test showed that the closing success rate of the device was not less than 90% when the closing speed of the device was 4 ~ 6 s/tray. The orthogonal experiment of three factors and three levels was carried out with the height of the tray, the operation period and the number of initial trays as the experimental factors, and the success rate of the tray as the experimental index. The quadratic regression model was established, and the primary and secondary order of the influence significance was obtained; the height of the tray, the number of initial trays, and the operation period. The optimal parameter combination was the height of the tray was 5 cm, the operation period was 5 s/tray, and the number of initial trays was 8 trays/group. The success rate of the tray was 9 3 % under these parameters. The whole machine ran stably and met the design requirements, which can realize fast and effective tray swing and closing operations. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 22
Main heading: Connecting rods
Controlled terms: Belt conveyors? - ?Plates (structural components)? - ?Regression analysis
Uncontrolled terms: Conveyor belts? - ?Hard disc? - ?Integrated device? - ?Large volumes? - ?Operation period? - ?Partition mechanism? - ?Plate-turning closing device? - ?Rice seedling tray? - ?Rice seedlings? - ?Splittings
Classification code: 408.1 Structural Members and Shapes? - ?601.1 Mechanical Devices? - ?601.2 Machine Components? - ?692.1 Conveyors? - ?1202.2 Mathematical Statistics
Numerical data indexing: Percentage 3.00E+00%, Percentage 9.00E+01%, Size 5.00E-02m, Time 4.00E+00s to 6.00E+00s, Time 5.00E+00s
DOI: 10.6041/j.issn.1000-1298.2026.01.018
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
19. Prediction and Analysis of Unsteady Flow Field in Liquid-ring Pump Based on CNN LSTM
Accession number: 20260119857524
Title of translation: 基于CNN-LSTM方法的液环泵非稳态流场预测分析
Authors: Zhang, Renhui (1, 2); Tang, Yu (1); Guo, Guangqiang (1, 2); Chen, Xuebing (1, 2)
Author affiliation: (1) School of Energy and Power Engineering, Lanzhou University of Technology, Lanzhou; 730050, China; (2) Key Laboratory of Advanced Pumps, Valves and Fluid Control System, Ministry of Education, Lanzhou; 730050, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 273-279
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming to achieve rapid prediction of the unsteady gas-liquid two-phase flow field in liquid ring pumps, an unsteady periodic flow field prediction method was proposed based on deep learning. This method can realize high-precision and fast prediction of the flow field within a certain period in the future after the sample set. A flow field dataset was established using flow field snapshots at each time step obtained from unsteady CFD results of liquid ring pumps. The features of these flow field snapshots were extracted by convolutional neural network (CNN), and a time series neural network prediction model was constructed by combining long short-term memory neural network (LSTM) . The prediction results were compared with CFD numerical simulation results. The analysis showed that the CNN — LSTM model can realize high-accuracy prediction of unsteady flow fields in the future. The average relative errors of the prediction results for the phase field, pressure field, and temperature field were 1. 3 7 %, 1. 2 8 %, and 1. 7 8 %, respectively. When LSTM was used to predict the pressure pulsation of the shell and inlet, the average relative errors on the impeller rotation time of one week after the sample set were 1.61% , 0. 0 9 %, and 0. 2 0 %, respectively. The prediction performance of CNN — LSTM was better than that of the proper orthogonal decomposition (POD) method on the prediction set outside the sample space. Although the prediction accuracy of the extrapolated time series gradually decreased with the increase of time, it maintained good prediction accuracy throughout the entire time history and had a significant advantage in predicting internal flow field results. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 24
Main heading: Long short-term memory
Controlled terms: Computational fluid dynamics? - ?Convolution? - ?Convolutional neural networks? - ?Flow fields? - ?Forecasting? - ?Learning systems? - ?Principal component analysis? - ?Time series? - ?Unsteady flow
Uncontrolled terms: Average relative error? - ?Convolutional neural network? - ?Liquid ring pumps? - ?Liquid-ring p u m p? - ?Long short-term memory neural network? - ?Neural-networks? - ?Sample sets? - ?Short term memory? - ?Times series? - ?Unsteady flowfields
Classification code: 301.1 Fluid Flow? - ?301.1.4 Computational Fluid Dynamics? - ?716.1 Information Theory and Signal Processing? - ?1101.2 Machine Learning? - ?1101.2.1 Deep Learning? - ?1202 Statistical Methods? - ?1202.2 Mathematical Statistics
Numerical data indexing: Percentage 0.00E00%, Percentage 1.61E+00%, Percentage 7.00E+00%, Percentage 8.00E+00%, Percentage 9.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.025
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
20. Design and Experiment of Stabilized Platform for Vegetable Phenotype Acquisition Based on Double Feedforward - Improved Cascade PID in Greenhouse
Accession number: 20260119851365
Title of translation: 基于双前馈-改进串级PID的设施蔬菜表型信息采集稳衡云台设计与试验
Authors: Yu, Haiye (1); Zhang, Nan (1); Pan, Zhihao (1); Fu, Hanbing (1); Zhang, Chenxi (1); Jiang, Ranzhe (1); Zhang, Lei (1)
Author affiliation: (1) College of Biological and Agricultural Engineering, Jilin University, Changchun; 130025, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 30-40
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In greenhouse vegetable phenotyping, uneven terrain induces high-frequency vibrations in the 3?6 Hz range, leading to small-angle vibration and hysteresis in the acquisition device, which degraded the resolution of collected images. A stabilized platform was developed based on a composite control system incorporating gravity-compensated dual angular acceleration feedforward and an improved cascade PID controller. A single-arm stabilized platform with dimensions of 300 mm × 280 mm × 250 mm was constructed to accommodate a narrow line spacing of 30 cm and support the integration of multi-source sensors. The stabilized platform had a self-weight of 5 kg and can carry a payload of 15 kg. It was equipped with X - Y - Z axis sliding rails for center-of-gravity adjustment, limiting the center-of-gravity deviation to within ± 5 mm and maintaining gravitational torque variation below 0. 5 N · m. A gravity compensation feedforward model was established by linear fitting, achieving a determination coefficient R2 of 0. 991 2. An improved cascade PID structure was implemented, combining an inner velocity loop with an outer position loop. Key enhancements included integral separation activated when the error exceeded 1°, integral limiting, and a resetting mechanism triggered by error zero-crossing. These measures effectively suppressed integral saturation during fine adjustments, achieved a steady-state error of 0. 1°. In addition, angular acceleration feedforward from dual IMUs mounted on both the vehicle and the stabilized platform compensated for inertial disturbances caused by vehicle start-stop and turning accelerations of 2 ? 3 m/s2. The verification test results showed that the composite control strategy reduced the system step response time by 80% without overshoot. When the vehicle operated at 0. 5 m/s, the stabilized platform’s triaxial angular oscillation was constrained to ±0.5° in roll, ±0.3° in pitch, and ± 0. 2° in yaw. These outcomes confirmed that the system satisfied the requirements for high- accuracy phenotyping acquisition. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 31
Main heading: Three term control systems
Controlled terms: Cascade control systems? - ?Errors? - ?Greenhouses? - ?Proportional control systems? - ?Vegetables? - ?Vehicles? - ?Vibrations (mechanical)
Uncontrolled terms: Acceleration feedforward? - ?Angular acceleration? - ?Cascade PID? - ?Center of gravity? - ?Double feedforward? - ?Feed forward? - ?Greenhouse vegetables? - ?Phenotypic information? - ?Phenotyping? - ?Stabilized platform
Classification code: 731.1 Control Systems? - ?731.1.1 Error Handling? - ?821.5 Agricultural Products? - ?821.7 Farm Buildings and Other Structures? - ?1301.1.1 Mechanics
Numerical data indexing: Frequency 6.00E+00Hz, Mass 1.50E+01kg, Mass 5.00E+00kg, Percentage 8.00E+01%, Size 2.50E-01m, Size 2.80E-01m, Size 3.00E-01m, Size 5.00E-03m, Torque 5.00E+00N.m, Velocity 3.00E+00m/s, Velocity 5.00E+00m/s
DOI: 10.6041/j.issn.1000-1298.2026.01.003
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
21. Investigation of Scale-up Simulation for Corn Straw Ball Milling Pretreatment Utilizing Discrete Element Method
Accession number: 20260119851384
Title of translation: 基于离散元法的玉米秸秆球磨预处理放大仿真研究
Authors: Xiao, Weihua (1); Liu, Luoyang (1); Tan, Yufeng (1); Lin, Hao (1); Zhang, Hui (1); Jia, Xiwen (1)
Author affiliation: (1) College of Engineering, China Agricultural University, Beijing; 100083, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 378-385
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming to enhance the promotion of straw ball milling pretreatment technology and assess the feasibility of scaling up the ball milling pretreatment process, the energy consumption during straw ball milling pretreatment was predicted at a larger scale by using discrete element simulation, followed by verification of the pretreatment efficacy post-scaling. After increasing the cylinder size of the CJM - SY - B vibrating ball mill in laboratory conditions to 24 times its original volume, a three-dimensional geometric model was constructed. The EDEM software was employed to simulate impact energy dissipation within the ball mill by inputting physical property parameters for corn stalks both at initial stages and after milling, thereby estimating energy consumption for scaled-up operations. Concurrently, particle size distribution and sugar production concentration from corn straw subjected to ball milling were compared across two different scales, validating the effectiveness of straw ball milling treatment. Results indicated that predicted energy consumption was 1.48 kW · h/kg of straw while actual consumption measured at 1. 65 kW · h/kg with a relative prediction error of 10. 3%. The difference in particle size span between laboratory-scale and scaled-up corn stalks was merely 0. 8%, with total monosaccharide concentrations resulting from enzymatic hydrolysis recorded as 85.5 g/L and 88.5 g/L respectively; these findings suggested that enzymatic hydrolysis efficiency for corn straw remained largely unchanged despite scale enlargement in milling processes. This research substantiated the viability of utilizing discrete element methods for scaling up corn stalk processing and offered theoretical insights along with technical support for broader applications in stalk milling. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 27
Main heading: Ball milling
Controlled terms: Ball mills? - ?Computer software? - ?Discrete element methods? - ?Energy dissipation? - ?Energy utilization? - ?Enzymatic hydrolysis? - ?Finite difference method? - ?Milling (machining)? - ?Particle size? - ?Particle size analysis ? - ?Windmill
