Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/3353
Title: Physics-enhanced neural networks learn order and chaos
Authors: Sinha, Sudeshna
Keywords: Chaos theory
Dynamics
Hamiltonians
Phase space methods
Neural networks
Issue Date: 2020
Publisher: American Physical Society
Citation: Physical Review E, 101(6)
Abstract: Artificial neural networks are universal function approximators. They can forecast dynamics, but they may need impractically many neurons to do so, especially if the dynamics is chaotic. We use neural networks that incorporate Hamiltonian dynamics to efficiently learn phase space orbits even as nonlinear systems transition from order to chaos. We demonstrate Hamiltonian neural networks on a widely used dynamics benchmark, the Hénon-Heiles potential, and on nonperturbative dynamical billiards. We introspect to elucidate the Hamiltonian neural network forecasting.
Description: Only IISERM authors are available in the record.
URI: https://journals.aps.org/pre/abstract/10.1103/PhysRevE.101.062207
http://hdl.handle.net/123456789/3353
Appears in Collections:Research Articles

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