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A methodology for estimating Leaf Area Index by assimilating remote sensing data into crop model based on temporal and spatial knowledge

机译:基于时空知识将遥感数据同化为作物模型的叶面积指数估算方法

摘要

In this paper, a methodology for Leaf Area Index (LAI) estimating was proposed by assimilating remote sensed data into crop model based on temporal and spatial knowledge. Firstly, sensitive parameters of crop model were calibrated by Shuffled Complex Evolution method developed at the University of Arizona (SCE-UA) optimization method based on phenological information, which is called temporal knowledge. The calibrated crop model will be used as the forecast operator. Then, the Taylor's mean value theorem was applied to extracting spatial information from the Moderate Resolution Imaging Spectroradiometer (MODIS) multi-scale data, which was used to calibrate the LAI inversion results by A two-layer Canopy Reflectance Model (ACRM) model. The calibrated LAI result was used as the observation operator. Finally, an Ensemble Kalman Filter (EnKF) was used to assimilate MODIS data into crop model. The results showed that the method could significantly improve the estimation accuracy of LAI and the simulated curves of LAI more conform to the crop growth situation closely comparing with MODIS LAI products. The root mean square error (RMSE) of LAI calculated by assimilation is 0.9185 which is reduced by 58.7% compared with that by simulation (0.3795), and before and after assimilation the mean error is reduced by 92.6% which is from 0.3563 to 0.0265. All these experiments indicated that the methodology proposed in this paper is reasonable and accurate for estimating crop LAI.
机译:本文提出了一种基于时空知识将遥感数据同化为作物模型的叶面积指数(LAI)估计方法。首先,基于物候信息,利用物候信息,利用亚利桑那大学开发的随机混合进化方法(SCE-UA),对作物模型的敏感参数进行了标定。校准后的作物模型将用作预测算子。然后,将泰勒平均值定理应用于从中等分辨率成像光谱仪(MODIS)多尺度数据中提取空间信息,该数据用于通过两层冠层反射模型(ACRM)模型校准LAI反演结果。校准后的LAI结果用作观察算子。最后,使用集成卡尔曼滤波器(EnKF)将MODIS数据同化为作物模型。结果表明,与MODIS LAI产品相比,该方法可以显着提高LAI的估计精度,并且LAI的模拟曲线更符合作物生长情况。通过同化计算得出的LAI的均方根误差(RMSE)为0.9185,与通过仿真计算得到的均方根误差(0.3795)相比降低了58.7%,并且在同化前后,平均误差降低了92.6%,从0.3563降低至0.0265。所有这些实验表明,本文提出的方法是合理和准确的,估计作物的LAI。

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