Viscoelastic Constitutive Artificial Neural Networks (vCANNs) $-$ a
framework for data-driven anisotropic nonlinear finite viscoelasticity
- URL: http://arxiv.org/abs/2303.12164v1
- Date: Tue, 21 Mar 2023 19:45:59 GMT
- Title: Viscoelastic Constitutive Artificial Neural Networks (vCANNs) $-$ a
framework for data-driven anisotropic nonlinear finite viscoelasticity
- Authors: Kian P. Abdolazizi, Kevin Linka, Christian J. Cyron
- Abstract summary: We introduce viscoelastic Constitutive Artificial Neural Networks (vCANNs)
vCANNs are a novel physics-informed machine learning framework for anisotropic nonlinear viscoity at finite strains.
We demonstrate that vCANNs can learn to capture the behavior of all these materials accurately and efficiently without human guidance.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The constitutive behavior of polymeric materials is often modeled by finite
linear viscoelastic (FLV) or quasi-linear viscoelastic (QLV) models. These
popular models are simplifications that typically cannot accurately capture the
nonlinear viscoelastic behavior of materials. For example, the success of
attempts to capture strain rate-dependent behavior has been limited so far. To
overcome this problem, we introduce viscoelastic Constitutive Artificial Neural
Networks (vCANNs), a novel physics-informed machine learning framework for
anisotropic nonlinear viscoelasticity at finite strains. vCANNs rely on the
concept of generalized Maxwell models enhanced with nonlinear strain
(rate)-dependent properties represented by neural networks. The flexibility of
vCANNs enables them to automatically identify accurate and sparse constitutive
models of a broad range of materials. To test vCANNs, we trained them on
stress-strain data from Polyvinyl Butyral, the electro-active polymers VHB 4910
and 4905, and a biological tissue, the rectus abdominis muscle. Different
loading conditions were considered, including relaxation tests, cyclic
tension-compression tests, and blast loads. We demonstrate that vCANNs can
learn to capture the behavior of all these materials accurately and
computationally efficiently without human guidance.
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