Klein, Dominik K. ; Roth, Fabian J. ; Valizadeh, Iman ; Weeger, Oliver (2024)
Parametrized polyconvex hyperelasticity with physics-augmented neural networks.
In: Data-Centric Engineering, 2023, 4
doi: 10.26083/tuprints-00026472
Article, Secondary publication, Publisher's Version
Text
parametrized-polyconvex-hyperelasticity-with-physics-augmented-neural-networks.pdf Copyright Information: CC BY 4.0 International - Creative Commons, Attribution. Download (1MB) |
Item Type: | Article |
---|---|
Type of entry: | Secondary publication |
Title: | Parametrized polyconvex hyperelasticity with physics-augmented neural networks |
Language: | English |
Date: | 5 February 2024 |
Place of Publication: | Darmstadt |
Year of primary publication: | 2023 |
Place of primary publication: | Cambridge |
Publisher: | Cambridge University Press |
Journal or Publication Title: | Data-Centric Engineering |
Volume of the journal: | 4 |
Collation: | 22 Seiten |
DOI: | 10.26083/tuprints-00026472 |
Corresponding Links: | |
Origin: | Secondary publication service |
Abstract: | In the present work, neural networks are applied to formulate parametrized hyperelastic constitutive models. The models fulfill all common mechanical conditions of hyperelasticity by construction. In particular, partially input convex neural network (pICNN) architectures are applied based on feed-forward neural networks. Receiving two different sets of input arguments, pICNNs are convex in one of them, while for the other, they represent arbitrary relationships which are not necessarily convex. In this way, the model can fulfill convexity conditions stemming from mechanical considerations without being too restrictive on the functional relationship in additional parameters, which may not necessarily be convex. Two different models are introduced, where one can represent arbitrary functional relationships in the additional parameters, while the other is monotonic in the additional parameters. As a first proof of concept, the model is calibrated to data generated with two differently parametrized analytical potentials, whereby three different pICNN architectures are investigated. In all cases, the proposed model shows excellent performance. |
Uncontrolled Keywords: | constitutive modeling, hyperelasticity, parametrized material, partially input convex neural networks, physicsaugmented neural networks |
Identification Number: | Artikel-ID: e25 |
Status: | Publisher's Version |
URN: | urn:nbn:de:tuda-tuprints-264722 |
Classification DDC: | 000 Generalities, computers, information > 004 Computer science 600 Technology, medicine, applied sciences > 620 Engineering and machine engineering |
Divisions: | 16 Department of Mechanical Engineering > Cyber-Physical Simulation (CPS) |
Date Deposited: | 05 Feb 2024 11:02 |
Last Modified: | 12 Feb 2024 09:51 |
URI: | https://tuprints.ulb.tu-darmstadt.de/id/eprint/26472 |
PPN: | 515465119 |
Export: |
View Item |