Predicting Mechanically Driven Full-Field Quantities of Interest with
Deep Learning-Based Metamodels
- URL: http://arxiv.org/abs/2108.03995v1
- Date: Sat, 24 Jul 2021 00:43:49 GMT
- Title: Predicting Mechanically Driven Full-Field Quantities of Interest with
Deep Learning-Based Metamodels
- Authors: S. Mohammadzadeh and E. Lejeune
- Abstract summary: We extend the Mechanical MNIST dataset to enable the investigation of full field QoI prediction.
We establish strong baseline performance for predicting full-field QoI with MultiRes-WNet architecture.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Using simulation to predict the mechanical behavior of heterogeneous
materials has applications ranging from topology optimization to multi-scale
structural analysis. However, full-fidelity simulation techniques such as
Finite Element Analysis can be prohibitively computationally expensive when
they are used to explore the massive input parameter space of heterogeneous
materials. Therefore, there has been significant recent interest in machine
learning-based models that, once trained, can predict mechanical behavior at a
fraction of the computational cost. Over the past several years, research in
this area has been focused mainly on predicting single Quantities of Interest
(QoIs). However, there has recently been an increased interest in a more
challenging problem: predicting full-field QoI (e.g., displacement/strain
fields, damage fields) for mechanical problems. Due to the added complexity of
full-field information, network architectures that perform well on single QoI
problems may perform poorly in the full-field QoI problem setting. The work
presented in this paper is twofold. First, we made a significant extension to
the Mechanical MNIST dataset designed to enable the investigation of full field
QoI prediction. Specifically, we added Finite Element simulation results of
quasi-static brittle fracture in a heterogeneous material captured with the
phase-field method. Second, we established strong baseline performance for
predicting full-field QoI with MultiRes-WNet architecture. In addition to
presenting the results in this paper, we have released our model implementation
and the Mechanical MNIST Crack Path dataset under open-source licenses. We
anticipate that future researchers will directly use our model architecture on
related datasets and potentially design models that exceed the baseline
performance for predicting full-field QoI established in this paper.
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