Locally-symplectic neural networks for learning volume-preserving dynamics
J\=anis Baj\=ars

TL;DR
This paper introduces locally-symplectic neural networks (LocSympNets) and their symmetric extension (SymLocSympNets) for accurately learning volume-preserving dynamical systems, demonstrating high accuracy in both linear and nonlinear cases with long-term stability.
Contribution
The paper develops a novel neural network architecture based on symplectic integrators for learning volume-preserving dynamics, extending symplectic neural networks to locally-symplectic and symmetric versions.
Findings
High accuracy in learning linear and nonlinear volume-preserving dynamics.
Effective long-term predictions for dynamical systems.
Robustness to noise in training data.
Abstract
We propose locally-symplectic neural networks LocSympNets for learning the flow of phase volume-preserving dynamics. The construction of LocSympNets stems from the theorem of the local Hamiltonian description of the divergence-free vector field and the splitting methods based on symplectic integrators. Symplectic gradient modules of the recently proposed symplecticity-preserving neural networks SympNets are used to construct invertible locally-symplectic modules. To further preserve properties of the flow of a dynamical system LocSympNets are extended to symmetric locally-symplectic neural networks SymLocSympNets, such that the inverse of SymLocSympNets is equal to the feed-forward propagation of SymLocSympNets with the negative time step, which is a general property of the flow of a dynamical system. LocSympNets and SymLocSympNets are studied numerically considering learning linear and…
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