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Estimation of Winter Wheat Yield in Arid and Semiarid Regions Based on Assimilated Multi-Source Sentinel Data and the CERES-Wheat Model

机译:基于同化多源哨碱数据及CERES - 小麦模型的干旱和半干旱区冬小麦产量的估算

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摘要

The farmland area in arid and semiarid regions accounts for about 40% of the total area of farmland in the world, and it continues to increase. It is critical for global food security to predict the crop yield in arid and semiarid regions. To improve the prediction of crop yields in arid and semiarid regions, we explored data assimilation-crop modeling strategies for estimating the yield of winter wheat under different water stress conditions across different growing areas. We incorporated leaf area index (LAI) and soil moisture derived from multi-source Sentinel data with the CERES-Wheat model using ensemble Kalman filter data assimilation. According to different water stress conditions, different data assimilation strategies were applied to estimate winter wheat yields in arid and semiarid areas. Sentinel data provided LAI and soil moisture data with higher frequency (<14 d) and higher precision, with root mean square errors (RMSE) of 0.9955 m2 m−2 and 0.0305 cm3 cm−3, respectively, for data assimilation-crop modeling. The temporal continuity of the CERES-Wheat model and the spatial continuity of the remote sensing images obtained from the Sentinel data were integrated using the assimilation method. The RMSE of LAI and soil water obtained by the assimilation method were lower than those simulated by the CERES-Wheat model, which were reduced by 0.4458 m2 m−2 and 0.0244 cm3 cm−3, respectively. Assimilation of LAI independently estimated yield with high precision and efficiency in irrigated areas for winter wheat, with RMSE and absolute relative error (ARE) of 427.57 kg ha−1 and 6.07%, respectively. However, in rain-fed areas of winter wheat under water stress, assimilating both LAI and soil moisture achieved the highest accuracy in estimating yield (RMSE = 424.75 kg ha−1, ARE = 9.55%) by modifying the growth and development of the canopy simultaneously and by promoting soil water balance. Sentinel data can provide high temporal and spatial resolution data for deriving LAI and soil moisture in the study area, thereby improving the estimation accuracy of the assimilation model at a regional scale. In the arid and semiarid region of the southeastern Loess Plateau, assimilation of LAI independently can obtain high-precision yield estimation of winter wheat in irrigated area, while it requires assimilating both LAI and soil moisture to achieve high-precision yield estimation in the rain-fed area.
机译:干旱和半干旱地区的农田面积占世界农田总面积的约40%,并继续增加。全球粮食安全至关重要,以预测干旱和半干旱地区的作物产量。为了改善干旱和半干旱地区作物产量的预测,我们探讨了数据同化作物模拟策略,用于估算不同生长区域不同水胁迫条件下的冬小麦的产量。使用Ensemble Kalman滤波器数据同化,我们将叶面积指数(LAI)和来自多源哨照数据的土壤水分与Ceres-Mid Model一起融合。根据不同的水胁迫条件,应用不同的数据同化策略来估算干旱和半干旱地区的冬小麦产量。 Sentinel数据提供了赖频(<14d)和更高精度的赖和土壤湿度数据,具有0.9955m2 m-2和0.0305cm 3cm-3的根均值误差(Rmse),用于数据同化作物造型。使用同化方法集成了从Sentinel数据获得的Ceres-小麦模型的时间连续性和从Sentinel数据获得的遥感图像的空间连续性。通过同化方法获得的赖和土壤水的RMSE分别低于CERES-小麦模型模拟的土壤水分,分别减少0.4458m 2 M-2和0.0244cm 3cm-3。 LAI的同化独立估计冬小麦灌溉区域高精度和效率的产量,CRMSE和绝对相对误差分别为427.57 kg HA-1和6.07%。然而,在水分胁迫下的冬小麦的雨水区域,通过改变树冠的生长和发展,同化赖赖和土壤水分估算产量(RMSE = 424.75千克HA-1,= 9.55%)实现了最高的准确性同时,通过促进土壤水分平衡。 Sentinel数据可以提供用于在研究区域中推导赖和土壤水分的高时和空间分辨率数据,从而提高了区域规模的同化模型的估计准确性。在东南黄土高原的干旱和半干旱地区,莱的同化独立可以获得灌溉面积冬小麦的高精度产量估计,同时它需要吸收赖和土壤水分,以达到雨中的高精度产量估计 - 美联储地区。

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