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Optimal ensemble size of ensemble Kalman filter in sequential soil moisture data assimilation

机译:连续土壤水分数据同化中集合Kalman滤波器的最优集合大小。

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The ensemble Kalman filter (EnKF) has been extensively applied in sequential soil moisture data assimilation to improve the land surface model performance and in turn weather forecast capability. Usually, the ensemble size of EnKF is determined with limited sensitivity experiments. Thus, the optimal ensemble size may have never been reached. In this work, based on a series of mathematical derivations, we demonstrate that the maximum efficiency of the EnKF for assimilating observations into the models could be reached when the ensemble size is set to 12. Simulation experiments are designed in this study under ensemble size cases 2, 5, 12, 30, 50, 100, and 300 to support the mathematical derivations. All the simulations are conducted from 1 June to 30 September 2012 over southeast USA (from similar to 90 degrees W, 30 degrees N to similar to 80 degrees W, 40 degrees N) at 25 km resolution. We found that the simulations are perfectly consistent with the mathematical derivation. This optical ensemble size may have theoretical implications on the implementation of EnKF in other sequential data assimilation problems.
机译:集成卡尔曼滤波器(EnKF)已广泛应用于顺序土壤水分数据同化中,以改善土地表面模型的性能并进而提高天气预报的能力。通常,EnKF的合奏大小是通过有限的灵敏度实验确定的。因此,可能从未达到最佳的合奏大小。在这项工作中,基于一系列数学推导,我们证明了当集合大小设置为12时,可以达到EnKF将观测值同化到模型中的最大效率。 2、5、12、30、50、100和300,以支持数学推导。所有模拟都是在2012年6月1日至9月30日在美国东南部(分辨率从大约90度,北纬30度到大约80度,北纬40度)在25 km分辨率下进行的。我们发现仿真与数学推导完全一致。此光学合奏大小可能会对在其他顺序数据同化问题中实现EnKF具有理论意义。

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