• Corpus ID: 235266191

Deep-Learning Discovers Macroscopic Governing Equations for Viscous Gravity Currents from Microscopic Simulation Data

  title={Deep-Learning Discovers Macroscopic Governing Equations for Viscous Gravity Currents from Microscopic Simulation Data},
  author={Junsheng Zeng and Hao Xu and Yuntian Chen and Dongxiao Zhang},
Deep-Learning Discovers Macroscopic Governing Equations for Viscous Gravity Currents from Microscopic Simulation Data Junsheng Zeng, Hao Xu, Yuntian Chen, and Dongxiao Zhang 1 Frontier Research Center, Peng Cheng Laboratory, Shenzhen 518000, P. R. China 2 College of Engineering, Peking University, Beijing 100871, P. R. China 3 School of Environmental Science and Engineering, Southern University of Science and Technology, Shenzhen 518055, P. R. China 

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