Physics-informed deep learning for three-dimensional transient heat transfer analysis of functionally graded materials

Show simple item record

dc.identifier.uri https://www.repo.uni-hannover.de/handle/123456789/15002
dc.identifier.uri https://doi.org/10.15488/14883
dc.contributor.author Guo, Hongwei
dc.contributor.author Zhuang, Xiaoying
dc.contributor.author Fu, Xiaolong
dc.contributor.author Zhu, Yunzheng
dc.contributor.author Rabczuk, Timon
dc.date.accessioned 2023-10-06T05:24:40Z
dc.date.available 2023-10-06T05:24:40Z
dc.date.issued 2023
dc.identifier.citation Guo, H.; Zhuang, X.; Alajlan, N.; Rabczuk, T.: Physics-informed deep learning for three-dimensional transient heat transfer analysis of functionally graded materials. In: Computational Mechanics 72 (2023), Nr. 3, S. 513-524. DOI: https://doi.org/10.1007/s00466-023-02287-x
dc.description.abstract We present a physics-informed deep learning model for the transient heat transfer analysis of three-dimensional functionally graded materials (FGMs) employing a Runge–Kutta discrete time scheme. Firstly, the governing equation, associated boundary conditions and the initial condition for transient heat transfer analysis of FGMs with exponential material variations are presented. Then, the deep collocation method with the Runge–Kutta integration scheme for transient analysis is introduced. The prior physics that helps to generalize the physics-informed deep learning model is introduced by constraining the temperature variable with discrete time schemes and initial/boundary conditions. Further the fitted activation functions suitable for dynamic analysis are presented. Finally, we validate our approach through several numerical examples on FGMs with irregular shapes and a variety of boundary conditions. From numerical experiments, the predicted results with PIDL demonstrate well agreement with analytical solutions and other numerical methods in predicting of both temperature and flux distributions and can be adaptive to transient analysis of FGMs with different shapes, which can be the promising surrogate model in transient dynamic analysis. eng
dc.language.iso eng
dc.publisher Berlin ; Heidelberg : Springer
dc.relation.ispartofseries Computational Mechanics 72 (2023), Nr. 3
dc.rights CC BY 4.0 Unported
dc.rights.uri https://creativecommons.org/licenses/by/4.0
dc.subject Activation function eng
dc.subject Deep learning eng
dc.subject Discontinuous time scheme eng
dc.subject Functionally graded materials eng
dc.subject Heat transfer eng
dc.subject Physics-informed eng
dc.subject.ddc 530 | Physik
dc.subject.ddc 004 | Informatik
dc.title Physics-informed deep learning for three-dimensional transient heat transfer analysis of functionally graded materials eng
dc.type Article
dc.type Text
dc.relation.essn 1432-0924
dc.relation.issn 0178-7675
dc.relation.doi https://doi.org/10.1007/s00466-023-02287-x
dc.bibliographicCitation.issue 3
dc.bibliographicCitation.volume 72
dc.bibliographicCitation.firstPage 513
dc.bibliographicCitation.lastPage 524
dc.description.version publishedVersion
tib.accessRights frei zug�nglich


Files in this item

This item appears in the following Collection(s):

Show simple item record

 

Search the repository


Browse

My Account

Usage Statistics