Stress Field Prediction in Cantilevered Structures Using Convolutional Neural Networks

August 27, 2018 ยท Entered Twilight ยท ๐Ÿ› Journal of Computing and Information Science in Engineering

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Authors Zhenguo Nie, Haoliang Jiang, Levent Burak Kara arXiv ID 1808.08914 Category cs.LG: Machine Learning Cross-listed stat.ML Citations 160 Venue Journal of Computing and Information Science in Engineering Repository https://github.com/zhenguonie/stress_net โญ 34 Last Checked 1 month ago
Abstract
The demand for fast and accurate structural analysis is becoming increasingly more prevalent with the advance of generative design and topology optimization technologies. As one step toward accelerating structural analysis, this work explores a deep learning based approach for predicting the stress fields in 2D linear elastic cantilevered structures subjected to external static loads at its free end using convolutional neural networks (CNN). Two different architectures are implemented that take as input the structure geometry, external loads, and displacement boundary conditions, and output the predicted von Mises stress field. The first is a single input channel network called SCSNet as the baseline architecture, and the second is the multi-channel input network called StressNet. Accuracy analysis shows that StressNet results in significantly lower prediction errors than SCSNet on three loss functions, with a mean relative error of 2.04% for testing. These results suggest that deep learning models may offer a promising alternative to classical methods in structural design and topology optimization. Code and dataset are available at https://github.com/zhenguonie/stress_net
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