Physics-Informed Neural Operator for Learning Partial Differential Equations

Author:

Li Zongyi1ORCID,Zheng Hongkai1ORCID,Kovachki Nikola1ORCID,Jin David1ORCID,Chen Haoxuan1ORCID,Liu Burigede1ORCID,Azizzadenesheli Kamyar1ORCID,Anandkumar Anima1ORCID

Affiliation:

1. Computing and mathematical science, California Institute of Technology, Pasadena, USA

Abstract

In this article, we propose physics-informed neural operators (PINO) that combine training data and physics constraints to learn the solution operator of a given family of parametric Partial Differential Equations (PDE). PINO is the first hybrid approach incorporating data and PDE constraints at different resolutions to learn the operator. Specifically, in PINO, we combine coarse-resolution training data with PDE constraints imposed at a higher resolution. The resulting PINO model can accurately approximate the ground-truth solution operator for many popular PDE families and shows no degradation in accuracy even under zero-shot super-resolution, that is, being able to predict beyond the resolution of training data. PINO uses the Fourier neural operator (FNO) framework that is guaranteed to be a universal approximator for any continuous operator and discretization convergent in the limit of mesh refinement. By adding PDE constraints to FNO at a higher resolution, we obtain a high-fidelity reconstruction of the ground-truth operator. Moreover, PINO succeeds in settings where no training data is available and only PDE constraints are imposed, while previous approaches, such as the Physics-Informed Neural Network (PINN), fail due to optimization challenges, for example, in multi-scale dynamic systems such as Kolmogorov flows.

Funder

Kortschak Scholars, PIMCO Fellows

Amazon AI4Science Fellows programs

Amazon AI4Science Fellowship

Publisher

Association for Computing Machinery (ACM)

Reference59 articles.

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3. Zongyi Li, Nikola Kovachki, Kamyar Azizzadenesheli, Burigede Liu, Kaushik Bhattacharya, Andrew Stuart, and Anima Anandkumar. 2021. Multipole graph neural operator for parametric partial differential equations. In Conference on Neural Information Processing Systems.

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