Domain adaptation based transfer learning approach for solving PDEs on complex geometries

Zur Kurzanzeige

dc.identifier.uri http://dx.doi.org/10.15488/12959
dc.identifier.uri https://www.repo.uni-hannover.de/handle/123456789/13063
dc.contributor.author Chakraborty, Ayan
dc.contributor.author Anitescu, Cosmin
dc.contributor.author Zhuang, Xiaoying
dc.contributor.author Rabczuk, Timon
dc.date.accessioned 2022-11-08T05:45:37Z
dc.date.available 2022-11-08T05:45:37Z
dc.date.issued 2022
dc.identifier.citation Chakraborty, A.; Anitescu, C.; Zhuang, X.; Rabczuk, T.: Domain adaptation based transfer learning approach for solving PDEs on complex geometries. In: Engineering with computers : an international journal for simulation-based engineering 38 (2022), S. 4569-4588. DOI: https://doi.org/10.1007/s00366-022-01661-2
dc.description.abstract In machine learning, if the training data is independently and identically distributed as the test data then a trained model can make an accurate predictions for new samples of data. Conventional machine learning has a strong dependence on massive amounts of training data which are domain specific to understand their latent patterns. In contrast, Domain adaptation and Transfer learning methods are sub-fields within machine learning that are concerned with solving the inescapable problem of insufficient training data by relaxing the domain dependence hypothesis. In this contribution, this issue has been addressed and by making a novel combination of both the methods we develop a computationally efficient and practical algorithm to solve boundary value problems based on nonlinear partial differential equations. We adopt a meshfree analysis framework to integrate the prevailing geometric modelling techniques based on NURBS and present an enhanced deep collocation approach that also plays an important role in the accuracy of solutions. We start with a brief introduction on how these methods expand upon this framework. We observe an excellent agreement between these methods and have shown that how fine-tuning a pre-trained network to a specialized domain may lead to an outstanding performance compare to the existing ones. As proof of concept, we illustrate the performance of our proposed model on several benchmark problems. © 2022, The Author(s). eng
dc.language.iso eng
dc.publisher London : Springer
dc.relation.ispartofseries Engineering with computers : an international journal for simulation-based engineering (2022), online first
dc.rights CC BY 4.0 Unported
dc.rights.uri https://creativecommons.org/licenses/by/4.0/
dc.subject Domain adaptation eng
dc.subject Navier–Stokes equations eng
dc.subject NURBS geometry eng
dc.subject Transfer learning eng
dc.subject.ddc 004 | Informatik ger
dc.subject.ddc 600 | Technik ger
dc.title Domain adaptation based transfer learning approach for solving PDEs on complex geometries eng
dc.type Article
dc.type Text
dc.relation.essn 1435-5663
dc.relation.doi https://doi.org/10.1007/s00366-022-01661-2
dc.bibliographicCitation.volume 38
dc.bibliographicCitation.firstPage 4569
dc.bibliographicCitation.lastPage 4588
dc.description.version publishedVersion
tib.accessRights frei zug�nglich


Die Publikation erscheint in Sammlung(en):

Zur Kurzanzeige

 

Suche im Repositorium


Durchblättern

Mein Nutzer/innenkonto

Nutzungsstatistiken