Uncontrolled terms: Corn stalk? - ?Corn straws? - ?Discrete elements method? - ?Energy-consumption? - ?Pre-treatments? - ?Pretreatment process? - ?Pretreatment technology? - ?Scale-up? - ?Scaled-up? - ?Scaling-up
Classification code: 604.2 Machining Operations? - ?801.1 Biochemistry? - ?802.1 Chemical Plants and Equipment? - ?802.2 Chemical Reactions? - ?802.3 Chemical Operations? - ?804.1 Organic Compounds? - ?805 Chemical Engineering? - ?941.5 Mechanical Variables Measurements? - ?1008.5 Wind Power and Wind Power Generation? - ?1009.1 Energy Conservation? - ?1009.2 Energy Consumption? - ?1106.9 Computer Software? - ?1201.5 Computational Mathematics? - ?1201.9 Numerical Methods? - ?1301.1.2 Physical Properties of Gases, Liquids and Solids
Numerical data indexing: Mass density 8.55E+01kg/m3, Mass density 8.85E+01kg/m3, Percentage 3.00E+00%, Percentage 8.00E+00%, Power 1.48E+03W, Power 6.50E+04W
DOI: 10.6041/j.issn.1000-1298.2026.01.036
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
22. Uniformity Assessment of Maize Seedlings Based on RGB Imaging and Entropy-weighted TOPSIS
Accession number: 20260119851376
Title of translation: 基于RGB图像分析与熵权TOPSIS的田间玉米苗期整齐度评价方法
Authors: Jiang, Tiantian (1); Li, Liang (1); Yu, Xun (1, 2); Zhu, Yanqin (1); Li, Liming (1); Yin, Dameng (1, 2); Jin, Xiuliang (1, 2)
Author affiliation: (1) Institute of Crop Sciences, Chinese Academy of Agricultural Sciences, Beijing; 100081, China; (2) National Nanfan Research Institute ( Sanya ), Chinese Academy of Agricultural Sciences, Sanya; 572024, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 83-91 and 113
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Maize is one of the most important staple crops. Early-stage management during the seedling period is crucial for its yield formation. Accurate and rapid monitoring of maize seedling growth is essential for early-stage interventions such as replanting and water-fertilizer management. Traditional seedling monitoring methods rely heavily on manual field surveys, which are often inefficient and subject to strong observer bias. Leveraging RGB imagery and computer vision techniques to perform large-scale, rapid, and accurate crop monitoring has become a key trend in smart agriculture. An automated method for evaluating field crop uniformity was proposed based on seedling counting and leaf age estimation results from RGB images. The method firstly performed image-based row detection and missing seedling detection to extract six indicators; seedling missing rate, plant spacing, row spacing, leaf age, missing plant rate, plant bounding box area, and plant coverage. The seedling missing rate and the coefficient of variation (CV) of the other five variables form the six key indicators for seedling uniformity assessment. The entropy weight method was employed to determine the weight of each indicator, and the TOPSIS multi-criteria decision-making model was used to calculate the overall uniformity score. Based on expert knowledge, the uniformity was then classified into three discrete levels. Validation results showed that the classification results of the proposed evaluation system were highly consistent with expert grading, achieving an overall classification accuracy (OA) of 0. 92. The method also achieved high accuracy ( OA was 0. 94 and 0. 96) in two independent datasets, demonstrating its adaptability and generalizability. The research result can provide a technical foundation for the standardized and automated evaluation of crop uniformity in the field. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 23
Main heading: Grading
Controlled terms: Agribusiness? - ?Automation? - ?Classification (of information)? - ?Computer vision? - ?Crops? - ?Decision making? - ?Entropy? - ?Grain (agricultural product)? - ?Plants (botany)? - ?Seed ? - ?Smart agriculture
Uncontrolled terms: Entropy weight method? - ?Field crop uniformity? - ?Field crops? - ?Leaf age? - ?Maize? - ?Maize seedlings? - ?Missing rate? - ?Multi-indicator assessment? - ?RGB images? - ?TOPSIS method
Classification code: 103 Biology? - ?302.1 Thermodynamics? - ?716.1 Information Theory and Signal Processing? - ?731 Automatic Control Principles and Applications? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?903.1 Information Sources and Analysis? - ?912.2 Management? - ?1106.8 Computer Vision
DOI: 10.6041/j.issn.1000-1298.2026.01.008
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
23. Real-time Measurement of Maize Ear Height Based on YOLO and Augmented Reality
Accession number: 20260119851379
Title of translation: 基于YOLO和增强现实的玉米穗位高实时测量方法
Authors: Zhang, Yaling (1, 2); Liu, Yadong (1, 3); Li, Liming (1, 2); Yu, Xun (1, 2); Nan, Fei (1, 2); Yin, Dameng (1, 4); Jin, Xiuliang (1, 4)
Author affiliation: (1) Institute of Crop Sciences, Chinese Academy of Agricultural Sciences, Beijing; 100081, China; (2) State Key Laboratory of Crop Gene Resources and Breeding, Beijing; 100081, China; (3) School of Remote Sensing and Information Engineering, Wuhan University, Wuhan; 430079, China; (4) National Nanfan Research Institute ( Sanya ), Chinese Academy of Agricultural Sciences, Sanya; 572024, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 62-71
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Efficient and accurate monitoring of maize ear height (EH) is critical for anti-lodging breeding. The traditional manual measurement approach is labor-intensive and time-consuming, while existing automated approaches often lack robustness under varying field conditions or involve high costs. To address these limitations, an iOS application (APP) was developed based on the you only look once (YOLO) model and augmented reality (AR) technology for real-time, accurate, efficient, and low-cost maize EH measurement. It comprised two modules; a maize ear detection model and a height measurement module. The ear detection model was trained and validated on a dataset comprising 1 000 field images collected from maize fields during the filling stage, under various lighting and occlusion conditions. Among different object detection models, the YOLO v5s model demonstrated the most robust performance with a precision of 0. 844, a recall of 0. 724, and an AP0. 5 of 0. 814. The trained detection model had been integrated into a maize EH measurement system, which utilized the AR technology for real-time measurement. It demonstrated excellent compatibility and performance on iOS devices, with response time below 0. 3 s. Field evaluation results indicated a high correlation between the EH measured by the app and manual measurements (R2 =0. 750 ? 0. 864, RMSE = 0. 10 ? 0. 13 m ). The app was optimized for solo operation. To finish measuring a plot with over 10 maize plants only took less than 2 minutes, which was over 6 times faster than that of the traditional measurement with the leveling rod. This app significantly improved the efficiency of maize EH measurements while maintaining accuracy, providing real-time and precise data support for field management and breeding programs. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 39
Main heading: Augmented reality
Controlled terms: Application programs? - ?Deep learning? - ?Grain (agricultural product)? - ?Information management? - ?Object detection? - ?Object recognition? - ?Time measurement
Uncontrolled terms: Augmented reality technology? - ?Deep learning? - ?Detection models? - ?Ear height measurement? - ?Height Measurement? - ?Maize ear detection? - ?Maize ears? - ?Manual measurements? - ?Real time measurements? - ?You only look once v5s
Classification code: 821.5 Agricultural Products? - ?903 Information Science? - ?942.1.7 Special Purpose Instruments? - ?1101.2.1 Deep Learning? - ?1106 Computer Software, Data Handling and Applications? - ?1106.3.1 Image Processing? - ?1106.8 Computer Vision? - ?1107.1 Virtual Reality Technology
Numerical data indexing: Size 1.30E+01m, Time 1.20E+02s, Time 3.00E+00s
DOI: 10.6041/j.issn.1000-1298.2026.01.006
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
24. Method for Agricultural Machinery Spare Parts Demand Forecasting Based on Time Series Efficient Convolutional Neural Networks
Accession number: 20260119857521
Title of translation: 基于时间序列高效卷积神经网络的农机备件需求预测方法
Authors: Zhang, Zhigang (1, 2); Zhang, Jiarui (1); Zhang, Wenyu (1, 2); He, Weisheng (1); Pan, Jiankun (1); Wu, Sijin (1)
Author affiliation: (1) Key Laboratory of Key Technology on Agricultural Machine and Equipment, Ministry of Education, South China Agricultural University, Guangzhou; 510642, China; (2) Guangdong Provincial Key Laboratory oj Agricultural Artificial Intelligence, Guangzhou; 510642, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 300-310
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Agricultural machinery spare parts are the foundation for the repair of agricultural machinery and are essential for timely maintenance of machinery failures and the normal operation of agricultural production. Therefore, accurate forecasting of the demand for agricultural machinery spare parts is crucial. However, the demand for agricultural machinery spare parts is characterized by non-stationarity, non-linearity, multiple zero values, and large fluctuations, making the prediction task challenging. A time series efficient convolution network (TECNet) was proposed based on convolutional neural networks for predicting the demand of agricultural machinery spare parts. The model firstly extracted the periodicity of the original one-dimensional sequence by using fast Fourier transform, then a two-dimensional time series convolution module for feature extraction was constructed based on the periodicity, and finally the two-dimensional features back was reshaped to one-dimensional features and the predicted values were obtained by linear transformation. The sales data of four different spare part types from an agricultural machinery spare part supplier were used to evaluate and validate the model, and the root mean square scaling error was introduced as a measure to unify the prediction effect among different sequences. The findings from the experiment indicated that the predictive performance of the new model surpassed that of other comparative models. The root mean square errors for the projections of the four distinct spare parts’ demand were 0 . 7 7 5, 1.349, 0 . 8 2 2, and 0 . 2 0 5, respectively, demonstrating a high degree of accuracy in predicting. The model was capable of analyzing the time-dependent relationships within time series data, effectively identifying nonlinear patterns. It performed well in predicting the demand for various agricultural machinery spare parts, offering valuable insights for the demand of predicting agricultural machinery spare parts. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 28
Main heading: Fourier series
Controlled terms: Agricultural machinery? - ?Agriculture? - ?Convolution? - ?Convolutional neural networks? - ?Fast Fourier transforms? - ?Forecasting? - ?Linear transformations? - ?Mean square error? - ?Metadata? - ?Prediction models ? - ?Repair? - ?Time series
Uncontrolled terms: Agricultural machinery spare part? - ?Convolutional neural network? - ?Demand forecasting? - ?Demand prediction? - ?Efficient convolutional neural network? - ?Machinery failures? - ?Spare part demands? - ?Spare parts? - ?Time series prediction? - ?Times series
