Unpublished conference/Abstract (Scientific congresses and symposiums)
Data driven computational analysis of open foam RVEs
Kilingar, Nanda Gopala; Noels, Ludovic; Massart, Thierry Jacques et al.
2019Computational Methods in Multiscale, multi-uncertainity and multi-physics problems conference
 

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Keywords :
data driven; open foam; representational volume elements
Abstract :
[en] An automated approach, that relies on the use of distance and level set functions as explained in [1], has been described in [2] to build computationally Representative Volume Elements (RVE) of open foam materials, enabling the study of the effects of the microstructural features on the macroscopic behavior. These models have been compared with real foam samples from existing literature to verify statistically the morphological properties like face-to-cell ratio, edge-to-face ratio and strut length distribution along with the variations in the strut morphology like the shape of cross-sections of the struts and their variation along the axis of the struts. The responses obtained from a uniaxial compression test of the sample RVEs have been validated against the experimental observations and the results have showed close similarity with respect to the variations in the foam density. This approach enables us to generate multiple Stochastic volume elements (SVE) and get their material response in a short period of time. In [3], the authors have taken inspiration from artificial neural network concepts and used linear elastic RVE data to train a material network to describe complex material behavior. They have also validated the extrapolations of the trained network to a wide range of problems, including non-linear history-dependent plasticity and finite-strain hyper-elasticity under large deformations. In the current work, the goal is to utilize the material responses obtained from the SVEs as the prespecified material data set ( Figure 1 ) and investigate the performance of various data-driven solvers on these data sets in order to eliminate the experimental testing altogether with the knowledge that the material response is in close agreement to that of the RVEs.
Research center :
A&M - Aérospatiale et Mécanique - ULiège
Disciplines :
Computer science
Materials science & engineering
Mechanical engineering
Author, co-author :
Kilingar, Nanda Gopala ;  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)
Massart, Thierry Jacques;  Université Libre de Bruxelles - ULB > Building, Architecture & Town Planning Dept > Structural and Material Computational mechanics
Ehab Moustafa Kamel, Karim;  Université Libre de Bruxelles - ULB > Building, Architecture & Town Planning Dept. > Structural and Material Computational Mechanics
Sonon, Bernard;  Université Libre de Bruxelles - ULB > Building, Architecture and Town Planning Dept. > Structural and Material Computational Mechanics
Leblanc, Christophe  ;  Université de Liège - ULiège > Département d'aérospatiale et mécanique > Conception géométrique assistée par ordinateur
Jung, Anne;  Saarland University > Department of Material Science and Engineering > Chair of Engineering Mechanics
Language :
English
Title :
Data driven computational analysis of open foam RVEs
Publication date :
17 July 2019
Event name :
Computational Methods in Multiscale, multi-uncertainity and multi-physics problems conference
Event organizer :
ECCOMAS
University of Porto
Event place :
Porto, Portugal
Event date :
15-17 July 2019
Audience :
International
Name of the research project :
Enlightenit
Funders :
F.R.S.-FNRS - Fonds de la Recherche Scientifique [BE]
Available on ORBi :
since 23 August 2019

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