农田生态系统碳通量遥感估算方法研究
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国家自然科学基金项目(41801245)和国家重点研发计划中英国际合作项目 (2019YFE0125500)


Remote Sensing Estimation Method of Carbon Flux in Farmland Ecosystem
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    摘要:

    为实现农田生态系统碳通量动态监测,提出一种基于Landsat系列多源遥感数据的农田生态系统碳通量估算方法。以美国东北部内布拉斯加州大学农业研发中心的3块试验田地为研究区域,并结合AmeriFlux公开的对应通量站点数据进行后续建模分析。从气候变量、土壤性质、植物性状3方面综合出发,优选与农田生态系统碳通量密切相关的遥感因子,构建覆盖农田生态过程关键环节的全遥感要素数据集。随后,构建基于随机森林(Random forest,RF)的农田碳通量回归预测模型,相比于岭回归模型和套索模型,该模型在农田生态系统碳通量估算方面效果更优,其决定系数(Coefficient of determination,R2)达到0.94,均方根误差(RMSE)为4.281g/(m2·d)。基于随机森林模型进行因子的重要性分析可知,DVI、 NDWI、MSAVI、NRI、NDVI对碳通量估算的贡献度分别为35.6%、25.8%、12.2%、7.8%、5.2%。在以上研究基础上,通过农田生态系统碳收支时空演变特性分析可知,内布拉斯加州2013年作物生育期内的7、8月时农田碳汇能力最强,在种植初期大豆和玉米均呈现弱碳源,且玉米的碳源能力更强,在生长高峰期时玉米和大豆均呈碳汇,且玉米碳汇能力更强。本研究为农田生态系统碳收支精准估算,进而指导农业生产提供理论支持。

    Abstract:

    In order to realize the dynamic monitoring of farmland ecosystem carbon flux, a method for estimating farmland ecosystem carbon flux based on Landsat series multi-source remote sensing data was proposed. Three experimental fields of agricultural Research and Development Center of University of Nebraska, northeastern United States were selected as the study area, and the corresponding flux site data published by AmeriFlux was used for subsequent modeling analysis. Based on the comprehensive analysis of climate variables, soil properties and plant traits, remote sensing factors closely related to carbon flux of farmland ecosystem were selected, and a full remote sensing factor data set covering key links of farmland ecological process was constructed. Then, the farmland carbon flux regression prediction model based on random forest was constructed. Compared with the ridge regression model and the lasso model, the model was more effective in estimating farmland ecosystem carbon flux, with a coefficient of determination of 0.94 and a root mean square error of 4.281g/(m2·d). According to the importance analysis of factors based on random forest model, the contributions of DVI, NDWI, MSAVI, NRI and NDVI to carbon flux estimation were 35.6%, 25.8%, 12.2%, 7.8% and 5.2%, respectively. On the basis of above research, through the farmland ecosystem carbon balance space-time evolution characteristics analysis, the farmland carbon sink capacity was the strongest in 2013 when the crop growth was in the period of July and August in Nebraska, at the beginning of the planting soybeans and corn were rendered weak carbon source, and the carbon source ability was stronger for corn, in growth peak of corn and soybeans were in carbon sink, and the carbon sequestration ability was stronger for corn. The research result can provide theoretical support for accurately estimating the carbon budget of farmland ecosystems and guiding agricultural production.

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吴江梅,田泽众,张海洋,刘凯迪,李民赞,张瑶.农田生态系统碳通量遥感估算方法研究[J].农业机械学报,2022,53(s1):224-231. WU Jiangmei, TIAN Zezhong, ZHANG Haiyang, LIU Kaidi, LI Minzan, ZHANG Yao. Remote Sensing Estimation Method of Carbon Flux in Farmland Ecosystem[J]. Transactions of the Chinese Society for Agricultural Machinery,2022,53(s1):224-231.

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  • 收稿日期:2022-06-11
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  • 在线发布日期: 2022-11-10
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