Classification code: 716.1 Information Theory and Signal Processing? - ?821 Agricultural Equipment and Methods; Vegetation and Pest Control? - ?821.2 Agricultural Machinery and Equipment? - ?913.5 Maintenance? - ?1101 Artificial Intelligence? - ?1101.2.1 Deep Learning? - ?1106.2 Data Handling and Data Processing? - ?1201.3 Mathematical Transformations? - ?1201.5 Computational Mathematics? - ?1202 Statistical Methods? - ?1202.2 Mathematical Statistics
DOI: 10.6041/j.issn.1000-1298.2026.01.028
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
25. Tobacco Aphid Identification and Counting Method Based on GEB YOLO v8n
Accession number: 20260119858537
Title of translation: 基于GEB-YOLO v8n的烟草蚜虫识别与计数方法
Authors: Luo, Bin (1, 2); Ma, Leyi (1, 2); Zhou, Ya’nan (1, 3); Huang, Shuo (1); Xie, Ziwen (1); Chen, Dong (1, 3)
Author affiliation: (1) Research Center of Intelligent Equipment, Beijing Academy of Agriculture and Forestry Sciences, Beijing; 100097, China; (2) College of Mechanical and Electrical Engineering, Xinjiang Agricultural University, Urumqi; 830052, China; (3) Nongxin (Nanjing) Smart Agriculture Research Institute Co., Ltd., Nanjing; 211800, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 159-168 and 179
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: A lightweight tobacco aphid detection algorithm called GEB — YOLO v8n was proposed to address the problems in field image acquisition, such as dynamic changes in ambient light and image blurring. Firstly, GSConv and the efficient channel attention (ECA) mechanism were innovatively introduced into the backbone network, and the rich image feature information and target-oriented ability of tobacco aphids were jointly output. Secondly, the bidirectional feature pyramid network (BiFPN) was introduced into the neck network, and the semantic expression ability and spatial information quality of the model for detecting tobacco aphid feature maps were enhanced. Finally, WIoU was introduced as the bounding-box regression loss function, and the model was enabled to better generalize to new and challenging tobacco aphid detection scenarios by dynamically focusing on complex samples. After the model structure re-parameterization and hyperparameter optimization, a network architecture for field tobacco aphid detection was formed. The results showed that the mean average precision (mAP) and Fl value of the improved model reached 9 1 . 8 % and 90. 4%, respectively, the number of parameters was reduced by 42. 8%, the model memory footprint and floating point operations (FLOPs) were reduced to 3.5 MB and 4. 1 x 10, respectively, and the average inference time reached 3.6 ms. A system for tobacco aphid recognition and counting in small-scale fields was developed based on the GEB — YOLO v8n model. The system had the dual functions of online image detection and video detection, and can intuitively display the detection results of the number of tobacco aphids on the interface, meeting the requirements of real-time detection of tobacco aphids in small-scale fields and mobile-end deployment. The improved lightweight GEB — YOLO v8n model can provide a method reference for the identification and phenotypic analysis of tobacco plant diseases and pests in the field environment. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 31
Main heading: Tobacco
Controlled terms: Image recognition? - ?Network architecture? - ?Plant diseases? - ?Semantics? - ?Signal detection? - ?Tungsten compounds
Uncontrolled terms: Counting? - ?Detection algorithm? - ?Dynamic changes? - ?Field images? - ?GEB - YOLO v8n? - ?In-field? - ?Lightweight? - ?Precise identification? - ?Small scale? - ?Tobacco aphid
Classification code: 103 Biology? - ?202.3 Chromium, Manganese, Molybdenum, Tantalum, Tungsten, Vanadium and Alloys? - ?716.1 Information Theory and Signal Processing? - ?821.5 Agricultural Products? - ?903.2 Information Dissemination? - ?1105.2 Internet and Web Technologies? - ?1106.5 Computer Applications
Numerical data indexing: Percentage 4.00E+00%, Percentage 8.00E+00%, Time 3.60E-03s
DOI: 10.6041/j.issn.1000-1298.2026.01.015
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
26. Graph Structure-guided Rice Panicle Skeleton Parsing and Non-destructive Measurement of Key Phenotypic Parameters
Accession number: 20260119852389
Title of translation: 基于图结构引导的稻穗骨架解析与关键表型参数无损测量方法
Authors: Zhou, Yuncheng (1); Li, Ruiyang (1); Zhang, Yu (1); Liang, Chengwei (2); Wang, Jue (1)
Author affiliation: (1) College of Information and Electrical Engineering, Shenyang Agricultural University, Shenyang; 110866, China; (2) Rice Research Institute, Shenyang Agricultural University, Shenyang; 110866, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 92-103
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: The high-throughput and non-destructive acquisition of panicle phenotypic parameters is a key step in rice breeding and phenomics research. To address the limitations of traditional manual methods- which are inefficient and destructive-and the poor flexibility of existing image-based methods that rely on manual priors, a graph structure-guided approach for skeleton parsing and non-destructive measurement of key phenotypic parameters was proposed. Firstly, building on the YOLO v9 framework, a more robust key point detection model was trained by incorporating mixed-background data augmentation and a Wise - IoU (WIoU) loss function to improve the detection of panicle nodes and neck nodes. Next, threshold segmentation and thinning were applied to panicle images to extract skeletal structures and construct an undirected graph topology. The detected key points were then deeply integrated with the skeleton topology to classify key point types and assist graph-based algorithms in automatically identifying the rachis, primary branches, and secondary branches. Physical scale conversion was achieved by using a calibration object. Experimental results demonstrated that the improved detection model increased mAP for neck nodes and panicle nodes by 4. 5 and 2. 4 percentage points, respectively, compared with the baseline, while recall was improved by 7. 8 and 4. 0 percentage points, and the correct detection ratio of key points was increased by 4. 6 and 5. 0 percentage points. In structural counting, panicle node counting achieved zero error, and the mean relative errors for primary and secondary branch counts were within 0. 39% and 2. 38%, respectively. For dimensional measurements, the mean relative errors of primary branch length, secondary branch length, rachis length, and internode length were controlled within 3.2%, 7.5%, 3. 1%, and 5. 2%, respectively, with mean absolute errors not exceeding 2. 9 mm, 2. 3 mm, 2. 3 mm, and 1. 6 mm. The research result achieved automatic and non-destructive extraction of key rice panicle phenotypic parameters, providing a viable technical solution for high-throughput panicle phenotyping. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 28
Main heading: Image segmentation
Controlled terms: Errors? - ?Graph algorithms? - ?Graph structures? - ?Graphic methods? - ?Musculoskeletal system? - ?Throughput? - ?Undirected graphs
Uncontrolled terms: Graph structure guidance? - ?Graph structures? - ?Keypoints? - ?Measurements of? - ?Non-destructive measurement? - ?Percentage points? - ?Phenotypic parameter? - ?Rice? - ?Rice panicle? - ?Targets detection
Classification code: 101.4 Biomechanics, Bionics and Biomimetics? - ?731.1.1 Error Handling? - ?902.1 Engineering Graphics? - ?913.2 Production Control? - ?1106.3.1 Image Processing? - ?1106.4 Database Systems? - ?1201.8 Discrete Mathematics and Combinatorics, Includes Graph Theory, Set Theory
Numerical data indexing: Percentage 1.00E00%, Percentage 2.00E+00%, Percentage 3.20E+00%, Percentage 3.80E+01%, Percentage 3.90E+01%, Percentage 7.50E+00%, Size 3.00E-03m, Size 6.00E-03m, Size 9.00E-03m
DOI: 10.6041/j.issn.1000-1298.2026.01.009
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
27. PID Steering Control Method of Agricultural Robot Based on Fusion of Particle Swarm Optimization and Genetic Algorithm
Accession number: 20260119851358
Title of translation: 基于粒子群优化与遗传算法融合的农业机器人PID转向控制方法
Authors: Zhao, Longlian (1, 2); Zhang, Jiachuang (1, 2); Li, Mei (1, 2); Dong, Zhicheng (1, 2); Li, Junhui (1, 2)
Author affiliation: (1) College of information and Electrical Engineering, China Agricultural University, Beijing; 100083, China; (2) Key Laboratory of Smart Agriculture System Integration, Ministry of Education, Beijing; 100083, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 358-367
Language: English
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming to solve the steering instability and hysteresis of agricultural robots in the process of movement, a fusion PID control method of particle swarm optimization ( PSO ) and genetic algorithm (GA) was proposed. The fusion algorithm took advantage of the fast optimization ability of PSO to optimize the population screening link of GA. The Simulink simulation results showed that the convergence of the fitness function of the fusion algorithm was accelerated, the system response adjustment time was reduced, and the overshoot was almost zero. Then the algorithm was applied to the steering test of agricultural robot in various scenes. After modeling the steering system of agricultural robot, the steering test results in the unloaded suspended state showed that the PID control based on fusion algorithm reduced the rise time, response adjustment time and overshoot of the system, and improved the response speed and stability of the system, compared with the artificial trial and error PID control and the PID control based on GA. The actual road steering test results showed that the PID control response rise time based on the fusion algorithm was the shortest, about 4.43 s. When the target pulse number was set to 100, the actual mean value in the steady-state regulation stage was about 102.9, which was the closest to the target value among the three control methods, and the overshoot was reduced at the same time. The steering test results under various scene states showed that the PID control based on the proposed fusion algorithm had good anti-interference ability, it can adapt to the changes of environment and load and improve the performance of the control system. It was effective in the steering control of agricultural robot. This method can provide a reference for the precise steering control of other robots. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 21
Main heading: Genetic algorithms
Controlled terms: Agricultural robots? - ?Agriculture? - ?Control system stability? - ?Particle swarm optimization (PSO)? - ?Swarm intelligence
Uncontrolled terms: Adjustment time? - ?Agricultural robot? - ?Agricultural robot steering? - ?Control methods? - ?Fusion algorithms? - ?Optimization and genetic algorithms? - ?Particle swarm genetic algorithms? - ?Particle swarm optimization algorithm? - ?Robot steering? - ?Steering control
Classification code: 731.1 Control Systems? - ?731.4 Control System Stability? - ?731.6 Robot Applications? - ?821 Agricultural Equipment and Methods; Vegetation and Pest Control? - ?821.2 Agricultural Machinery and Equipment? - ?1101 Artificial Intelligence? - ?1106 Computer Software, Data Handling and Applications? - ?1201.7 Optimization Techniques
Numerical data indexing: Time 4.43E+00s
DOI: 10.6041/j.issn.1000-1298.2026.01.034
Funding Details: Number: 31772064, Acronym: -, Sponsor: National Natural Science Foundation of China;
Funding text: National Natural Science Foundation of China (No. 31772064).
