Error Analysis of Physics-Informed Neural Networks for Approximating Dynamic PDEs of Second Order in Time
Yanxia Qian, Yongchao Zhang, Yunqing Huang, Suchuan Dong

TL;DR
This paper provides an error analysis of physics-informed neural networks (PINNs) for second-order in time dynamic PDEs, proposing new loss functions and demonstrating their effectiveness through numerical experiments on wave-related equations.
Contribution
The paper introduces a rigorous error analysis for PINNs applied to second-order dynamic PDEs and proposes new loss function forms that improve approximation accuracy.
Findings
PINN errors can be bounded by training loss and data points.
New loss functions improve PINN performance.
Numerical experiments confirm effective solution capturing.
Abstract
We consider the approximation of a class of dynamic partial differential equations (PDE) of second order in time by the physics-informed neural network (PINN) approach, and provide an error analysis of PINN for the wave equation, the Sine-Gordon equation and the linear elastodynamic equation. Our analyses show that, with feed-forward neural networks having two hidden layers and the activation function, the PINN approximation errors for the solution field, its time derivative and its gradient field can be effectively bounded by the training loss and the number of training data points (quadrature points). Our analyses further suggest new forms for the training loss function, which contain certain residuals that are crucial to the error estimate but would be absent from the canonical PINN loss formulation. Adopting these new forms for the loss function leads to a variant PINN…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Applications
