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RICE YIELD ESTIMATION THROUGH ASSIMILATING SATELLITE DATA INTO A CROP SIMUMLATION MODEL

机译:通过同化卫星数据将水稻产量估计成为作物仿真模型

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Rice is globally the most important food crop, feeding approximately half of the world's population, especially in Asia where around half of the world's poorest people live. Thus, advanced spatiotemporal information of rice crop yield during crop growing season is critically important for crop management and national food policy making. The main objective of this study was to develop an approach to integrate remotely sensed data into a crop simulation model (DSSAT) for rice yield estimation in Taiwan. The data assimilation was processed to integrate biophysical parameters into DSSAT model for rice yield estimation using the particle swarm optimization (PSO) algorithm. The cost function was constructed based on the differences between the simulated leaf area index (LAI) and MODIS LAI, and the optimization process starts from an initial parameterization and accordingly adjusts parameters (e.g., planting date, planting population, and fertilizer amount) in the crop simulation model. The fitness value obtained from the cost function determined whether the optimization algorithm had reached the optimum input parameters using a user-defined tolerance. The results of yield estimation compared with the government's yield statistics indicated the root mean square error (RMSE) of 11.7% and mean absolute error of 9.7%, respectively. This study demonstrated the applicability of satellite data assimilation into a crop simulation model for rice yield estimation, and the approach was thus proposed for crop yield monitoring purposes in the study region.
机译:米饭是全球最重要的食物作物,喂养大约一半的世界人口,特别是在世界上大约一半的人住的亚洲。因此,在作物生长季节期间稻米作物产量的晚期时空信息对于作物管理和国家粮食政策制定至关重要。本研究的主要目的是开发一种将远程感测数据集成到台湾水稻产量估计的作物仿真模型(DSSAT)中。处理数据同化以使用粒子群优化(PSO)算法将生物物理参数集成到DSSAT模型中。基于模拟叶面积指数(LAI)和MODIS LAI之间的差异构建了成本函数,并且优化过程从初始参数化开始,并因此调整参数(例如,种植日期,种植种群和肥料量)作物仿真模型。从成本函数获得的适应值确定了优化算法是否使用用户定义的公差达到了最佳输入参数。与政府收益统计量相比,产量估计结果表明了11.7%的根均线误差(RMSE)分别为9.7%的平均误差。本研究证明了卫星数据同化对水稻产量估计作物仿真模型的适用性,因此提出了该研究区域作物产量监测目的的方法。

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