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A physics-augmented neural network framework for finite strain incompressible viscoelasticity

Published: November 4, 2025 | arXiv ID: 2511.02959v1

By: Karl A. Kalina, Jörg Brummund, Markus Kästner

Potential Business Impact:

Helps computers predict how stretchy things bend.

Business Areas:
Advanced Materials Manufacturing, Science and Engineering

We propose a physics-augmented neural network (PANN) framework for finite strain incompressible viscoelasticity within the generalized standard materials theory. The formulation is based on the multiplicative decomposition of the deformation gradient and enforces unimodularity of the inelastic deformation part throughout the evolution. Invariant-based representations of the free energy and the dual dissipation potential by monotonic and fully input-convex neural networks ensure thermodynamic consistency, objectivity, and material symmetry by construction. The evolution of the internal variables during training is handled by solving the evolution equations using an implicit exponential time integrator. In addition, a trainable gate layer combined with lp regularization automatically identifies the required number of internal variables during training. The PANN is calibrated with synthetic and experimental data, showing excellent agreement for a wide range of deformation rates and different load paths. We also show that the proposed model achieves excellent interpolation as well as plausible and accurate extrapolation behaviors. In addition, we demonstrate consistency of the PANN with linear viscoelasticity by linearization of the full model.

Country of Origin
🇩🇪 Germany

Page Count
33 pages

Category
Computer Science:
Computational Engineering, Finance, and Science