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首页> 外文期刊>Agricultural and Forest Meteorology >Assimilating a synthetic Kalman filter leaf area index series into the WOFOST model to improve regional winter wheat yield estimation
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Assimilating a synthetic Kalman filter leaf area index series into the WOFOST model to improve regional winter wheat yield estimation

机译:将合成的卡尔曼滤波叶面积指数系列纳入WOFOST模型,以改善区域冬小麦产量估算

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The scale mismatch between remote sensing observations and state variables simulated by crop growth models decreases the reliability of crop yield estimates. To overcome this problem, we implemented a two-step data-assimilation approach: first, we generated a time series of 30-m-resolution leaf area index (LAI) by combining Moderate Resolution Imaging Spectroradiometer (MODIS) data and three Landsat TM images with a Kalman filter algorithm (the synthetic KF LAI series); second, the time series were assimilated into the WOFOST crop growth model to generate an ensemble Kalman filter LAI time series (the EnKF-assimilated LAI series). The synthetic EnKF LAI series then drove the WOFOST model to simulate winter wheat yields at 1-km resolution for pixels with wheat fractions of at least 50%. The county-level aggregated yield estimates were compared with official statistical yields. The synthetic KF LAI time series produced a more realistic characterization of LAI phenological dynamics. Assimilation of the synthetic KF LAI series produced more accurate estimates of regional winter wheat yield (R-2 = 0.43; root-mean-square error (RMSE) = 439 kg ha(-1)) than three other approaches: WOFOST without assimilation (determination coefficient R-2 = 0.14; RMSE= 647 kg ha(-1)), assimilation of Landsat TM LAI (R-2 = 0.37; RMSE = 472 kg ha(-1)), and assimilation of S-G filtered MODIS LAI (R-2 = 0.49; RMSE = 1355 kg ha(-1)). Thus, assimilating the synthetic KF LAI series into the WOFOST model with the EnKF strategy provides a reliable and promising method for improving regional estimates of winter wheat yield. (C) 2015 Elsevier B.V. All rights reserved.
机译:遥感观测值与作物生长模型模拟的状态变量之间的尺度失配降低了作物产量估算的可靠性。为了克服这个问题,我们实施了两步数据同化方法:首先,我们通过结合中等分辨率成像光谱仪(MODIS)数据和三个Landsat TM图像生成了一个30 m分辨率的叶面积指数(LAI)的时间序列。带有卡尔曼滤波算法(合成KF LAI系列);其次,将时间序列同化到WOFOST作物生长模型中,以生成集合卡尔曼滤波器LAI时间序列(EnKF辅助的LAI系列)。然后,合成的EnKF LAI系列驱动WOFOST模型,以模拟分辨率为1 km的小麦比例至少为50%的冬小麦单产。将县一级的总产量估算值与官方统计的产量进行了比较。合成的KF LAI时间序列对LAI物候动力学进行了更为现实的表征。与其他三种方法相比,对合成的KF LAI系列进行同化处理可以更准确地估算区域冬小麦的产量(R-2 = 0.43;均方根误差(RMSE)= 439 kg ha(-1)):确定系数R-2 = 0.14; RMSE = 647 kg ha(-1)),Landsat TM LAI的同化(R-2 = 0.37; RMSE = 472 kg ha(-1)),以及SG过滤的MODIS LAI的同化( R-2 = 0.49; RMSE = 1355 kg ha(-1))。因此,用EnKF策略将合成的KF LAI系列同化到WOFOST模型中,为改善区域冬小麦产量估算提供了可靠且有希望的方法。 (C)2015 Elsevier B.V.保留所有权利。

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