2021
DOI: 10.48550/arxiv.2107.00090
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Mesh-based graph convolutional neural networks for modeling materials with microstructure

Abstract: Predicting the evolution of a representative sample of a material with microstructure is a fundamental problem in homogenization. In this work we propose a graph convolutional neural network that utilizes the discretized representation of the initial microstructure directly, without segmentation or clustering. Compared to feature-based and pixel-based convolutional neural network models, the proposed method has a number of advantages: (a) it is deep in that it does not require featurization but can benefit fro… Show more

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References 56 publications
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