journal article Jun 01, 2019

Using convolutional neural networks to predict composite properties beyond the elastic limit

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Details
Published
Jun 01, 2019
Vol/Issue
9(2)
Pages
609-617
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Funding
National Research Foundation of Korea
NSF Extreme Science and Engineering Discovery Environment (XSEDE)
Cite This Article
Charles Yang, Youngsoo Kim, Sang Baek Ryu, et al. (2019). Using convolutional neural networks to predict composite properties beyond the elastic limit. MRS Communications, 9(2), 609-617. https://doi.org/10.1557/mrc.2019.49
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