瓦迪河
降水
干旱
地形
仰角(弹道)
多元插值
气候变化
均方误差
环境科学
构造盆地
自然地理学
气候学
地理
气象学
统计
地图学
地质学
数学
古生物学
海洋学
双线性插值
几何学
作者
Mohammed Achite,Paraskevas Tsangaratos,Gaetano Pellicone,Babak Mohammadi,Tommaso Caloiero
标识
DOI:10.1016/j.asej.2023.102578
摘要
This study addresses a challenging problem of predicting mean annual precipitation across arid and semi-arid areas in northern Algeria, utilizing deterministic, geostatistical (GS), and machine learning (ML) models. Through the analysis of data spanning nearly five decades and encompassing 150 monitoring stations, the result of Random Forest showed the highest training performance, with R square value (of 0.9524) and the Root Mean Square Error (of 24.98). Elevation emerges as a critical factor, enhancing prediction accuracy in mountainous and complex terrains when used as an auxiliary variable. Cluster analysis further refines our understanding of station distribution and precipitation characteristics, identifying four distinct clusters, each exhibiting unique precipitation patterns and elevation zones. This study helps for a better understanding of precipitation prediction, encouraging the integration of additional variables and the exploration of climate change impacts, thereby contributing to informed environmental management and adaptation strategies across diverse climatic and terrain scenarios.
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