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One-dimensional soil temperature assimilation experiment based on unscented particle filter and Common Land Model

机译:基于无创粒子过滤器和普通陆地模型的一维土壤温度同化实验

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Data assimilation is an efficient way to improve the simulation/prediction accuracy in many fields of geosciences especially in meteorological and hydrological applications. This study takes unscented particle filter (UPF) as an example to test its performance at different two probability distribution, Gaussian and Uniform distributions with two different assimilation frequencies experiments (1) assimilating hourly in situ soil surface temperature, (2) assimilating the original Moderate Resolution Imaging Spectroradiometer (MODIS) Land Surface Temperature (LST) once per day. The numerical experiment results show that the filter performs better when increasing the assimilation frequency. In addition, UPF is efficient for improving the soil variables (e.g., soil temperature) simulation/prediction accuracy, though it is not sensitive to the probability distribution for observation error in soil temperature assimilation.
机译:数据同化是提高地球科学许多领域的模拟/预测精度的有效方法,尤其是气象和水文应用。本研究采用无人的粒子滤波器(UPF)作为在不同的两个概率分布,高斯和均匀分布下测试其性能,具有两种不同的同化频率实验(1)每小时地原位土壤表面温度,(2)同化原始中等分辨率的成像光谱辐射计(MODIS)每天陆地温度(LST)。数值实验结果表明,在增加同化频率时,过滤器更好地执行更好。此外,UPF对于改善土壤变量(例如,土壤温度)模拟/预测精度,虽然它对土壤温度同化中观察误差的概率分布不敏感。

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