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Fine-tuning satellite-based rainfall estimates

机译:微调卫星的降雨估计

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摘要

Rainfall datasets are available from various sources, including satellite estimates and ground observation. The locations of ground observation scatter sparsely. Therefore, the use of satellite estimates is advantageous, because satellite estimates can provide data on places where the ground observations do not present. However, in general, the satellite estimates data contain bias, since they are product of algorithms that transform the sensors response into rainfall values. Another cause may come from the number of ground observations used by the algorithms as the reference in determining the rainfall values. This paper describe the application of bias correction method to modify the satellite-based dataset by adding a number of ground observation locations that have not been used before by the algorithm. The bias correction was performed by utilizing Quantile Mapping procedure between ground observation data and satellite estimates data. Since Quantile Mapping required mean and standard deviation of both the reference and the being-corrected data, thus the Inverse Distance Weighting scheme was applied beforehand to the mean and standard deviation of the observation data in order to provide a spatial composition of them, which were originally scattered. Therefore, it was possible to provide a reference data point at the same location with that of the satellite estimates. The results show that the new dataset have statistically better representation of the rainfall values recorded by the ground observation than the previous dataset.
机译:降雨数据集可从各种来源提供,包括卫星估算和地面观察。地面观察的位置稀疏地散落。因此,使用卫星估计是有利的,因为卫星估计可以在地面观察不存在的地方提供数据。然而,通常,卫星估计数据包含偏置,因为它们是将传感器转换为降雨量值的算法的算法。另一个原因可能来自算法使用的地面观测的数量作为确定降雨量值的参考。本文描述了偏置校正方法通过添加算法之前未使用的多个接地观察位置来修改基于卫星的数据集。通过利用地面观察数据和卫星估计数据之间的定量映射过程来执行偏置校正。由于定量映射所需的参考和校正数据的平均值和标准偏差,因此预先将逆距离加权方案应用于观察数据的平均值和标准偏差,以便提供它们的空间组成最初分散。因此,可以在与卫星估计的相同位置提供参考数据点。结果表明,新数据集具有比上一个数据集记录的地面观察记录的降雨值的统计上更好地表示。

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