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
28. Design and Experiment of Scraper Soil Covering Device for Horizontal Transplanter of Sweet Potato
Accession number: 20260119857470
Title of translation: 甘薯横向水平移栽机刮板式覆土装置设计与试验
Authors: Zhang, Wanzhi (1, 2); Li, Dengshan (1); Zhang, Tingling (3); Sun, Yulu (1); Liu, Hongjuan (4); Mu, Guizhi (1, 5)
Author affiliation: (1) College of Mechanical and Electronic Engineering, Shandong Agricultural University, Taian; 271018, China; (2) Shandong Engineering Research Center of Agricultural Equipment Intelligentization, Taian; 271018, China; (3) School of Intelligent Manufacturing, Hubei University, Wuhan; 430062, China; (4) College of Agronomy, Shandong Agricultural University, Taian; 271018, China; (5) Shandong Key Laboratory of Intelligent Production Technology and Equipment for Facility Horticulture, Taian; 271018, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 203-214
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Horizontal transplanting of sweet potatoes can enhance yield and quality, but both are significantly influenced by the transplanting depth. And mechanized transplanting has extremely high requirements for the shape of sweet potato seedlings. To meet the agronomic requirements of this method, a scraper soil covering device was designed for the horizontal transplanter of sweet potatoes with field seedlings to ensure the transplanting depth. Initially, the structure of the scraper soil covering device was designed, and the theoretical analysis of the movement process of soil particles during its operation was conducted. Factors such as the installation inclination angle a, scraper inclination angle j3, scraper linear speed vb, scraper length L, width W, and spacing D were identified as key factors affecting soil loading and particle movement speed and direction. The installation position of the scraper soil covering device, values of a, W, and D, and the acceptable range of vb, j3, and L were determined through theoretical analysis. Eventually, a coupling model of the ridge-scraper soil covering device was established by using RecurDyn — EDEM simulation. The Box — Behnken experimental design method was adopted, with vb, (3, and L as experimental factors, and the average covering thickness as the evaluation index. The influence of each experimental factor and their interaction on the average covering thickness was analyzed. The prediction model of the regression equation was obtained by using Design-Expert software, and the response surface analysis was carried out. Experimental results determined the optimal parameters for the scraper soil covering device; when the scraper inclination was 100.35°, the scraper linear speed was 1. 74 m / s, and the scraper length was 150. 32 mm, the performance was the best, and the average soil covering thickness was 50 mm. The field experiment showed that under the optimal parameter combination, the average soil covering thickness was 48 mm, the qualified rate of transplanting depth was 96%, and the standard deviation of soil covering thickness was 4. 6 mm. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 25
Main heading: Tools
Controlled terms: Computer software? - ?Design of experiments? - ?Plants (botany)? - ?Seed? - ?Soils
Uncontrolled terms: Coupling simulation? - ?Covering device? - ?Inclination angles? - ?Linear speed? - ?Parameter optimization? - ?Scraper? - ?Soil coverings? - ?Soil particles? - ?Sweet potato? - ?Transplanting depth
Classification code: 103 Biology? - ?483.1 Soils and Soil Mechanics? - ?821.5 Agricultural Products? - ?901.3 Engineering Research? - ?904 Design? - ?1106.9 Computer Software
Numerical data indexing: Percentage 9.60E+01%, Size 3.20E-02m, Size 4.80E-02m, Size 5.00E-02m, Size 6.00E-03m, Velocity 7.40E+01m/s
DOI: 10.6041/j.issn.1000-1298.2026.01.019
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
29. Method for Fusion Analysis of In-situ Field Phenotyping Data Based on Surrounding Unmanned Vehicle Phenotyping Platform and Homologous Sensor Arrays
Accession number: 20260119858643
Title of translation: 基于环绕式无人车表型平台和同源传感阵列的田间原位表型数据融合解析方法
Authors: Li, Yinglun (1, 2); Cai, Shichen (1, 2); Zhang, Yanyu (1, 2); Zhu, Yongji (2); Ma, Ruitao (2); Fan, Jiangchuan (1, 2); Guo, Xinyu (1, 2)
Author affiliation: (1) Information Technology Research Center, Beijing Academy oj Agriculture and Forestry Sciences, Beijing; 100097, China; (2) National Engineering Research Center for Information Technology in Agriculture, Beijing; 100097, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 19-29
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: High-throughput and precise acquisition and analysis of crop phenotypic information are fundamental components of modern agricultural breeding and precision cultivation systems. However, traditional manual measurements in complex field environments are limited by low efficiency, high labor intensity, and strong subjectivity, making it difficult to meet the growing demand for large-scale, multitrait, and time-series phenotyping. To address these challenges, an in-field phenotypic data fusion and analysis method was proposed based on a ring-shaped unmanned vehicle phenotyping platform and a multimodal homogeneous sensor array. The platform integrated multiple homogeneous sensors, including RGB and depth cameras, enabling multi-angle and three-dimensional in situ crop observations. A systematic multi-source heterogeneous data fusion workflow was designed, consisting of image preprocessing, depth information extraction, 3D reconstruction, temporal tracking, and feature analysis, to achieve accurate extraction and dynamic reconstruction of key phenotypic traits such as plant height, canopy structure, and spatial distribution. Field experiments were conducted on maize plants at multiple growth stages. The results demonstrated that the proposed platform can stably and continuously acquire high-quality multimodal phenotypie data. The reconstructed plant height measurements showed a high correlation with manual measurements, with an average error within 5 cm, verifying the accuracy and robustness of the method. Compared with conventional single-view or mechanically rotating observation methods, the proposed platform exhibited superior adaptability to field environments, allowing rapid deployment and efficient operation, thereby providing an effective technical foundation for large-scale infield phenotyping. Furthermore, the platform’s advantages were discussed in terms of portability, scalability, timeliness, and automation, and envisions future developments toward embodied intelligence and autonomous phenotyping. The proposed ring-type unmanned vehicle platform and multimodal data fusion method can provide a high-throughput, low-disturbance, and scalable technical solution for in-field crop phenomics, supporting modern crop breeding and precision agriculture. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 39
Main heading: Grain (agricultural product)
Controlled terms: 3D reconstruction? - ?Agribusiness? - ?Crops? - ?Cultivation? - ?Data mining? - ?Extraction? - ?Image reconstruction? - ?Livestock? - ?Plant diseases? - ?Plants (botany) ? - ?Precision agriculture? - ?Sensor data fusion? - ?Smart agriculture? - ?Throughput? - ?Unmanned vehicles
Uncontrolled terms: 3D reconstruction? - ?Crop phenotyping? - ?High-throughput? - ?Maize? - ?Manual measurements? - ?Multimodal sensing? - ?Phenotyping? - ?Sensors array? - ?Unmanned vehicle platform? - ?Vehicle platforms
Classification code: 103 Biology? - ?731.5 Robotics? - ?802.3 Chemical Operations? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?913.2 Production Control? - ?1106.2 Data Handling and Data Processing? - ?1106.2.1 Data Mining? - ?1106.3.1 Image Processing? - ?1106.8 Computer Vision? - ?1107 Human-Machine Systems
Numerical data indexing: Size 5.00E-02m
DOI: 10.6041/j.issn.1000-1298.2026.01.002
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
30. Method for Spike Detection of Cereal Crops in Natural Scenes Based on GA DETR
Accession number: 20260119858758
Title of translation: 基于GA-DETR的自然场景谷类作物穗部检测方法
Authors: Wang, Jiashi (1); Cui, Chenxi (1); Du, Aobo (1); Shi, Xianglong (1); Liu, Jinbao (1); Deng, Xuehan (1); Yang, Wanneng (2); Song, Peng (2); Duan, Lingfeng (2); Zhai, Ruifang (2)
Author affiliation: (1) College of Informatics, Huazhong Agricultural University, Wuhan; 430010, China; (2) National Key Laboratory of Crop Genetic Improvement, Huazhong Agricultural University, Wuhan; 430070, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 125-139
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: The detection of inflorescences from the world’s three major cereal crops (rice panicles, wheat spikes, and maize tassels) is a fundamental task in precision farming and cereal crop phenotyping. However, accurate detection remains challenging due to dense distributions, significant scale variations, and small-target in complex environments, which substantially compromise the precision of detection. To tackle these issues, gated attention — DETR (GA — DETR), an architecture based on RT — DETR was proposed, which introduced three novel components; aiming at the delicate tip features of cereal inflorescences, a gated mechanism C2F (GMC2F) module was proposed to enhance backbone feature discrimination through dynamic channel weighting and cross-stage local feature integration. To address the scale mismatch caused by differences in the shapes of cereal inflorescences, an attention upsample scale sequence feature fusion (AUSSFF) module was proposed, which enhanced the robustness of multi-scale dependency modeling through 3D convolutions. For difficult small target in UAV images, a FPIoU loss function was proposed, which combined target-size adaptive weighting and difficulty-aware stratification to optimize the performance on hard samples. GA — DETR performed better than the baseline RT — DETR and five mainstream detection models on the RiceR dataset, GWHD dataset, and MTC —UAV dataset, including rice panicles, wheat spikes, and maize tassels, achieving m A P @ 0 . 5 of 92. 8%, 9 1 . 7%, and 9 1 . 3%, respectively, while for RiceR dataset reducing model parameters by 32. 5% and floating-point computational load by 14. 4% . The proposed framework surpassed five state-of-the-art frameworks in inflorescence counting on GWHD dataset, achieving an MAE of 5. 650 and an RMSE of 7 . 3 8 3 . It effectively balanced accuracy and efficiency, providing a cross-species feature modeling paradigm for the universal detection framework of cereal inflorescence morphology. Compatible with diverse cereal crops (e. g., wheat, rice, maize) and data from different acquisition platforms (ground cameras, UAVs), it supported automated high-throughput field phenotyping monitoring of cereals, further advancing precision agriculture. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 38
Main heading: Unmanned aerial vehicles (UAV)
Controlled terms: 3D modeling? - ?Aircraft detection? - ?Arts computing? - ?Aspect ratio? - ?Convolution? - ?Crops? - ?Digital arithmetic? - ?Feature extraction? - ?Grain (agricultural product)? - ?Image enhancement ? - ?Object detection? - ?Object recognition
