地下水
气候变化
环境科学
代表性浓度途径
地下水资源
自然地理学
水资源管理
气候模式
地理
地质学
含水层
海洋学
岩土工程
作者
Andreas Wünsch,Tanja Liesch,Stefan Broda
标识
DOI:10.1038/s41467-022-28770-2
摘要
Abstract In this study we investigate how climate change will directly influence the groundwater resources in Germany during the 21 st century. We apply a machine learning groundwater level prediction approach based on convolutional neural networks to 118 sites well distributed over Germany to assess the groundwater level development under different RCP scenarios (2.6, 4.5, 8.5). We consider only direct meteorological inputs, while highly uncertain anthropogenic factors such as groundwater extractions are excluded. While less pronounced and fewer significant trends can be found under RCP2.6 and RCP4.5, we detect significantly declining trends of groundwater levels for most of the sites under RCP8.5, revealing a spatial pattern of stronger decreases, especially in the northern and eastern part of Germany, emphasizing already existing decreasing trends in these regions. We can further show an increased variability and longer periods of low groundwater levels during the annual cycle towards the end of the century.
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