Ortigosa, Rogelio; Martínez-Frutos, Jesús; Pérez-Escolar, Alberto; Castañar, Inocencio; Ellmer, Nathan; Gil, Antonio J. A generalized theory for physics-augmented neural networks in finite strain thermo-electro-mechanics Journal Article In: Computer Methods in Applied Mechanics and Engineering, vol. 437, pp. 117741, 2025, ISSN: 0045-7825. Abstract | BibTeX | Tags: Dielectric elastomers, Finite elements, Machine learning, Neural networks, PID2022-141957OA-C22, Thermo-electro-mechanics | Links: 2025
@article{ORTIGOSA2025117741,
title = {A generalized theory for physics-augmented neural networks in finite strain thermo-electro-mechanics},
author = {Rogelio Ortigosa and Jesús Martínez-Frutos and Alberto Pérez-Escolar and Inocencio Castañar and Nathan Ellmer and Antonio J. Gil},
url = {https://www.sciencedirect.com/science/article/pii/S0045782525000131},
doi = {https://doi.org/10.1016/j.cma.2025.117741},
issn = {0045-7825},
year = {2025},
date = {2025-01-01},
urldate = {2025-01-01},
journal = {Computer Methods in Applied Mechanics and Engineering},
volume = {437},
pages = {117741},
abstract = {This manuscript introduces a novel neural network-based computational framework for constitutive modeling of thermo-electro-mechanically coupled materials at finite strains, with four key innovations: (i) It supports calibration of neural network models with various input forms, such as Ψnn(F,E0,θ), enn(F,D0,η), Υnn(F,E0,η), or Γnn(F,D0,θ), with F representing the deformation gradient tensor, E0 and D0 the electric field and electric displacement field, respectively and finally, θ and η, the temperature and entropy fields. These models comply with physical laws and material symmetries by utilizing isotropic or anisotropic invariants corresponding to the material’s symmetry group. (ii) A calibration approach is developed for the case of experimental data, where entropy η is typically unmeasurable. (iii) The framework accommodates models like enn(F,D0,η), specially convenient for the imposition of polyconvexity across the three physics involved. A detailed calibration study is conducted evaluating various neural network architectures and considering a large variety of ground truth thermo-electro-mechanical constitutive models. The results demonstrate excellent predictive performance on larger datasets, validated through complex finite element simulations using both ground truth and neural network-based models. Crucially, the framework can be straightforwardly extended to scenarios involving other physics.},
keywords = {Dielectric elastomers, Finite elements, Machine learning, Neural networks, PID2022-141957OA-C22, Thermo-electro-mechanics},
pubstate = {published},
tppubtype = {article}
}