Uncontrolled terms: Cereal crop? - ?Dense target? - ?Gated attention — DETR? - ?Natural scenes? - ?Objects detection? - ?Phenotyping? - ?Precision-farming? - ?Scene-based? - ?Small targets? - ?Spike detection
Classification code: 435.2 Tracking and Positioning? - ?652.1 Aircraft? - ?716.1 Information Theory and Signal Processing? - ?716.2 Radar Systems and Equipment? - ?821.5 Agricultural Products? - ?1101.2 Machine Learning? - ?1102.1 Computer Theory, Includes Computational Logic, Automata Theory, Switching Theory, Programming Theory? - ?1106.3.1 Image Processing? - ?1106.5 Computer Applications? - ?1106.8 Computer Vision? - ?1201.12 Modeling and Simulation
Numerical data indexing: Percentage 3.00E+00%, Percentage 4.00E+00%, Percentage 5.00E+00%, Percentage 7.00E+00%, Percentage 8.00E+00%
DOI: 10.6041/j.issn.1000-1298.2026.01.012
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
31. Construction of Dynamic Growth Root System Model for Purple Alfalfa Based on L System Theory
Accession number: 20260119851385
Title of translation: 基于L系统的紫花苜蓿动态生长根系模型构建
Authors: Yang, Guixia (1, 2); Yuan, Shengyang (1, 2); Yang, Xiaoling (1, 2); Li, Sihuan (1, 2); Liu, Xianfeng (1, 2); Yang, Xuanyu (3)
Author affiliation: (1) School of Civil Engineering, Southwest Jiaotong University, Chengdu; 610031, China; (2) Key Laboratory of High Speed Railway Line Engineering, Ministry of Education, Southwest Jiaotong University, Chengdu; 610031, China; (3) Remote Sensing and Mapping Research Institute, Shanxi Intelligent Transportation Research Institute Co., Ltd., Taiyuan; 030026, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 319-328
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In response to the existing deficiencies in the dynamic growth model of alfalfa root system and the root system model of slope protection plants in geotechnical engineering ecological protection, the traditional L system was improved. A dynamic growth root system modeling method based on the L system applicable in the field of geotechnical engineering ecological protection was proposed. By controlling the dry density, initial moisture content, temperature, and humidity of Ili loess, alfalfa planting was carried out. The main root length, main root diameter, number of lateral roots, lateral root diameter, lateral root length, and lateral root branching points of alfalfa at different growth times were recorded. Based on the growth parameters of alfalfa and L system and modeling technology, a dynamic growth root system model of alfalfa was constructed. The results indicated that the root growth of alfalfa followed the Logistic- equation. The angle between lateral roots and main roots ranged from 15° to 60°. The number of lateral roots, branch spacing, and length of starting branches was increased with growth time. The diameter of the lower segment of the main root remained stable between 0. 01 mm and 0. 04 mm, while the diameter of the main root near the soil surface varied significantly with time. The lateral root diameter was small, and the diameter variation was also minor. Using the Logistic equation as the root growth model for alfalfa, a dynamic root growth model for alfalfa suitable for numerical simulation was constructed based on the L system combined with modeling techniques. The model was validated, and the results showed that the overall error of the root model was small. This L system-based dynamic growth root model of alfalfa successfully visualized the dynamic growth of alfalfa roots and can be applied to numerical simulation fields in agricultural production, botany, and geotechnical engineering. It filled the gap in the dynamic growth model of alfalfa roots and provided a reference for the establishment of plant dynamic growth root models in geotechnical engineering ecological protection. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 42
Main heading: Numerical models
Controlled terms: Ecology? - ?Environmental protection? - ?Forestry? - ?Numerical methods? - ?Plants (botany)? - ?Slope protection
Uncontrolled terms: Dynamic growth? - ?Dynamic growth model? - ?Ecological protection? - ?Geotechnical? - ?L-systems? - ?Lateral roots? - ?Purple alfalpha? - ?Root? - ?Root system? - ?System models
Classification code: 103 Biology? - ?407.1 Maritime Structures? - ?483.1 Soils and Soil Mechanics? - ?821.1 Woodlands and Forestry? - ?1201.4 Applied Mathematics? - ?1201.9 Numerical Methods? - ?1502.1 Environmental Impact and Protection? - ?1502.2 Ecology and Ecosystems
Numerical data indexing: Size 1.00E-03m, Size 4.00E-03m
DOI: 10.6041/j.issn.1000-1298.2026.01.030
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
32. Analysis of Effects of Deep Plowing Soil Improvement Methods on Physical Structure and Crop Growth of Waterlogged Albic Soil
Accession number: 20260119851381
Title of translation: 深耕改土方式对涝渍白浆土物理结构和作物生长影响分析
Authors: Gao, Zhongchao (1); Huang, Wengong (2); Wang, Wei (1); Li, Yumei (1); Cai, Shanshan (1); Sun, Lei (1); Wang, Cuiling (2); Ma, Bingbing (3); Zhang, Lili (4)
Author affiliation: (1) Heilongjiang Academy of Black Soil Conservation and Utilization, Harbin; 150086, China; (2) Safety and Quality Institute of Agricultural Products, Heilongjiang Academy of Agricultural Sciences, Harbin; 150086, China; (3) Heilongjiang Agricultural Environment and Cultivated Land Protection Station, Harbin; 150011, China; (4) Heilongjiang Academy of Agricultural Sciences, Harbin; 150086, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 368-377
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: The waterlogging limited the production potential of cultivated soil ( waterlogged albic soil ) in the eastern Sanjiang Plain of Heilongjiang Province, which restricted the stable and high yield of this region. Focusing on the hard barrier layer, poor ventilation and permeability, and poor drainage of white clay in the flooded areas of the Sanjiang Plain, which can easily lead to waterlogging disasters issues. Self-developed mouse hole plows ( RHPT) and straw deep buried plows ( SDBT) were used for tillage and soil improvement operations, with conventional tillage ( stubble removal and ridge formation ) as the control (CK). Based on artificial simulation of waterlogging, maize during the silk emergence stage was subjected to 7 days of waterlogging stress. Two deep tillage and soil improvement methods were studied to break through the barrier layer, improve soil tillage structure, and resist the nature of waterlogging on maize root growth, dry matter accumulation, yield composition, etc. The experimental results showed that compared with conventional tillage (CK), the two tillage measures reduced soil hardness, improved soil permeability, and had a more reasonable three-phase ratio. Compared with CK, RHPT and SDBT treatments resulted in a maximum decrease of 25. 9% and 19. 3% in subsoil (20 ? 40 cm) hardness, a decrease of 7. 9% and 9.2% in soil solid fraction, and an increase of 11.5% and 10.6% in liquid fraction, respectively. The permeability coefficient of the plow layer was increased by 451. 1% and 407. 1%, and the differences in various indicators were significant (P ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 27
Main heading: Grain (agricultural product)
Controlled terms: Agricultural machinery? - ?Clay? - ?Cultivation? - ?Disasters? - ?Drainage? - ?Hardness? - ?Silk? - ?Soil mechanics? - ?Tillage? - ?Yield stress
Uncontrolled terms: Deep buried straw plow? - ?Deep plowing soil improvement method? - ?Improvement methods? - ?Maize? - ?Maize roots? - ?Rat hole plow? - ?Sanjiang plain? - ?Soils improvement? - ?Waterlogged albic soil? - ?Waterlogging
Classification code: 213.1 Natural Fibers? - ?214 Materials Science? - ?214.1 Mechanical Properties of Materials? - ?217.4.1 Brick and Mortar? - ?444.1 Surface Water? - ?483.1 Soils and Soil Mechanics? - ?821.2 Agricultural Machinery and Equipment? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?914 Safety Engineering
Numerical data indexing: Age 1.918E-02yr, Percentage 0.00E00%, Percentage 1.00E00%, Percentage 1.06E+01%, Percentage 1.13E+01%, Percentage 1.15E+01%, Percentage 1.20E+01%, Percentage 3.00E+00%, Percentage 4.00E+00%, Percentage 7.00E+00%, Percentage 8.00E+00%, Percentage 9.00E+00%, Percentage 9.20E+00%, Size 4.00E-01m
DOI: 10.6041/j.issn.1000-1298.2026.01.035
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
33. Corn Crop Row Recognition and Navigation Line Extraction Algorithm Based on ResAC - UNet Network
Accession number: 20260119851372
Title of translation: 基于ResAC-UNet网络的玉米作物行识别与导航线提取算法研究
Authors: Cui, Yongzhi (1, 2); Liu, Yangchun (1, 2); Mao, Wenhua (1, 2); An, Qilin (1, 2); Guo, Quanfeng (1, 2); Li, Guangrui (1, 2); Zhou, Da (1, 2); Zhou, Baixue (1, 2); Wei, Liguo (1, 2)
Author affiliation: (1) Chinese Academy of Agricultural Mechanization Sciences Group Co., Ltd., Beijing; 100083, China; (2) State Key Laboratory of Agricultural Equipment Technology, Beijing; 100083, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 348-357 and 385
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In complex unstructured farmland environments, accurate extraction of navigation lines is crucial for agricultural machinery and agricultural robots to achieve autonomous operation. Challenging factors such as variable lighting, undulating terrain, and weed interference that are common in agricultural environments, making traditional image processing methods perform poorly in terms of adaptability, accuracy, and real-time performance, it’s difficult to meet the visual navigation needs of smart agriculture. To address these issues, a ResAC - UNet deep learning network model was proposed based on an improved UNet. This model used the ResNet -50 network to replace the encoder structure of the traditional UNet to enhance feature extraction capabilities. The segmentation speed and real-time response capabilities were improved through optimized jump connections. The ASPP module was introduced in the bottleneck part of the network to achieve multi-scale receptive field modeling, while maintaining high-resolution features and capturing richer contextual information. In addition, the model integrate CBAM to enhance the accurate perception of crop row boundaries, effectively prevented the loss of key feature information, and further improved the segmentation quality. Based on the segmentation results, the row anchor method and RANSAC algorithm were used to achieve high-precision navigation line extraction and smoothing. The acquired front view image was converted into a bird’s-eye view to eliminate the perspective effect, and a top view of the crop row with ROI was generated and retained. The experimental results showed that the ResAC - UNet model achieved 99. 23%, 95. 44%, 85. 23% and 94.71% in precision, MPA, MIoU and recall, respectively, which was better than the current mainstream segmentation networks such as Segformer, DDRNet, HRNet and DeepLabV3 +. The average inference time of ResAC - UNet was 15.26 ms, which met the real-time recognition requirements of intelligent agricultural machinery visual navigation. Three navigation lines can be extracted in the ROI area of the camera. The maximum angle error of the middle navigation line was only 0.96°, and the maximum pixel deviation was 4. 3, which realized the reliable extraction of high-quality navigation lines. Compared with other navigation path extraction methods, the proposed method had higher accuracy and stability. The research result can provide an efficient and robust visual perception solution for the autonomous navigation of intelligent agricultural machinery in the field, which had certain practical value. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 25
