Enhancing Mechanical Metamodels with a Generative Model-Based Augmented
Training Dataset
- URL: http://arxiv.org/abs/2203.04183v1
- Date: Tue, 8 Mar 2022 16:15:54 GMT
- Title: Enhancing Mechanical Metamodels with a Generative Model-Based Augmented
Training Dataset
- Authors: Hiba Kobeissi, Saeed Mohammadzadeh, Emma Lejeune
- Abstract summary: Microstructural patterns, which play a major role in defining the mechanical behavior of tissues, are difficult to simulate.
In this work, we investigate the efficacy of machine learning-based generative models as a tool for augmenting limited input pattern datasets.
We have created an open access dataset of Finite Element Analysis simulations based on Cahn-Hilliard patterns.
- Score: 0.7734726150561089
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Modeling biological soft tissue is complex in part due to material
heterogeneity. Microstructural patterns, which play a major role in defining
the mechanical behavior of these tissues, are both challenging to characterize,
and difficult to simulate. Recently, machine learning-based methods to predict
the mechanical behavior of heterogeneous materials have made it possible to
more thoroughly explore the massive input parameter space associated with
heterogeneous blocks of material. Specifically, we can train machine learning
(ML) models to closely approximate computationally expensive heterogeneous
material simulations where the ML model is trained on a dataset of simulations
that capture the range of spatial heterogeneity present in the material of
interest. However, when it comes to applying these techniques to biological
tissue more broadly, there is a major limitation: the relevant microstructural
patterns are both challenging to obtain and difficult to analyze. Consequently,
the number of useful examples available to characterize the input domain under
study is limited. In this work, we investigate the efficacy of ML-based
generative models as a tool for augmenting limited input pattern datasets. We
find that a Style-based Generative Adversarial Network with an adaptive
discriminator augmentation mechanism is able to successfully leverage just
1,000 example patterns to create meaningful generated patterns that can be used
as inputs to finite element simulations to augment the training dataset. To
enable this methodological contribution, we have created an open access dataset
of Finite Element Analysis simulations based on Cahn-Hilliard patterns. We
anticipate that future researchers will be able to leverage this dataset and
build on the work presented here.
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