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ASSIMILATION OF FIELD MEASURED LAI INTO CROP GROWTH MODEL BASED ON SCE-UA OPTIMIZATION ALGORITHM

机译:基于SCE-UA优化算法的田间测量赖斯测量赖的同化

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Assimilating external data into crop growth model to improve accuracy of crop growth monitoring and yield estimation has been being a research focus in recent years. In this paper, the shuffled complex evolution (SCE-UA) global optimization algorithm was used to assimilate field measured LAI into EPIC model to simulate yield, sowing date and nitrogen fertilizer application amount of summer maize in Huanghuaihai Plain in China. The results showed that RMSE between simulated yield and field measured yield of summer maize was 0.84 t ha~(-1) and the R~2 was only 0.033 without external data assimilation. While the performances of EPIC model of simulating yield, sowing date and nitrogen fertilizer application amount of summer maize was better through assimilating field measured LAI into the EPIC model. The RMSE of between simulated yield and field measured yield of summer maize was 0.60 t ha~(-1) and the R~2 was 0.5301. The relative error between simulated sowing date and real sowing date of summer maize was 2.28%. On the simulation of nitrogen fertilizer application rate, the relative error was -6.00% compared with local statistical data. These above accuracy could meet the need of crop growth monitoring and yield estimation at regional scale. It proved that assimilating field measured LAI into crop growth model based on SCE-UA optimization algorithm to monitor crop growth and estimate crop yield was feasible.
机译:将外部数据吸收到作物生长模型,以提高作物的准确性,近年来一直是研究重点。在本文中,随机播放的复杂演化(SCE-UA)全局优化算法用于使史史模型的雷丁模型同化,以模拟中国夏玉米夏玉米产量,播种日和氮肥应用量。结果表明,夏玉米的模拟产量和场测量产率之间的RMSE为0.84 t ha〜(-1),R〜2仅为0.033,没有外部数据同化。虽然夏季玉米模拟产量,播种日期和氮肥施用量的史诗模型的性能通过吸收的场测量Lai进入史史模型,更好。夏玉米的模拟产量和场测量产率之间的RMSE为0.60 t ha〜(-1),R〜2为0.5301。模拟播种日期与夏季玉米实际播种日期之间的相对误差为2.28%。在氮肥施用率的模拟上,与局部统计数据相比,相对误差为-6.00%。这些上述准确性可以满足区域规模的作物生长监测和产量估计的需求。事实证明,基于SCE-UA优化算法来监测作物生长和估计作物产量的作物生长模型中测量了赖斯的作物生长模型是可行的。

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