TL;DR
This paper introduces a convolutional encoder-decoder deep learning model to accurately predict and analyze peak-stress clusters in heterogeneous microstructured materials, addressing a critical challenge in failure prediction.
Contribution
It develops a novel deep learning approach specifically targeting peak-stress cluster prediction, improving over prior work focused on overall stress fields.
Findings
Model accurately predicts geometric details of peak-stress clusters.
Performance improves for higher normalized peak stress values.
Method effectively distinguishes peak-stress regions in synthetic microstructures.
Abstract
This work presents a machine learning approach to predict peak-stress clusters in heterogeneous polycrystalline materials. Prior work on using machine learning in the context of mechanics has largely focused on predicting the effective response and overall structure of stress fields. However, their ability to predict peak stresses -- which are of critical importance to failure -- is unexplored, because the peak-stress clusters occupy a small spatial volume relative to the entire domain, and hence requires computationally expensive training. This work develops a deep-learning based Convolutional Encoder-Decoder method that focuses on predicting peak-stress clusters, specifically on the size and other characteristics of the clusters in the framework of heterogeneous linear elasticity. This method is based on convolutional filters that model local spatial relations between microstructures…
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