Downscaling of Open Coarse Precipitation Data Using a Machine Learning Algorithm

Ismail Elhassnaoui, Zineb Moumen, Hicham Ezzine, Marwane Bel-lahcen, A. Bouziane, D. Ouazar, M. Hasnaoui
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Abstract

In this chapter, the authors propose a novel statistical model with a residual correction of downscaling coarse precipitation TRMM 3B43 product. The presented study was carried out over Morocco, and the objective is to improve statistical downscaling for TRMM 3B43 products using a machine learning algorithm. Indeed, the statistical model is based on the Transformed Soil Adjusted Vegetation Index (TSAVI), elevation, and distance from the sea. TSAVI was retrieved using the quantile regression method. Stepwise regression was implemented with the minimization of the Akaike information criterion and Mallows' Cp indicator. The model validation is performed using ten in-situ measurements from rain gauge stations (the most available data). The result shows that the model presents the best fit of the TRMM 3B43 product and good accuracy on estimating precipitation at 1km according to 𝑅2, RMSE, bias, and MAE. In addition, TSAVI improved the model accuracy in the humid bioclimatic stage and in the Saharan region to some extent due to its capacity to reduce soil brightness.
使用机器学习算法的开放粗降水数据降尺度
在这一章中,作者提出了一个新的统计模型与残差校正的降尺度粗降水TRMM 3B43产品。本研究在摩洛哥进行,目的是使用机器学习算法改善TRMM 3B43产品的统计降尺度。事实上,统计模型是基于转化土壤调整植被指数(TSAVI)、海拔和离海距离。使用分位数回归法检索TSAVI。采用Akaike信息准则和Mallows’Cp指标的最小化方法进行逐步回归。模型验证使用来自雨量站的10个原位测量(最可用的数据)进行。结果表明,该模型与TRMM 3B43产品的拟合效果最好,在1km降水的估计上,根据𝑅2、RMSE、bias和MAE的估计精度较高。此外,由于TSAVI具有降低土壤亮度的能力,在一定程度上提高了湿润生物气候阶段和撒哈拉地区的模式精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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