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Jung, Chang-Yeol
Numerical Analysis Lab.
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Semi-analytic PINN methods for singularly perturbed boundary value problems

Author(s)
Gie, Gung MinHong, YoungjoonJung, Chang-Yeol
Issued Date
2024-09
DOI
10.1080/00036811.2024.2302405
URI
https://scholarworks.unist.ac.kr/handle/201301/90498
Citation
Applicable Analysis, v.103, no.14, pp.2554 - 2571
Abstract
In this paper, we propose a novel semi-analytic physics informed neural network (PINN) method for solving singularly perturbed boundary value problems. The PINN is a scientific machine learning framework that shows great promise for finding approximate solutions to partial differential equations. PINNs have demonstrated impressive performance in solving a variety of differential equations, including time-dependent and multi-dimensional equations involving complex domain geometries. However, when it comes to stiff differential equations, neural networks in general struggle to capture the sharp transition of solutions, due to the spectral bias. To address this limitation, we develop a semi-analytic PINN approach, which is enriched by incorporating the so-called corrector functions obtained from boundary layer analysis. Our enriched PINN approach provides accurate predictions of solutions to singular perturbation problems. Our numerical experiments cover a wide range of singularly perturbed linear and nonlinear differential equations. Overall, our approach shows great potential for solving challenging problems in the field of partial differential equations and machine learning. © 2024 Informa UK Limited, trading as Taylor & Francis Group.
Publisher
Taylor and Francis Ltd.
ISSN
0003-6811
Keyword (Author)
physics-informed neural networkssingular perturbationboundary layerMachine learning

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