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A Comparison of Different Regression Algorithms for Downscaling Monthly Satellite-Based Precipitation over North China

机译:华北地区逐月卫星降水降尺度的不同回归算法比较

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Environmental monitoring of Earth from space has provided invaluable information for understanding land–atmosphere water and energy exchanges. However, the use of satellite-based precipitation observations in hydrologic and environmental applications is often limited by their coarse spatial resolutions. In this study, we propose a downscaling approach based on precipitation–land surface characteristics. Daytime land surface temperature, nighttime land surface temperature, and day–night land surface temperature differences were introduced as variables in addition to the Normalized Difference Vegetation Index (NDVI), the Digital Elevation Model (DEM), and geolocation (longitude, latitude). Four machine learning regression algorithms, the classification and regression tree (CART), the k-nearest neighbors (k-NN), the support vector machine (SVM), and random forests (RF), were implemented to downscale monthly TRMM 3B43 V7 precipitation data from 25 km to 1 km over North China for the purpose of comparison of algorithm performance. The downscaled results were validated based on observations from meteorological stations and were also compared to a previous downscaling algorithm. According to the validation results, the RF-based model produced the results with the highest accuracy. It was followed by SVM, CART, and k-NN, but the accuracy of the downscaled results using SVM relied greatly on residual correction. The downscaled results were well correlated with the observations during the year, but the accuracies were relatively lower in July to September. Downscaling errors increase as monthly total precipitation increases, but the RF model was less affected by this proportional effect between errors and observation compared with the other algorithms. The variable importances of the land surface temperature (LST) feature variables were higher than those of NDVI, which indicates the significance of considering the precipitation–land surface temperature relationship when downscaling TRMM 3B43 V7 precipitation data.
机译:从太空对地球进行环境监测为了解陆地-大气水和能源交换提供了宝贵的信息。但是,基于卫星的降水观测在水文和环境应用中的使用通常受到其粗糙的空间分辨率的限制。在这项研究中,我们提出了一种基于降水-土地表面特征的降尺度方法。除了归一化植被指数(NDVI),数字高程模型(DEM)和地理位置(经度,纬度)外,还引入了白天地表温度,夜间地表温度和昼夜地表温度差异作为变量。实施了四种机器学习回归算法,即分类和回归树(CART),k最近邻(k-NN),支持向量机(SVM)和随机森林(RF),以缩减TRMM 3B43 V7月降水量为了比较算法性能,从华北25 km到1 km的数据。根据气象站的观测结果验证了缩减后的结果,并将其与以前的缩减算法进行了比较。根据验证结果,基于RF的模型产生的结果具有最高的准确性。 SVM,CART和k-NN紧随其后,但是使用SVM缩减结果的准确性在很大程度上取决于残差校正。缩减的结果与一年中的观测值有很好的相关性,但在7月至9月的准确性相对较低。降尺度误差随着每月总降水量的增加而增加,但是与其他算法相比,RF模型受误差和观测值之间的这种比例效应的影响较小。地表温度(LST)特征变量的变量重要性高于NDVI,这表明缩小TRMM 3B43 V7降水量数据时考虑降水量与地表温度关系的重要性。

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