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Learning reversible symplectic dynamics
Published 26 Apr 2022 in stat.ML, math.DS, and physics.comp-ph | (2204.12323v1)
Abstract: Time-reversal symmetry arises naturally as a structural property in many dynamical systems of interest. While the importance of hard-wiring symmetry is increasingly recognized in machine learning, to date this has eluded time-reversibility. In this paper we propose a new neural network architecture for learning time-reversible dynamical systems from data. We focus in particular on an adaptation to symplectic systems, because of their importance in physics-informed learning.
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