LGCOMP-PHMLJul 10, 2019

DeepXDE: A deep learning library for solving differential equations

arXiv:1907.04502v22165 citations
Originality Incremental advance
AI Analysis

This work provides a tool for researchers and educators in computational science and engineering to solve PDEs more efficiently, though it is incremental as it builds on existing PINN methods.

The authors tackled the problem of solving partial differential equations (PDEs) using deep learning by introducing physics-informed neural networks (PINNs) and a new residual-based adaptive refinement method to improve training efficiency, resulting in a Python library called DeepXDE that supports solving forward and inverse problems for various PDE types.

Deep learning has achieved remarkable success in diverse applications; however, its use in solving partial differential equations (PDEs) has emerged only recently. Here, we present an overview of physics-informed neural networks (PINNs), which embed a PDE into the loss of the neural network using automatic differentiation. The PINN algorithm is simple, and it can be applied to different types of PDEs, including integro-differential equations, fractional PDEs, and stochastic PDEs. Moreover, from the implementation point of view, PINNs solve inverse problems as easily as forward problems. We propose a new residual-based adaptive refinement (RAR) method to improve the training efficiency of PINNs. For pedagogical reasons, we compare the PINN algorithm to a standard finite element method. We also present a Python library for PINNs, DeepXDE, which is designed to serve both as an education tool to be used in the classroom as well as a research tool for solving problems in computational science and engineering. Specifically, DeepXDE can solve forward problems given initial and boundary conditions, as well as inverse problems given some extra measurements. DeepXDE supports complex-geometry domains based on the technique of constructive solid geometry, and enables the user code to be compact, resembling closely the mathematical formulation. We introduce the usage of DeepXDE and its customizability, and we also demonstrate the capability of PINNs and the user-friendliness of DeepXDE for five different examples. More broadly, DeepXDE contributes to the more rapid development of the emerging Scientific Machine Learning field.

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