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检索条件"机构=Hebei Key Laboratory of Geospatial Digital Twin and Collaborative Optimization"
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Investigate the rainfall-runoff relationship and hydrological concepts inside LSTM
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Environmental Modelling and Software 2025年 192卷
作者: Hu, Yuqian Li, Heng Zhang, Chunxiao Wang, Tianbao Chu, Wenhao Li, Rongrong School of Information Engineering China University of Geosciences in Beijing Beijing China Chinese Academy of Surveying and Mapping Beijing China Hebei Key Laboratory of Geospatial Digital Twin and Collaborative Optimization China University of Geosciences Beijing Beijing100083 China Key Laboratory of Remote Sensing and Digital Earth Chinese Academy of Sciences Aerospace Information Research Institute Chinese Academy of Sciences Beijing China Institute of Space and Earth Information Science The Chinese University of Hong Kong Shatin New Territories Hong Kong
Recent studies have shown that LSTM performs well in runoff prediction in large sample regional modeling and can estimate hydrological concepts based on its internal information. However, compared to process-based mod...
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A differentiability-based processes and parameters learning hydrologic model for advancing runoff prediction and process understanding
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Journal of Hydrology 2025年 661卷
作者: Chunxiao Zhang Heng Li Yuqian Hu Dingtao Shen Bingli Xu Min Chen Wenhao Chu Rongrong Li School of Information Engineering China University of Geosciences Beijing Beijing China Hebei Key Laboratory of Geospatial Digital Twin and Collaborative Optimization China University of Geosciences Beijing Beijing China Chinese Academy of Surveying and Mapping Beijing China Key Laboratory for Geographical Process Analysis & Simulation of Hubei Province Central China Normal University Wuhan China College of Urban and Environmental Sciences Central China Normal University Wuhan China Department of Information and Communication Academy of Army Armored Forces Beijing China Key Laboratory of Virtual Geographic Environment (Ministry of Education of PRC) Nanjing Normal University Nanjing Jiangsu China International Research Center of Big Data for Sustainable Development Goals Beijing China Jiangsu Center for Collaborative Innovation in Geographical Information Resource Development and Application Nanjing Jiangsu China Institute of Space and Earth Information Science The Chinese University of Hong Kong Shatin New Territories Hong Kong China
Differentiable parameterized learning (dPL) represents a cutting-edge advancement in synergizing process-based models (PBMs) and machine learning to improve both the model prediction and interpretability. However, dPL...
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