Cotton growth monitoring and yield estimation based on assimilation of remote sensing data and crop growth model

Yepei Chen, X. Mei, Junyi Liu
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引用次数: 6

Abstract

Predicting cotton growth and yield accurately is significantly important to farmland management and sustainable development of agriculture. Remote sensing and crop growth model both have its advantages in crop growth monitoring and yield estimation, however, they also have limitations in mechanism or acquisition of the input parameters. This study combines the satellite remote sensing data and crop growth models by using data assimilation technique. The research uses global optimization algorithm called shuffled complex evolution-University of Arizona (SCE-UA) to constantly inverse and correct the values of model input parameters with the leaf area index (LAI) as the combination point, selects decision support system for agrotrchnology transfer (DSSAT) to build growth model of cotton in Jianghan plain in the middle reaches of the Yangtze River. The results of the research show that the precision of simulation is effectively improved after cotton model is assimilated by remote sensing data.
基于遥感数据同化和作物生长模型的棉花生长监测与产量估算
准确预测棉花生长和产量对农田经营和农业可持续发展具有重要意义。遥感和作物生长模型在作物生长监测和产量估算方面都有各自的优势,但在输入参数的获取机制和获取上都存在一定的局限性。本研究采用数据同化技术,将卫星遥感数据与作物生长模型相结合。本研究以叶面积指数(LAI)为结合点,采用全局优化算法(SCE-UA)对模型输入参数进行不断反演和修正,选择农业技术转移决策支持系统(DSSAT)构建长江中游江汉平原棉花生长模型。研究结果表明,遥感数据同化棉花模型后,有效地提高了模拟精度。
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