2023
DOI: 10.1088/1751-8121/ad0803
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Direct Poisson neural networks: learning non-symplectic mechanical systems

Martin Šípka,
Michal Pavelka,
Oğul Esen
et al.

Abstract: In this paper, we present neural networks learning mechanical systems that are both symplectic (for instance particle mechanics) and non-symplectic (for instance rotating rigid body). Mechanical systems have Hamiltonian evolution, which consists of two building blocks: a Poisson bracket and an energy functional. We feed a set of snapshots of a Hamiltonian system to our neural network models which then find both the two building blocks. In particular, the models distinguish between symplectic systems (with non-… Show more

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