Deep learning prediction of stress fields in additively manufactured metals with intricate defect networks
Brendan P. Croom, Michael Berkson, Robert K. Mueller, Michael Presley,, Steven Storck

TL;DR
This paper presents a deep learning model that accurately predicts stress fields in additively manufactured metals with complex defect networks, enabling rapid assessment of mechanical integrity.
Contribution
The study introduces a modified U-Net CNN trained on a large dataset to predict stress responses in defected microstructures, outperforming existing methods.
Findings
The CNN accurately predicts stress fields in complex microstructures.
The model generalizes well to real AM microstructures.
Maximum stress increases linearly with pore fraction.
Abstract
In context of the universal presence of defects in additively manufactured (AM) metals, efficient computational tools are required to rapidly screen AM microstructures for mechanical integrity. To this end, a deep learning approach is used to predict the elastic stress fields in images of defect-containing metal microstructures. A large dataset consisting of the stress response of 100,000 random microstructure images is generated using high-resolution Fast Fourier Transform-based finite element (FFT-FE) calculations, which is then used to train a modified U-Net style convolutional neural network (CNN) model. The trained U-Net model more accurately predicted the stress response compared to alternative CNN architectures, exceeded the accuracy of low-resolution FFT-FE calculations, and was generalizable to microstructures with complex defect geometries. The model was applied to images of…
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Taxonomy
TopicsAdditive Manufacturing Materials and Processes · Industrial Vision Systems and Defect Detection · Welding Techniques and Residual Stresses
