Physics-Informed Regularization for Domain-Agnostic Dynamical System Modeling
Learning complex physical dynamics purely from data is challenging due to the intrinsic properties of systems to be satisfied. Incorporating physics-informed priors, such as in Hamiltonian Neural Networks (HNNs), achieves high-precision modeling for energy-conservative systems. However, real-world s...
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Main Authors | , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
08.10.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Learning complex physical dynamics purely from data is challenging due to the
intrinsic properties of systems to be satisfied. Incorporating physics-informed
priors, such as in Hamiltonian Neural Networks (HNNs), achieves high-precision
modeling for energy-conservative systems. However, real-world systems often
deviate from strict energy conservation and follow different physical priors.
To address this, we present a framework that achieves high-precision modeling
for a wide range of dynamical systems from the numerical aspect, by enforcing
Time-Reversal Symmetry (TRS) via a novel regularization term. It helps preserve
energies for conservative systems while serving as a strong inductive bias for
non-conservative, reversible systems. While TRS is a domain-specific physical
prior, we present the first theoretical proof that TRS loss can universally
improve modeling accuracy by minimizing higher-order Taylor terms in ODE
integration, which is numerically beneficial to various systems regardless of
their properties, even for irreversible systems. By integrating the TRS loss
within neural ordinary differential equation models, the proposed model TREAT
demonstrates superior performance on diverse physical systems. It achieves a
significant 11.5% MSE improvement in a challenging chaotic triple-pendulum
scenario, underscoring TREAT's broad applicability and effectiveness. |
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DOI: | 10.48550/arxiv.2410.06366 |