Main heading: Deep learning
Controlled terms: Agricultural robots? - ?Crops? - ?Extraction? - ?Farms? - ?Feature extraction? - ?Image segmentation? - ?Learning systems? - ?Lighting? - ?Navigation? - ?Signal encoding ? - ?Smart agriculture? - ?Vision? - ?Visual servoing
Uncontrolled terms: Bird’s eye view? - ?Corn crop row? - ?Crop rows? - ?Deep learning? - ?Extraction algorithms? - ?Line extraction? - ?Navigation line extraction? - ?Navigation lines? - ?ResAC - unet? - ?Visual Navigation
Classification code: 101.5 Ergonomics and Human Factors Engineering? - ?435.1 Navigation? - ?707 Illuminating Engineering? - ?716.1 Information Theory and Signal Processing? - ?731.5 Robotics? - ?731.6 Robot Applications? - ?741.2 Vision? - ?802.3 Chemical Operations? - ?821 Agricultural Equipment and Methods; Vegetation and Pest Control? - ?821.2 Agricultural Machinery and Equipment? - ?821.4 Agricultural Methods? - ?821.5 Agricultural Products? - ?1101.2 Machine Learning? - ?1101.2.1 Deep Learning? - ?1106.3.1 Image Processing
Numerical data indexing: Percentage 2.30E+01%, Percentage 4.40E+01%, Percentage 9.471E+01%, Time 1.526E-02s
DOI: 10.6041/j.issn.1000-1298.2026.01.033
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
34. Optimized Design and Testing of Core-share Seed Drill Furrow Opener Suitable for Heavy Clay
Accession number: 20260119857862
Title of translation: 黏重土壤芯铧式播种开沟器优化设计与试验
Authors: Hao, Jianjun (1, 2); Qu, Pengcheng (1); Liu, Tianlong (1); Zhao, Jiale (3); Yin, Changfeng (4); Zhao, Jianguo (1, 5); Wang, Xinfang (6)
Author affiliation: (1) College of Mechanical and Electrical Engineering, Hebei Agricultural University, Baoding; 071001, China; (2) Hebei Provincial Key Laboratory oj Agricultural Machinery Operational Cutting Tools, Dingzhou; 073000, China; (3) College oj Biological and Agricultural Engineering, Jilin University, Changchun; 130022, China; (4) Shandong Xutuo New Material Technology Co., Ltd., Weifang; 261000, China; (5) Hebei Provincial Tillage Machinery Technology Innovation Center, Ningjin; 055551, China; (6) Hebei Shenghe Agricultural Machinery Co., Ltd., Ningjin; 055551, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 180-190 and 226
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming at the problems of serious clay and high resistance to furrow opening when the seeding coulter operates under the environment of clay soil, a core-share seeding coulter suitable for clay soil was optimally designed. Through theoretical analysis and empirical design, it was determined that the furrow coulter had an entry angle of 4 5 °, a gap angle of 5 °, a bevel angle of 3 0 °, a start slip angle of 2 3 °, a termination slip angle of 4 5 °, and a with of 45 mm. In order to improve the performance of the furrow opener in viscosity reduction and desludging, basing on the principle of viscosity and drag reduction of non-smooth surfaces of biomimicry, it was determined that the surface of the plough body of the furrow opener was locally textured reshaped by increasing the convex ribs, and the movement of the furrow coulter in the soil groove was simulated by EDEM software. Using EDEM software to simulate the movement of the furrower in the soil groove, taking the surface characteristic geometric parameters as the test factors, the soil adhesion amount and furrowing resistance as the evaluation indexes, and adopting the response surface test to analyze the influence law of each geometric parameter on the evaluation indexes, it was determined that the optimal combination of the surface characteristic geometric parameters of the furrower body was as follows; width of the convex rib was 7. 623 mm, thickness of the convex rib was 1. 344 mm, and the spacing between the adjacent convex ribs was 11.782 mm, at this time, the soil adhesion amount of the furrower was 159. 88 g, the furrowing resistance was 60.065 N. The soil trench test showed that under the same working conditions, the soil viscosity reduction rate of the textured reshaping furrow opener was 16.33%, compared with the conventional furrow coulter, the working resistance was reduced by 2. 9 1 % ~ 4. 45%, achieving the expected viscosity reduction and resistance effect. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 39
Main heading: Adhesion
Controlled terms: Agricultural machinery? - ?Clay? - ?Drag reduction? - ?Geometry? - ?Reduction? - ?Software testing? - ?Soil testing? - ?Surface resistance? - ?Surface testing? - ?Viscosity
Uncontrolled terms: Anti-adhesion and friction-reducing? - ?Anti-friction? - ?Antiadhesion? - ?Core-share furrow opener? - ?EDEM? - ?Friction-reducing? - ?Furrow openers? - ?Heavy clay? - ?Optimized designs? - ?Seeder
Classification code: 208 Coatings, Surfaces, Finishes, Films and Deposition? - ?214 Materials Science? - ?215 Materials Testing? - ?217.4.1 Brick and Mortar? - ?301.1 Fluid Flow? - ?301.1.3 Aerodynamics (fluid flow)? - ?483.1 Soils and Soil Mechanics? - ?651 Aerodynamics? - ?701.1 Electricity: Basic Concepts and Phenomena? - ?802.2 Chemical Reactions? - ?821.2 Agricultural Machinery and Equipment? - ?1106.9 Computer Software? - ?1201.14 Geometry and Topology? - ?1301.1.2 Physical Properties of Gases, Liquids and Solids? - ?1502.1.1.4.3 Soil Pollution Control
Numerical data indexing: Force 6.0065E+01N, Mass 8.80E-02kg, Percentage 1.00E00%, Percentage 1.633E+01%, Percentage 4.50E+01%, Size 1.1782E-02m, Size 3.44E-01m, Size 4.50E-02m, Size 6.23E-01m
DOI: 10.6041/j.issn.1000-1298.2026.01.017
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
35. Optimization of Magnetic Levitation Centrifugal Pumps Based on Improved Gray Wolf Optimizer
Accession number: 20260119857495
Title of translation: 基于改进灰狼算法的磁悬浮离心泵优化设计
Authors: Zhao, Weiguo (1, 2); Yifan, L.U. (1)
Author affiliation: (1) College of Energy and Power Engineering, Lanzhou University of Technology, Lanzhou; 730050, China; (2) Key Laboratory of Gansu Fluid Machinery and Systems, Lanzhou University of Technology, Lanzhou; 730050, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 280-289
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: In order to improve the hydraulic: efficiency of the magnetic levitation centrifugal p u m p, a certain type of magnetic levitation centrifugal pump was selected as research object, and the maximum value of the pump efficiency was taken as the optimization target under the working condition of flow rate of 15 L/min and rotational speed of 6 000 r/min, and the most significant geometrical parameter impact on the efficiency was screened out by using the Plackett — Burman experimental design based on the basic equations of the pump and the inlet side of the blade was selected to be the intersection point of inlet side. Finally, the intersection point of the inlet side of the blade was selected as the optimization variable, which included the diameter of the pitch circle, the angle between the tangent line of the pitch circle and the tangent line of the working surface, the radius of the working surface of the blade, the radius of the backside of the blade, and the angle between the projection line of the axial surface of the front cover plate and the vertical direction. The optimal Latin hypercube design method was used to design 50 groups of test schemes, and the corresponding head and efficiency values were calculated by combining with numerical simulation, RBF neural network was introduced for training to get the approximation model between the optimization variables and optimization objectives, and finally the improved GWO was used for optimization searching. The results showed that after optimization, the head of the magnetic levitation centrifugal pump was increased by 0. 06 m, the hydraulic efficiency was increased by 0. 56 percentage points, and at the same time, the flow-head curve became smoother, which made the operation of the pump more stable; the impeller channel became wider, and the pressure gradient inside the channel became smaller, the vortex shrank in the radial direction, and the vortex in the working surface of the blades almost disappeared; the distribution of the turbulent kinetic energy inside the impeller channel was more reasonable, and at the same time, the low turbulence kinetic energy distribution was more reasonable. The distribution of turbulent kinetic energy in the impeller channel was more reasonable, and at the same time, the area of low turbulent kinetic energy was increased, the flow loss was reduced, thus the work capacity of the blades was improved, as a result, the hydraulic efficiency was improved. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 27
Main heading: Magnetic levitation
Controlled terms: Agricultural machinery? - ?Centrifugation? - ?Cleaning? - ?Computational fluid dynamics? - ?Design of experiments? - ?Hydraulic machinery? - ?Impellers? - ?Kinetic energy? - ?Kinetics? - ?Optimization ? - ?Radial basis function networks? - ?Turbulence? - ?Turbulent flow? - ?Vortex flow
Uncontrolled terms: Cleaning equipments? - ?Gray wolves? - ?Hydraulic efficiency? - ?Impeller channels? - ?Improved gray wolf algorithm? - ?Intersection points? - ?Magnetic levitation centrifugal pump? - ?Optimisations? - ?RBF Neural Network? - ?Turbulent kinetic energy
Classification code: 301.1 Fluid Flow? - ?301.1.1 Liquid Dynamics? - ?301.1.2 Gas Dynamics? - ?301.1.4 Computational Fluid Dynamics? - ?301.2 Hydrodynamics? - ?433 Rail Transportation? - ?601.2 Machine Components? - ?609.2 Pumps? - ?709 Electrical Engineering, Other Topics? - ?802.3 Chemical Operations? - ?821.2 Agricultural Machinery and Equipment? - ?901.3 Engineering Research? - ?904 Design? - ?1101.2 Machine Learning? - ?1201.7 Optimization Techniques? - ?1301.1.1 Mechanics? - ?1401.2 Hydraulic Equipment and Machinery
Numerical data indexing: Angular velocity 0.00E00rad/s, Size 6.00E+00m, Volume 1.50E-02m3
DOI: 10.6041/j.issn.1000-1298.2026.01.026
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
36. Pomelo Fractal Tree Image Generative Data Augmentation Method Using Vision-language Models
Accession number: 20260119851375
Title of translation: 融合视觉语言模型的柚子分形树图像生成增强方法
Authors: Lai, Liqian (1, 2); Duan, Jieli (1); Yang, Zhou (1, 3); Yuan, Haotian (1)
Author affiliation: (1) College of Engineering, South China Agricultural University, Guangzhou; 510642, China; (2) College of Computer Science, Jiaying University, Meizhou; 514015, China; (3) School of Mechanical Engineering, Guangdong Ocean University, Zhanjiang; 524088, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 311-318 and 338
