Constitutive model characterization and discovery using physics-informed
deep learning
- URL: http://arxiv.org/abs/2203.09789v1
- Date: Fri, 18 Mar 2022 08:10:02 GMT
- Title: Constitutive model characterization and discovery using physics-informed
deep learning
- Authors: Ehsan Haghighat, Sahar Abouali, Reza Vaziri
- Abstract summary: We propose a novel approach based on the physics-informed learning machines for the characterization and discovery of models.
We demonstrate that our proposed framework can efficiently identify the underlying model describing datasets different from the von Mises family.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Classically, the mechanical response of materials is described through
constitutive models, often in the form of constrained ordinary differential
equations. These models have a very limited number of parameters, yet, they are
extremely efficient in reproducing complex responses observed in experiments.
Additionally, in their discretized form, they are computationally very
efficient, often resulting in a simple algebraic relation, and therefore they
have been extensively used within large-scale explicit and implicit finite
element models. However, it is very challenging to formulate new constitutive
models, particularly for materials with complex microstructures such as
composites. A recent trend in constitutive modeling leverages complex neural
network architectures to construct complex material responses where a
constitutive model does not yet exist. Whilst very accurate, they suffer from
two deficiencies. First, they are interpolation models and often do poorly in
extrapolation. Second, due to their complex architecture and numerous
parameters, they are inefficient to be used as a constitutive model within a
large-scale finite element model. In this study, we propose a novel approach
based on the physics-informed learning machines for the characterization and
discovery of constitutive models. Unlike data-driven constitutive models, we
leverage foundations of elastoplasticity theory as regularization terms in the
total loss function to find parametric constitutive models that are also
theoretically sound. We demonstrate that our proposed framework can efficiently
identify the underlying constitutive model describing different datasets from
the von Mises family.
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