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Regional Yield, Estimation of Summer Maize Based on Assimilation of RemotelySensed LAI into EPIC Model

机译:基于史史史型史诗模型的分析基于史史模型的区域产量,夏季玉米估计

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In order to acquire more accurate crop yield information, the global optimization algorithm SCE-UA was used to integrate leaf area index derived from remote sensing with crop growth model EPIC to simulate regional summer maize yield and field management information in Huanghuaihai Plain in China. The results showed that the mean relative error of estimated summer maize yield was 4.37% and RMSE was 0.44t/ha. Compared with the actual field observation data, the mean relative error of simulated sowing date, plant density and net- nitrogen fertilization application rate was 1.85%, -7.78% and -10.60% respectively. These above simulated results could meet need of accuracy of crop growth simulation and yield estimation at regional scale. It was proved that integrating remotely sensed LAI with EPIC model based on SCE-UA for simulating regional summer maize yield ,and field management information was feasible and reliable.
机译:为了获得更准确的作物产量信息,全局优化算法SCE-UA用于整合从遥感的叶面积指数与作物生长模型史诗模拟中国黄淮海平原区域夏季玉米产量和现场管理信息。结果表明,估计夏季玉米产量的平均相对误差为4.37%,RMSE为0.44t / ha。与实际场观察数据相比,模拟播期,植物密度和网络施肥率的平均相对误差分别为1.85%,-7.78%和-10.60%。上述模拟结果可以满足区域规模的作物生长模拟和产量估计的准确性。事实证明,基于SCE-UA的史诗模型将远程感测的LAI与用于模拟区域夏季玉米产量,现场管理信息可行可靠。

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