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Aiming to address the heavy reliance on large amounts of annotated data in fruit object detection tasks such as pomelo, a pomelo tree image generative data augmentation method was proposed based on vision-language models. The approach required only 3?5 unlabeled real images to generate a large-scale labeled dataset, which can be used to train object detection models and enhance their performance in zero-shot and few-shot scenarios. The method consisted of the following three main stages. Firstly, real pomelo tree components ( including fruits, leaves) were extracted from unlabeled images by using the grounded segment anything model ( Grounded SAM ). Secondly, stable diffusion was used to create diverse background images based on textual descriptions, increasing the complexity and variability of the training data. Thirdly, a modified fractal tree algorithm was employed to construct structurally diverse pomelo trees, integrating real components with synthetic backgrounds to produce a variety of tree images and corresponding automatic annotations. Experimental results on pomelo object detection by using the YOLO vlO model ( Nano version ) showed that the proposed method improved mAP50 - 95 performance by 662. 3%, 24. 9%, 13. 7%, 8. 8%, and 1. 8% when the number of real training images was 0, 8, 16, 32, and 64, respectively. With 221 real and 512 generated images, the model achieved optimal performance; precision was 76. 9%, recall was 62. 7%, mAP50 was 70. 3%, and mAP50 -95 was 38. 4%. When transferred to orange detection tasks under the same data conditions, performance gains were 212. 9%, 16. 5%, 14. 0%, 5. 2%, and 4. 1%. With 1 302 real and 512 generated images, the model achieved the best overall performance; precision was 90. 3%, recall was 87. 8%, mAP50 was 94.0%, and mAP50 -95 was 54.0%, demonstrating strong generalization ability. Compared with tree images generated with blank backgrounds, the proposed method consistently outperformed across all training set sizes, whereas the blank-background approach only excelled in the zero-shot setting. Against traditional data augmentation techniques such as mosaic, this method performed better under low-shot conditions in pomelo detection, and although not the best in orange detection for every individual case, it achieved the best overall results under the default configuration of Ultralytics YOLO. In summary, the proposed method effectively mitigated the limitations caused by insufficient labeled data in fruit object detection model training and offered promising practical value and scalability. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 30
Main heading: Object detection
Controlled terms: Artificial intelligence? - ?Citrus fruits? - ?Data mining? - ?Forestry? - ?Fractals? - ?Image annotation? - ?Image enhancement? - ?Labeled data? - ?Large datasets? - ?Object recognition ? - ?Tellurium compounds? - ?Trees (mathematics)
Uncontrolled terms: Data augmentation? - ?Few-shot learning? - ?Fractal trees? - ?Generative data augmentation? - ?Language model? - ?Objects detection? - ?Performance? - ?Pomelo object detection? - ?Tree images? - ?Vision-language model
Classification code: 804.1 Organic Compounds? - ?804.2 Inorganic Compounds? - ?821.1 Woodlands and Forestry? - ?821.5 Agricultural Products? - ?903.1 Information Sources and Analysis? - ?1101 Artificial Intelligence? - ?1106.2 Data Handling and Data Processing? - ?1106.2.1 Data Mining? - ?1106.3.1 Image Processing? - ?1106.8 Computer Vision? - ?1201.8 Discrete Mathematics and Combinatorics, Includes Graph Theory, Set Theory? - ?1201.13 Fractals
Numerical data indexing: Percentage 0.00E00%, Percentage 1.00E00%, Percentage 2.00E+00%, Percentage 3.00E+00%, Percentage 4.00E+00%, Percentage 5.00E+00%, Percentage 5.40E+01%, Percentage 7.00E+00%, Percentage 8.00E+00%, Percentage 9.00E+00%, Percentage 9.40E+01%
DOI: 10.6041/j.issn.1000-1298.2026.01.029
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
37. Self-supervised Few-shot Semantic Segmentation Model for Maize Plant Images
Accession number: 20260119851382
Title of translation: 基于自监督学习的玉米植株图像小样本语义分割模型
Authors: Deng, Hanbing (1); Liu, Xin (1); Li, Chaoyang (1); Miao, Teng (1)
Author affiliation: (1) College of Information and Electrieal Engineering, Shenyang Agricultural University, Shenyang; 110866, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 72-82
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Image semantic segmentation technology is one of the key methods for obtaining phenotypic information of maize plants. Traditional fully supervised semantic segmentation methods typically rely on a large number of pixel-level labels. However, maize exhibits significant morphological variability across different growth stages, leading to high costs associated with image annotation and limiting the practical application of such models in real-world production scenarios. To eliminate the need for manual annotation during model training, a self-supervised few-shot semantic segmentation network for maize plant images ( MSDANet ) was proposed based on self-supervised learning, aiming to improve the semantic segmentation accuracy and model generalization capability of maize plant images across different growth stages. MSDANet utilized a superpixel-based self-supervised learning method to generate pseudo labels, enabling the construction of preliminary supervision signals for the support set images without manual annotation. It designed a mixed masking mechanism ( MM ) that applied pseudo label-based semantic masking to construct diverse masked samples in the feature space, promoting the model to learn more robust feature representations and thereby improving segmentation accuracy in complex backgrounds. To address the complex morphological issues of corn plants in images, such as bending, overlapping, and occlusion, a multi-scale deformable large kernel attention mechanism ( MS - DLKA) for the model was designed. By integrating multi-scale receptive fields and deformable convolutions, it can flexibly perceive important structural information of corn plants at different scales, effectively improving semantic segmentation accuracy. When validated on a small sample dataset, MSDANet achieved mIoU and FB - IoU of 75. 63% and 87. 12%, respectively, in the 1 - shot setting; in the 5 - shot setting, mIoU and FB - IoU reached 76. 04% and 87. 21 %, respectively, both outperforming other models of the same type proposed in this study. Additionally, compared with current mainstream fully supervised few- shot semantic segmentation models, mloU was improved by 2.9 and 2.93 percentage points under 1 - shot and 5 - shot settings, respectively. The results demonstrated that the MSDANet model can achieve high-precision semantic segmentation of corn plant images without human labels and with few samples, providing technical support for corn image analysis and plant phenotyping at different growth stages. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 29
Main heading: Deep learning
Controlled terms: Complex networks? - ?Convolution? - ?Grain (agricultural product)? - ?Image analysis? - ?Image annotation? - ?Image enhancement? - ?Image retrieval? - ?Latent semantic analysis? - ?Learning algorithms? - ?Mathematical morphology ? - ?Morphology? - ?Pixels? - ?Plants (botany)? - ?Self-supervised learning? - ?Semantic Segmentation? - ?Semantics? - ?Stages? - ?Supervised learning
Uncontrolled terms: Corn plant? - ?Deep learning? - ?Different growth stages? - ?Images processing? - ?Maize image? - ?Maize plants? - ?Plant phenotype? - ?Segmentation accuracy? - ?Segmentation models? - ?Semantic segmentation
Classification code: 103 Biology? - ?214 Materials Science? - ?402.2 Public Buildings? - ?716.1 Information Theory and Signal Processing? - ?821.5 Agricultural Products? - ?903.2 Information Dissemination? - ?1101.2 Machine Learning? - ?1101.2.1 Deep Learning? - ?1105 Computer Networks? - ?1106.3.1 Image Processing? - ?1106.7 Computational Linguistics? - ?1106.8 Computer Vision? - ?1201.8 Discrete Mathematics and Combinatorics, Includes Graph Theory, Set Theory
Numerical data indexing: Percentage 1.20E+01%, Percentage 2.10E+01%, Percentage 4.00E+00%, Percentage 6.30E+01%
DOI: 10.6041/j.issn.1000-1298.2026.01.007
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
38. Investigation on Drag Force Modification Model Considering Influence of Particle Dynamic Scale for Solid-liquid Two-phase Flow
Accession number: 20260119857453
Title of translation: 考虑颗粒动态尺度影响的固液相间阻力修正模型研究
Authors: Zhang, Zichao (1); Zhang, Lihong (2, 3); Li, Yanpin (2, 3)
Author affiliation: (1) Center for Engineering Practice and Innovation, North China University of Water Resources and Electric Power, Zhengzhou; 450045, China; (2) Henan Fluid Machinery Engineering Technology Research Center, North China University of Water Resources and Electric Power, Zhengzhou; 450045, China; (3) College of Energy and Power Engineering, North China University of Water Resources and Electric Power, Zhengzhou; 450045, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 262-272
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: The drag force model of Euler-Euler two-phase flow numerical method is an important factor affecting the calculation results of the solid concentration distribution in suspended load sediment solid-liquid two-phase flow. The existing interphase drag force model does not consider the influence of the turbulence intensity change of the surrounding fluid caused by the particle dynamic scale on the movement and diffusion of particle, resulting in the calculated error of the solid concentration compared with the experimental value. To this end, the improved drag force modified model PDS — MTE — Wen — Yu model was obtained by modifying the MTE — Wen — Yu model with the correlation expression of the fluid turbulence intensity change ratio and particle dynamic scale for sediment-laden flow. The improved drag force modified model was verified by the solid-liquid two-phase flow numerical simulation in circular pipes. The results showed that for the numerical simulations of solid-liquid two-phase flow with different particle diameters, different flow velocities and different solid concentrations, the solid concentration distribution calculated by the PDS — MTE — Wen — Yu model was more consistent with the experimental values and the calculation accuracy was higher compared with that of the Wen — Yu model and MTE — Wen — Yu model. The calculation accuracy of PDS — MTE — Wen — Yu model and MTE — Wen — Yu model was basically the same in the turbulent core region, while the PDS — MTE — Wen — Yu model owned higher calculation accuracy in the near-wall region. However, the calculation error of the solid concentration distribution obtained by PDS — MTE — Wen — Yu model was gradually increased with the increase of particle diameter because of the increased inertia of large size particle and the decrease influence of turbulence intensity change on large size particle. For the pressure field of solid-liquid two-phase flow, the pressure drop calculated by the MTE — Wen — Yu model and the PDS — MTE — Wen — Yu model was basically the same. Both of them were closer to the experimental values compared with the Wen — Yu model, but there were still some errors with the experimental values. Therefore, the PDS — MTE — Wen — Yu model owned higher calculation accuracy. It was more suitable for the solid concentration calculation in the suspended load sediment solid-liquid two-phase flow with small diameter particle and the pressure field calculation of the solid-liquid two-phase flow with the small flow velocity and the low solid concentration. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 31
