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Title
NN-EUCLID: Deep-learning hyperelasticity without stress data
Authors
Keywords
-
Journal
JOURNAL OF THE MECHANICS AND PHYSICS OF SOLIDS
Volume 169, Issue -, Pages 105076
Publisher
Elsevier BV
Online
2022-09-22
DOI
10.1016/j.jmps.2022.105076
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