Evaluation of shallow groundwater dynamics after water supplement in North China Plain based on attention-GRU model

Journal of Hydrology - Tập 625 - Trang 130085 - 2023
Tian Nan1,2, Wengeng Cao1,2, Zhe Wang3, Yuanyuan Gao4, Lihua Zhao5, Xiaoyue Sun1,6, Jing Na1,6
1Institute of Hydrogeology and Environmental Geology, Chinese Academy of Geosciences, Shijiazhuang 050061, China
2Key Laboratory of Groundwater Sciences and Engineering, Ministry of Natural Resources, Shijiazhuang 050061, China
3Hydrology Bureau of Haihe River Water Conservancy Commission, Ministry of Water Resources, Tianjin 300170, China
4Bureau of South to North Water Transfer of Planning, Designing and Management, Ministry of Water Resources, Beijing 100038, China
5Hebei Provincial Academy of Water Resources, Shijiazhuang 050057, China
6North China University of Water Resources and Electric Power, Zhengzhou, 450046, China

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