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arXiv:2201.11967 [cs.LG]AbstractReferencesReviewsResources

Pseudo-Differential Integral Operator for Learning Solution Operators of Partial Differential Equations

Jin Young Shin, Jae Yong Lee, Hyung Ju Hwang

Published 2022-01-28Version 1

Learning mapping between two function spaces has attracted considerable research attention. However, learning the solution operator of partial differential equations (PDEs) remains a challenge in scientific computing. Therefore, in this study, we propose a novel pseudo-differential integral operator (PDIO) inspired by a pseudo-differential operator, which is a generalization of a differential operator and characterized by a certain symbol. We parameterize the symbol by using a neural network and show that the neural-network-based symbol is contained in a smooth symbol class. Subsequently, we prove that the PDIO is a bounded linear operator, and thus is continuous in the Sobolev space. We combine the PDIO with the neural operator to develop a pseudo-differential neural operator (PDNO) to learn the nonlinear solution operator of PDEs. We experimentally validate the effectiveness of the proposed model by using Burgers' equation, Darcy flow, and the Navier-Stokes equation. The results reveal that the proposed PDNO outperforms the existing neural operator approaches in most experiments.

Comments: 16 pages, 12 figures. This paper is under review on the Thirty-ninth International Conference on Machine Learning
Categories: cs.LG, cs.NA, math.NA
Subjects: 35S05, 47G30, 68U07
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