Bayesian neural networks for predicting uncertainty in full-field material response
George D. Pasparakis, Lori Graham-Brady, Michael D. Shields

TL;DR
This paper introduces a Bayesian neural network framework for predicting stress fields in materials and quantifying uncertainty, offering a computationally efficient alternative to finite element analysis with reliable uncertainty estimates.
Contribution
It develops a Bayesian U-net architecture with multiple inference algorithms to provide accurate stress predictions and uncertainty quantification for complex microstructures.
Findings
High accuracy in stress prediction compared to FEA
Hamiltonian Monte Carlo and Bayes by Backprop yield consistent uncertainty estimates
Monte Carlo Dropout's uncertainty estimates are less reliable
Abstract
Stress and material deformation field predictions are among the most important tasks in computational mechanics. These predictions are typically made by solving the governing equations of continuum mechanics using finite element analysis, which can become computationally prohibitive considering complex microstructures and material behaviors. Machine learning (ML) methods offer potentially cost effective surrogates for these applications. However, existing ML surrogates are either limited to low-dimensional problems and/or do not provide uncertainty estimates in the predictions. This work proposes an ML surrogate framework for stress field prediction and uncertainty quantification for diverse materials microstructures. A modified Bayesian U-net architecture is employed to provide a data-driven image-to-image mapping from initial microstructure to stress field with prediction (epistemic)…
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Taxonomy
TopicsStructural Health Monitoring Techniques
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · Convolution · Max Pooling · U-Net · Dropout · Monte Carlo Dropout
