702
v1v2v3v4v5 (latest)

Is L2L^2 Physics-Informed Loss Always Suitable for Training Physics-Informed Neural Network?

Neural Information Processing Systems (NeurIPS), 2022
Abstract

The Physics-Informed Neural Network (PINN) approach is a new and promising way to solve partial differential equations using deep learning. The L2L^2 Physics-Informed Loss is the de-facto standard in training Physics-Informed Neural Networks. In this paper, we challenge this common practice by investigating the relationship between the loss function and the approximation quality of the learned solution. In particular, we leverage the concept of stability in the literature of partial differential equation to study the asymptotic behavior of the learned solution as the loss approaches zero. With this concept, we study an important class of high-dimensional non-linear PDEs in optimal control, the Hamilton-Jacobi-Bellman(HJB) Equation, and prove that for general LpL^p Physics-Informed Loss, a wide class of HJB equation is stable only if pp is sufficiently large. Therefore, the commonly used L2L^2 loss is not suitable for training PINN on those equations, while LL^{\infty} loss is a better choice. Based on the theoretical insight, we develop a novel PINN training algorithm to minimize the LL^{\infty} loss for HJB equations which is in a similar spirit to adversarial training. The effectiveness of the proposed algorithm is empirically demonstrated through experiments. Our code is released at https://github.com/LithiumDA/L_inf-PINN.

View on arXiv
Comments on this paper