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Spatiotemporal parallel physics-informed neural networks: A framework to solve inverse problems in fluid mechanics
Xu, Shengfeng1,2; Yan, Chang1,3; Zhang, Guangtao4,5; Sun, Zhenxu1; Huang, Renfang1; Ju, Shengjun1; Guo, Dilong1,2; Yang, Guowei1,2
2023-06-28
Source PublicationPhysics of Fluids
ISSN1070-6631
Volume35Issue:6Pages:065141
Abstract

Physics-informed neural networks (PINNs) are widely used to solve forward and inverse problems in fluid mechanics. However, the current PINNs framework faces notable challenges when presented with problems that involve large spatiotemporal domains or high Reynolds numbers, leading to hyper-parameter tuning difficulties and excessively long training times. To overcome these issues and enhance PINNs' efficacy in solving inverse problems, this paper proposes a spatiotemporal parallel physics-informed neural networks (STPINNs) framework that can be deployed simultaneously to multi-central processing units. The STPINNs framework is specially designed for the inverse problems of fluid mechanics by utilizing an overlapping domain decomposition strategy and incorporating Reynolds-averaged Navier-Stokes equations, with eddy viscosity in the output layer of neural networks. The performance of the proposed STPINNs is evaluated on three turbulent cases: the wake flow of a two-dimensional cylinder, homogeneous isotropic decaying turbulence, and the average wake flow of a three-dimensional cylinder. All three turbulent flow cases are successfully reconstructed with sparse observations. The quantitative results along with strong and weak scaling analyses demonstrate that STPINNs can accurately and efficiently solve turbulent flows with comparatively high Reynolds numbers.

KeywordArtificial Neural Networks Machine Learning Fluid Mechanics Navier Stokes Equations Turbulence Simulations Turbulent Flows Viscosity
DOI10.1063/5.0155087
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaMechanics ; Physics
WOS SubjectMechanics ; Physics, Fluids & Plasmas
WOS IDWOS:001021259300005
PublisherAIP Publishing, 1305 WALT WHITMAN RD, STE 300, MELVILLE, NY 11747-4501
Scopus ID2-s2.0-85163963363
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Citation statistics
Document TypeJournal article
CollectionDEPARTMENT OF MATHEMATICS
Corresponding AuthorSun, Zhenxu
Affiliation1.Key Laboratory for Mechanics in Fluid Solid Coupling Systems, Institute of Mechanics, Chinese Academy of Sciences, Beijing, 100190, China
2.School of Engineering Science, University of Chinese Academy of Sciences, Beijing, 100049, China
3.School of Future Technology, University of Chinese Academy of Sciences, Beijing, 100049, China
4.SandGold AI Research, Guangzhou, 510642, China
5.Department of Mathematics, Faculty of Science and Technology, University of Macau, 519000, Macao
Recommended Citation
GB/T 7714
Xu, Shengfeng,Yan, Chang,Zhang, Guangtao,et al. Spatiotemporal parallel physics-informed neural networks: A framework to solve inverse problems in fluid mechanics[J]. Physics of Fluids, 2023, 35(6), 065141.
APA Xu, Shengfeng., Yan, Chang., Zhang, Guangtao., Sun, Zhenxu., Huang, Renfang., Ju, Shengjun., Guo, Dilong., & Yang, Guowei (2023). Spatiotemporal parallel physics-informed neural networks: A framework to solve inverse problems in fluid mechanics. Physics of Fluids, 35(6), 065141.
MLA Xu, Shengfeng,et al."Spatiotemporal parallel physics-informed neural networks: A framework to solve inverse problems in fluid mechanics".Physics of Fluids 35.6(2023):065141.
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