Data-driven physics-informed neural networks: A digital twin perspective

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dc.contributor.authorYang, Sunwoongko
dc.contributor.authorKim, Hojinko
dc.contributor.authorHong, Yoonpyoko
dc.contributor.authorYee, Kwanjungko
dc.contributor.authorMaulik, Romitko
dc.contributor.authorKang, Namwooko
dc.date.accessioned2024-09-11T07:00:11Z-
dc.date.available2024-09-11T07:00:11Z-
dc.date.created2024-09-11-
dc.date.issued2024-08-
dc.identifier.citationCOMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, v.428-
dc.identifier.issn0045-7825-
dc.identifier.urihttp://hdl.handle.net/10203/322897-
dc.description.abstractThis study explores the potential of physics -informed neural networks (PINNs) for the realization of digital twins (DT) from various perspectives. First, various adaptive sampling approaches for collocation points are investigated to verify their effectiveness in the mesh -free framework of PINNs, which allows automated construction of virtual representation without manual mesh generation. Then, the overall performance of the data -driven PINNs (DD-PINNs) framework is examined, which can utilize the acquired datasets in DT scenarios. Its scalability to more general physics is validated within parametric Navier-Stokes equations, where PINNs do not need to be retrained as the Reynolds number varies. In addition, since datasets can be often collected from different fidelity/sparsity in practice, multi -fidelity DD-PINNs are also proposed and evaluated. They show remarkable prediction performance even in the extrapolation tasks, with 42 similar to 62% improvement over the single -fidelity approach. Finally, the uncertainty quantification performance of multi -fidelity DD-PINNs is investigated by the ensemble method to verify their potential in DT, where an accurate measure of predictive uncertainty is critical. The DDPINN frameworks explored in this study are found to be more suitable for DT scenarios than traditional PINNs from the above perspectives, bringing engineers one step closer to seamless DT realization.-
dc.languageEnglish-
dc.publisherELSEVIER SCIENCE SA-
dc.titleData-driven physics-informed neural networks: A digital twin perspective-
dc.typeArticle-
dc.identifier.wosid001249860500001-
dc.identifier.scopusid2-s2.0-85195063705-
dc.type.rimsART-
dc.citation.volume428-
dc.citation.publicationnameCOMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING-
dc.identifier.doi10.1016/j.cma.2024.117075-
dc.contributor.localauthorKang, Namwoo-
dc.contributor.nonIdAuthorYang, Sunwoong-
dc.contributor.nonIdAuthorKim, Hojin-
dc.contributor.nonIdAuthorHong, Yoonpyo-
dc.contributor.nonIdAuthorYee, Kwanjung-
dc.contributor.nonIdAuthorMaulik, Romit-
dc.description.isOpenAccessN-
dc.type.journalArticleArticle-
dc.subject.keywordAuthorDigital twins-
dc.subject.keywordAuthorPhysics-informed neural networks-
dc.subject.keywordAuthorAdaptive sampling-
dc.subject.keywordAuthorData-driven approach-
dc.subject.keywordAuthorMulti-fidelity modeling-
dc.subject.keywordAuthorUncertainty quantification-
dc.subject.keywordPlusREFINEMENT-
dc.subject.keywordPlusFRAMEWORK-
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