基于WSN的温室CO 2 气肥优化调控系统研究
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国家自然科学基金资助项目(31271619)、高等学校博士学科点专项科研基金资助项目(20110008130006)和中央高校基本科研业务费专项资金资助项目(2015XD004)


Design of CO 2 Fertilizer Optimizing Control System on WSN
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    摘要:

    CO 2是植物进行光合作用的重要原料,合理增施可提高作物的光合速率。为实现温室CO 2气肥的精细管理,设计了基于无线传感器网络(WSN)的温室CO 2气肥调控系统。该系统由监控节点、智能网关和远程管理软件组成,其中监控节点能够自动实时监测温室环境信息(CO 2浓度、光照强度、空气温湿度和土壤温湿度),并控制CO 2增施气阀的开关;智能网关不仅能实现监控节点与远程管理软件之间的通信,还可在本地实现对温室环境信息的显示与存储,以及CO 2增施调控等操作;远程管理软件除了具备基本的数据接收、存储和查询功能外,还可通过建立的光合速率预测模型对CO 2气肥实现远程自动调控。本文以番茄为研究对象,采用开发的系统实时获取环境信息,使用LI-6400XT光合速率仪获取单叶净光合速率,建立了基于支持向量机(SVM)的番茄光合速率预测模型。为了提高预测模型的通用性,实验将苗后期番茄在4个CO 2浓度梯度进行培育,其中C1、C2、C3分别进行700、 1 000 、1 300 μmol/mol浓度的CO 2增施,CK为对照组(CO 2浓度约为450 μmol/mol)。数据分析采用SVM算法,以多种环境信息作为输入变量,以单叶净光合速率作为输出变量,得到光合速率预测模型。经过测试与验证,CO 2浓度调控系统能够稳定可靠地采集温室环境信息,适合应用在温室环境中;光合速率模型预测值和实测值相关系数为0.981 5,均方根误差为1.092 5 μmol/(m 2 ·s),具有较好的预测效果,为温室番茄CO 2定量增施调控提供了依据。

    Abstract:

    Abstract: Carbon dioxide (CO 2) is an important raw material of the plant photosynthesis. Increasing CO 2 fertilizer rationally can improve the net photosynthetic rate of plant leaf, and further improve crop yield and quality. To achieve precision management of CO 2 fertilizer in greenhouse, a greenhouse CO 2 fertilizer optimizing control system based on wireless sensor network (WSN) was designed and developed. The whole system includes four monitoring and controlling nodes, an intelligent gateway and a remote management software. The monitoring and controlling node, which connected to sensors and an electromagnet, can real time monitor greenhouse environmental parameters and control the switch of CO 2 source according to the demand of crop. The intelligent gateway can process and transmit the data and commands between nodes and remote management software. It can also storage and display environment parameters locally. Besides, user can control the CO 2 source by gateway. The remote management software, which embeds photosynthetic rate prediction model, can not only process and transmit the data, but also control CO 2 fertilizer remotely. To achieve precision management of CO 2 fertilizer supplement, it was necessary to build an accurate and reliable net photosynthetic rate prediction model. The paper measured environment parameters by the system above mentioned, and obtained single-leaf net photosynthetic rate by LI-6400XT photosynthesis analyzer. Then a photosynthetic rate prediction model based on SVM was established. In order to improve the generality of prediction model, tomatoes in late seedling stage were cultivated in four different fertilizer levels ((700±50)μmol/mol (C1), (1 000±50)μmol/mol (C2), (1 300±50)μmol/mol (C3), ambient about 450 μmol/mol (CK)). The photosynthetic rate prediction model was established by support vector machine (SVM). The environment parameters were used as input variables, and the photosynthetic rate was taken as output variable. The performances of designed system and prediction model were evaluated. The system can work stably and reliably, therefore it can be used to monitor environment information and control the CO 2 fertilizer in solar greenhouse. The prediction results of the model showed that R between predicted and measured data was 0.981 5 and RMSE was 1.092 5 μmol/(m 2 ·s). According to the analysis, it was concluded that the prediction model can be good used as the basis of the quantitative regulation of CO 2 fertilization to tomato plants in greenhouse.

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季宇寒,李婷,张漫,沙莎.基于WSN的温室CO 2 气肥优化调控系统研究[J].农业机械学报,2015,46(S1):201-207.

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  • 收稿日期:2015-10-28
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  • 在线发布日期: 2015-12-30
  • 出版日期: 2015-12-31