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Mastering high-dimensional dynamics with Hamiltonian neural networks

28 July 2020
Scott T. Miller
J. Lindner
A. Choudhary
S. Sinha
W. Ditto
    PINNAI4CE
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Abstract

We detail how incorporating physics into neural network design can significantly improve the learning and forecasting of dynamical systems, even nonlinear systems of many dimensions. A map building perspective elucidates the superiority of Hamiltonian neural networks over conventional neural networks. The results clarify the critical relation between data, dimension, and neural network learning performance.

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