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Evaluating remotely sensed rainfall estimates using nonlinear mixed models and geographically weighted regression

机译:使用非线性混合模型和地理加权回归评估遥感降雨估计

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摘要

This article evaluates an infrared-based satellite algorithm for rainfall estimation, the Convective Stratiform technique, over Mediterranean. Unlike a large number of works that evaluate remotely sensed estimates concentrating on global measures of accuracy, this work examines the relationship between ground truth and satellitOe derived data in a local scale. Hence, we examine the fit of ground truth and remotely sensed data on a widely adopted probability distribution for rainfall totals - the mixed log-normal distribution - per measurement location. Moreover, we test for spatial nonstationarity in the relationship between in situ observed and satellite-estimated rainfall totals. The former investigation takes place via using recent algorithms that estimate nonlinear mixed models whereas the latter uses geographically weighted regression.
机译:本文评估了一种基于红外的卫星算法,用于估计地中海上空的对流层状技术。与大量评估遥感估计值以全球准确性度量为重点的工作不同,这项工作在本地范围内检查了地面真相和卫星衍生数据之间的关系。因此,我们在每个测量位置针对广泛使用的降雨总量概率分布(混合对数正态分布)检验了地面真实情况和遥感数据的拟合度。此外,我们在实地观测与卫星估算的降雨总量之间的关系中测试了空间非平稳性。前者是通过使用估计非线性混合模型的最新算法进行的,而后者则使用地理加权回归。

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