Comptes Rendus
Data-driven computation for history-dependent materials
Comptes Rendus. Mécanique, Volume 347 (2019) no. 11, pp. 831-844.

This paper introduces a new vision of data-driven structure computation taking advantage of Material Science, especially for highly nonlinear and time-dependent material behaviours. Technical solutions are also derived, in order to build internal hidden variables defining the so-called “Experimental Constitutive Manifold”.

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Accepté le :
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DOI : 10.1016/j.crme.2019.11.008
Mots clés : Data-driven, History-dependent materials, Computational mechanics, Big data, Experimental constitutive manifold, Material mechanics

Pierre Ladevèze 1 ; David Néron 1 ; Paul-William Gerbaud 1

1 LMT (ENS Paris-Saclay, CNRS, Université Paris-Saclay), 61, av. du Président-Wilson, 94235 Cachan, France
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Pierre Ladevèze; David Néron; Paul-William Gerbaud. Data-driven computation for history-dependent materials. Comptes Rendus. Mécanique, Volume 347 (2019) no. 11, pp. 831-844. doi : 10.1016/j.crme.2019.11.008. https://comptes-rendus.academie-sciences.fr/mecanique/articles/10.1016/j.crme.2019.11.008/

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