Open Access System for Information Sharing

Login Library

 

Article
Cited 0 time in webofscience Cited 0 time in scopus
Metadata Downloads
Full metadata record
Files in This Item:
There are no files associated with this item.
DC FieldValueLanguage
dc.contributor.authorJung, Jeahan-
dc.contributor.authorKim, Heechang-
dc.contributor.authorShin, Hyomin-
dc.contributor.authorChoi, Minseok-
dc.date.accessioned2024-08-08T01:40:07Z-
dc.date.available2024-08-08T01:40:07Z-
dc.date.created2024-06-12-
dc.date.issued2024-07-
dc.identifier.issn0045-7825-
dc.identifier.urihttps://oasis.postech.ac.kr/handle/2014.oak/123913-
dc.description.abstractDespite the growing popularity of physics -informed neural networks (PINNs), their applicability in the long-time integration of partial differential equations (PDEs) remains constrained. We argue that this problem stems from the lack of consideration of temporal causality in the original PINN formulation, resulting in a bias towards satisfying governing equations at later times before learning the initial condition and hence leading to erroneous solutions. To this end, we propose a novel method that seamlessly integrates temporal causality into the training process. Drawing inspiration from classical numerical methods where the temporal causality is reflected, we divide the time domain into nonoverlapping subintervals, assign a unique neural network to each subinterval, and construct a loss function founded on the integral form of PDEs within these subintervals. The proposed networks undergo sequential training, beginning with the initial time step. Our method demonstrates significant improvement in accuracy for long-time simulations of various PDE problems where the original PINN method fails while it requires less computational cost and memory compared to the PINN method. A parallelization algorithm is provided to further enhance the computational efficiency, showing a significant speedup for solving time -dependent PDEs.-
dc.languageEnglish-
dc.publisherElsevier BV-
dc.relation.isPartOfComputer Methods in Applied Mechanics and Engineering-
dc.titleCEENs: Causality-enforced evolutional networks for solving time-dependent partial differential equations-
dc.typeArticle-
dc.identifier.doi10.1016/j.cma.2024.117036-
dc.type.rimsART-
dc.identifier.bibliographicCitationComputer Methods in Applied Mechanics and Engineering, v.427, pp.117036-
dc.identifier.wosid001242087700001-
dc.citation.startPage117036-
dc.citation.titleComputer Methods in Applied Mechanics and Engineering-
dc.citation.volume427-
dc.contributor.affiliatedAuthorChoi, Minseok-
dc.identifier.scopusid2-s2.0-85192748487-
dc.description.journalClass1-
dc.description.journalClass1-
dc.description.isOpenAccessN-
dc.type.docTypeArticle-
dc.subject.keywordAuthorPhysics-informed neural network-
dc.subject.keywordAuthorLong-time integration-
dc.subject.keywordAuthorPartial differential equation-
dc.subject.keywordAuthorPredictive modeling-
dc.subject.keywordAuthorNonlinear dynamics-
dc.relation.journalWebOfScienceCategoryEngineering, Multidisciplinary-
dc.relation.journalWebOfScienceCategoryMathematics, Interdisciplinary Applications-
dc.relation.journalWebOfScienceCategoryMechanics-
dc.description.journalRegisteredClassscie-
dc.description.journalRegisteredClassscopus-

qr_code

  • mendeley

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Views & Downloads

Browse