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      Symplectic networks: Intrinsic structure-preserving networks for identifying Hamiltonian systems

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          Abstract

          This work presents a framework of constructing the neural networks preserving the symplectic structure, so-called symplectic networks (SympNets). With the symplectic networks, we show some numerical results about (\romannumeral1) solving the Hamiltonian systems by learning abundant data points over the phase space, and (\romannumeral2) predicting the phase flows by learning a series of points depending on time. All the experiments point out that the symplectic networks perform much more better than the fully-connected networks that without any prior information, especially in the task of predicting which is unable to do within the conventional numerical methods.

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          Author and article information

          Journal
          11 January 2020
          Article
          2001.03750
          1908ea75-efdf-48d2-88b4-41734c976533

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          cs.LG physics.comp-ph stat.ML

          Mathematical & Computational physics,Machine learning,Artificial intelligence

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