Coupling Machine Learning Into Hydrodynamic Models to Improve River Modeling With Complex Boundary Conditions
Huang Sheng(Wuhan University), Gangsheng Wang(Huangshi Central Hospital), Wenyucheng Wang(Wuhan University), Jun Xia(Wuhan University), Yueling Wang(Chinese Academy of Sciences), Sidong Zeng(Chongqing Institute of Green and Intelligent Technology), Dunxian She(Wuhan University)
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