Communication orale non publiée/Abstract (Colloques et congrès scientifiques)
Recurrent Neural Networks (RNNs) with dimension reduction and break down in the context of high dimensional localization step in multi-scale analysis
Wu, Ling; Noels, Ludovic
202218th European Mechanics of Materials Conference (EMMC18)
 

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Mots-clés :
Multiscale; Neural-Network; Elasto-plasticity; composites; Machine learning
Résumé :
[en] Artificial Neural Networks (NNWs) are appealing tools to serve as surrogate model of high dimensional and non-linear history-dependent problems in computational mechanics, in particular in multi-scale methods. Indeed, as shown in [1] once properly trained, they replace expensive micro-scale finite element resolutions allowing reducing the computational time by more than 4 orders of magnitude. Nevertheless, such a paradigm is essentially used as a mapping between the macro-stress and macro-strain tensors of the micro-scale boundary value response and the micro-structure information could not be recovered in a so-called localization step. In this talk, we present a Recurrent Neural Networks (RNNs)-based surrogate of the micro-scale boundary value problem, while being able to recover the evolution of the local micro-structure state variables for complex loading scenarios [2]. In order to address the curse of dimensionality arising because of the large amount of internal state variables in the micro-structure, we enrich the RNN with PCA dimension reduction and dimension break down, i.e. the use of several RNNs instead of a single one. Besides, the sequential training strategy is optimized in order to allow for GPU usage. [1] L. Wu, V.-D. Nguyen, N.G. Kilingar and L. Noels, Computer Methods in Applied Mechanics and Engineering, 360:113234, 2020. [2] L. Wu, L. Noels, Recurrent Neural Networks (RNNs) in computational mechanics for high dimensional problems: RNNs structure design through dimension reduction and break down; application to multi-scale localization step. Submitted.
Disciplines :
Ingénierie mécanique
Ingénierie mécanique
Ingénierie aérospatiale
Auteur, co-auteur :
Wu, Ling ;  Université de Liège - ULiège > Département d'aérospatiale et mécanique > Computational & Multiscale Mechanics of Materials (CM3)
Noels, Ludovic  ;  Université de Liège - ULiège > Département d'aérospatiale et mécanique > Computational & Multiscale Mechanics of Materials (CM3)
Langue du document :
Anglais
Titre :
Recurrent Neural Networks (RNNs) with dimension reduction and break down in the context of high dimensional localization step in multi-scale analysis
Date de publication/diffusion :
04 avril 2022
Nom de la manifestation :
18th European Mechanics of Materials Conference (EMMC18)
Organisateur de la manifestation :
EuroMech
Lieu de la manifestation :
Oxford, Royaume-Uni
Date de la manifestation :
4-6 April 2022
Manifestation à portée :
International
Projet européen :
H2020 - 862015 - MOAMMM - Multi-scale Optimisation for Additive Manufacturing of fatigue resistant shock-absorbing MetaMaterials
Intitulé du projet de recherche :
MOAMMM
Organisme subsidiant :
EC - European Commission [BE]
N° du Fonds :
862015
Subventionnement (détails) :
This project has received funding from the European Union´s Horizon 2020 research and innovation programme under grant agreement No. 862015 for the project “Multiscale Optimisation for Additive Manufacturing of fatigue resistant shock-absorbing MetaMaterials (MOAMMM)” of the H2020-EU.1.2.1. - FET Open Programme.
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depuis le 12 avril 2022

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