Viscoelasticty with physics-augmented neural networks: Model formulation and training methods without prescribed internal variables
Max Rosenkranz, Karl A. Kalina, J\"org Brummund, WaiChing Sun, and Markus K\"astner

TL;DR
This paper introduces a physics-augmented neural network approach for modeling nonlinear viscoelastic materials, enabling thermodynamically consistent predictions without predefined internal variables, using a novel recurrent training method.
Contribution
It develops a new recurrent neural network training method for viscoelastic models that automatically generates internal variables without prior assumptions.
Findings
Invariant-based formulation outperforms coordinate-based in robustness.
Recurrent cell training method is highly robust and versatile.
All methods achieve good accuracy with noisy data.
Abstract
We present an approach for the data-driven modeling of nonlinear viscoelastic materials at small strains which is based on physics-augmented neural networks (NNs) and requires only stress and strain paths for training. The model is built on the concept of generalized standard materials and is therefore thermodynamically consistent by construction. It consists of a free energy and a dissipation potential, which can be either expressed by the components of their tensor arguments or by a suitable set of invariants. The two potentials are described by fully/partially input convex neural networks. For training of the NN model by paths of stress and strain, an efficient and flexible training method based on a recurrent cell, particularly a long short-term memory cell, is developed to automatically generate the internal variable(s) during the training process. The proposed method is…
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Taxonomy
TopicsModel Reduction and Neural Networks · Elasticity and Material Modeling · Non-Destructive Testing Techniques