Main heading: Two phase flow
Controlled terms: Computational fluid dynamics? - ?Diffusion in liquids? - ?Drag? - ?Drops? - ?Electromagnetic wave attenuation? - ?Errors? - ?Numerical methods? - ?Numerical models? - ?Particle dynamics? - ?Suspended sediments ? - ?Turbulence
Uncontrolled terms: Correction function? - ?Drag force modification model? - ?Drag forces? - ?Dynamic scale? - ?Modification model? - ?Particle dynamic scale? - ?Particle dynamics? - ?Solid-liquid two-phase flow? - ?Suspended load sediment? - ?Suspended loads ? - ?Turbulence correction function? - ?Turbulence corrections
Classification code: 301.1 Fluid Flow? - ?301.1.1 Liquid Dynamics? - ?301.1.2 Gas Dynamics? - ?301.1.3 Aerodynamics (fluid flow)? - ?301.1.4 Computational Fluid Dynamics? - ?301.2.2 Electrohydrodynamics? - ?302.2 Heat Transfer? - ?483 Soil Mechanics and Foundations? - ?651 Aerodynamics? - ?711.1 Electromagnetic Waves in Different Media? - ?731.1.1 Error Handling? - ?1201.4 Applied Mathematics? - ?1201.9 Numerical Methods? - ?1301.1.1 Mechanics? - ?1301.2.1 High Energy Physics
DOI: 10.6041/j.issn.1000-1298.2026.01.024
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
39. High-throughput Phenotyping Systems for Tracking Nutrient Stress Response of Pinus Ettiottii
Accession number: 20260119857641
Title of translation: 面向追踪湿地松养分胁迫响应的高通量表型系统研究
Authors: Zhang, Huichun (1, 2); Zhou, Ziyang (1, 3); Bian, Liming (4, 5); Gao, Qi (4); Yu, Hao (1); Guo, Yuming (1); Zhou, Lei (1, 2)
Author affiliation: (1) College of Mechanical and Electronic Engineering, Nanjing Forestry University, Nanjing; 210037, China; (2) Co-innovation Center of Efficient Processing, Utilization of Forest Resources, Nanjing Forestry University, Nanjing; 210037, China; (3) Nanjing Metro Operation Co. , Ltd., Nanjing; 210000, China; (4) College of Forestry and Grassland, Nanjing Forestry University, Nanjing; 210037, China; (5) Co-innovation Center for Sustainable Forestry in Southern, Nanjing; 210037, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 149-158
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: Plant phenotyping is one of the key bottlenecks restricting the modernization of agriculture and forestry. Traditional phenotyping methods suffer from limitations such as low efficiency and complex operation, making it difficult to achieve large-scale, dynamic monitoring of plant physiological responses under environmental stress. With the rapid development of high-throughput phenotyping technology, multi-source sensor data fusion has become an important means of studying plant health and stress adaptation. However, existing systems are unable to cope with the phenomenon of varying plant height and large phenotypic variations at different growth stages, resulting in poor adaptability of data acquisition equipment and limited operational efficiency, which restricted the accurate capture of dynamic physiological responses. To address this, a gradient nutrient stress experiment (normal, mild, and severe) on slash pine was conducted, designing and constructing a self-propelled high-throughput phenotyping monitoring system. This system integrated multi-source imaging sensors such as visible light and multispectral sensors, and can automatically adjust the spatial position of the sensors according to dynamic changes in plant height, achieving efficient collection of plant phenotypic information from 360 samples. At the algorithmic level, the system introduced a genetic algorithm-recursive feature elimination with cross-validation (GA — RFECV) method to screen sensitive features highly correlated with nutrient stress, and combined this with a machine learning model to construct a classification framework for the nutrient stress response of slash pine. Experimental results showed that the GA — RFECV method improved the model’s monitoring accuracy, with the random forest (R F) model achieving accuracy, precision, recall, and Fl score of other models. Accuracy, precision, recall, and Fl score improved to 0 . 7 5 9, 0 . 7 7 0, 0 . 7 5 9, and 0. 756, respectively, validating the effectiveness of the hybrid feature selection and hyperparameter optimization strategy in plant n u t r i e n t stress classification. The self-propelled h i g h - t h r o u g h p u t p h e n o t y p i c monitoring system p r o p o s e d a n d c o n s t r u c t e d d e m o n s t r a t e d significant a d v a n t a g e s in the a c c u r a t e and efficient tracking of plant nutrient stress, providing reliable technical support and research methods for precision fertilization, stress-resistant variety b r e e d i n g, and large-scale forest nutrient monitoring. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 28
Main heading: Nutrients
Controlled terms: Agricultural machinery? - ?Data acquisition? - ?Feature Selection? - ?Forestry? - ?Genetic algorithms? - ?Learning systems? - ?Physiology? - ?Plant diseases? - ?Plants (botany)? - ?Random forests ? - ?Throughput? - ?Timber
Uncontrolled terms: High-throughput phenotyping? - ?Hybrid feature selections? - ?Hyper-parameter optimizations? - ?Monitoring platform? - ?Multi-Sources? - ?Nutrient stress? - ?Physiological response? - ?Plant height? - ?Plant phenotypic monitoring platform? - ?Stresses response
Classification code: 101.1 Biomedical Engineering? - ?103 Biology? - ?209.2 Wood and Wood Products? - ?217.5.3 Wood Structural Materials? - ?821.1 Woodlands and Forestry? - ?821.2 Agricultural Machinery and Equipment? - ?822.3 Food Products? - ?913.2 Production Control? - ?1101.2 Machine Learning? - ?1106 Computer Software, Data Handling and Applications? - ?1106.2 Data Handling and Data Processing? - ?1201.7 Optimization Techniques
DOI: 10.6041/j.issn.1000-1298.2026.01.014
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
40. Inversion Method of Chlorophyll Relative Content in Key Growth Stages of Millet Based on Unmanned Aerial Vehicle Satellite Image Scale Conversion
Accession number: 20260119857613
Title of translation: 基于无人机-卫星影像尺度转换的谷子关键生育期叶绿素相对含量反演方法
Authors: Xie, Jiaxi (1); Zhao, Li (2); Zhou, Zixuan (3); Niu, Yichun (2); Song, Xinming (1); Yu, Jie (2)
Author affiliation: (1) College of Resources and Environmental Sciences, Hebei Agricultural University, Baoding; 071000, China; (2) College of Land and Resources, Hebei Agricultural University, Baoding; 071000, China; (3) College of Mechanical and Electrical Engineering, Hebei Agricultural University, Baoding; 071000, China
Source title: Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery
Abbreviated source title: Nongye Jixie Xuebao
Volume: 57
Issue: 1
Issue date: January 2026
Publication year: 2026
Pages: 169-179
Language: Chinese
ISSN: 10001298
CODEN: NUYCA3
Document type: Journal article (JA)
Publisher: Chinese Society of Agricultural Machinery
Abstract: SPAD is a key indicator for evaluating the growth potential and nitrogen nutrition status of millet. To achieve high-precision and wide-coverage dynamic monitoring of the relative chlorophyll content of millet during key growth stages (jointing stage, heading stage, filling stage, and maturity stage), taking the field scale as the research area and integrated multi-source remote sensing data from unmanned aerial vehicles (UAV) and satellites, an SPAD inversion model for optimizing long short-term memory neural networks (LSTM) based on the improved grey wolf optimization algorithm (IGWO) was proposed. During the research process, UAV remote sensing data, satellite remote sensing data and ground point-like SPAD measured values of each key growth period were obtained simultaneously. Through the longitude and latitude coordinates of the ground measured sample points, the point-like SPAD values were spatially matched and associated with the UAV image pixels and satellite image pixels at the corresponding positions to construct an image-measured corresponding data set. The point spread function (PSF) method was adopted for scale upward inference of UAV images. The mean-variance method was combined to preliminarily correct the satellite data. Then the support vector regression (SVR) was used to establish a collaborative correction model for multi-source remote sensing data of UAV and satellite. Based on the corrected high-precision satellite data, the spectral characteristic parameters sensitive to SPAD were screened through Pearson correlation analysis and XG — Boost feature importance ranking. The nonlinear convergence factor was introduced to enhance the hyperparameter optimization ability of the grey wolf optimization algorithm, and finally the IGWO — LSTM SPAD inversion model was constructed. The results showed that compared with other resampling methods, the point spread function method had the least information loss during the scale-up process. The average value and standard deviation of the processed image pixels were 0. 103 and 0 . 0 5 6, respectively. The satellite remote sensing data corrected by the histogram matching method effectively retained the original spectral shape, and the spectral angle mapping value (SAM) was as low as 0. 062°. The SVR algorithm had the highest model accuracy in the B / G / R / N I R bands during the critical growth period, and the determination coefficients of the four bands were 0. 920, 0. 961, 0. 963 and 0. 900, respectively. The coefficient of determination (R ) of the IGWO - LSTM model in the inversion of SPAD during the critical growth period reached 0. 985, and the root mean square error (RMSE) was 0. I l l, which was significantly superior to that of traditional models such as partial least squares regression (PLSR), BP neural network (BPNN), and random forest regression (RF) . The research achieved the precise dynamic inversion of SPAD during the key growth period of millet, which was of great significance for the intelligent monitoring of crop growth and the precise application of nitrogen fertilizer. ? 2026 Chinese Society of Agricultural Machinery. All rights reserved.
Number of references: 34
Main heading: Unmanned aerial vehicles (UAV)
Controlled terms: Antennas? - ?Correlation methods? - ?Forestry? - ?Image enhancement? - ?Long short-term memory? - ?Photomapping? - ?Pixels? - ?Remote sensing? - ?Satellite imagery? - ?Support vector regression
Uncontrolled terms: Aerial vehicle? - ?Collaborative correction model? - ?Correction models? - ?Gray wolves? - ?Millet? - ?Optimization algorithms? - ?Satellite remote sensing? - ?Scale conversions? - ?SPAD? - ?Unmanned aerial vehicle
Classification code: 405.3 Surveying? - ?652.1 Aircraft? - ?655.1 Satellites? - ?716.5.1 Antennas? - ?731.1 Control Systems? - ?742.1 Photography? - ?821.1 Woodlands and Forestry? - ?1101.2 Machine Learning? - ?1101.2.1 Deep Learning? - ?1106.3.1 Image Processing? - ?1106.8 Computer Vision? - ?1202.2 Mathematical Statistics
DOI: 10.6041/j.issn.1000-1298.2026.01.016
Compendex references: YES
Database: Compendex
Data Provider: Engineering Village
Compilation and indexing terms, Copyright 2026 Elsevier Inc.
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