A graph-based probabilistic geometric deep learning framework with online enforcement of physical constraints to predict the criticality of defects in porous materials
Vasilis Krokos, St\'ephane P. A. Bordas, Pierre Kerfriden

TL;DR
This paper introduces a graph neural network framework for 3D stress prediction in porous materials, combining probabilistic modeling with online physics-based corrections to improve accuracy and computational efficiency.
Contribution
The paper presents a novel GNN-based approach for 3D stress prediction that incorporates online physics-based corrections using an Ensemble Kalman algorithm.
Findings
Efficient 3D stress prediction using surface-based GNNs.
Probabilistic stress field densities with credible intervals.
Improved prediction accuracy through online physics-based corrections.
Abstract
Stress prediction in porous materials and structures is challenging due to the high computational cost associated with direct numerical simulations. Convolutional Neural Network (CNN) based architectures have recently been proposed as surrogates to approximate and extrapolate the solution of such multiscale simulations. These methodologies are usually limited to 2D problems due to the high computational cost of 3D voxel based CNNs. We propose a novel geometric learning approach based on a Graph Neural Network (GNN) that efficiently deals with three-dimensional problems by performing convolutions over 2D surfaces only. Following our previous developments using pixel-based CNN, we train the GNN to automatically add local fine-scale stress corrections to an inexpensively computed coarse stress prediction in the porous structure of interest. Our method is Bayesian and generates densities of…
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Taxonomy
TopicsMachine Learning in Materials Science · Medical Image Segmentation Techniques
