Back to Search Start Over

Bayesian Identification of Mean-Field Homogenization model parameters and uncertain matrix behavior in non-aligned short fiber composites

Authors :
Service public de Wallonie : Direction générale opérationnelle de l'économie, de l'emploi et de la recherche - DG06 [sponsor]
Mahamedou, Mohamed
Zulueta Uriondo, Kepa
Chung, Chi Nghia
Rappel, Hussein
Beex, Lars
Adam, Laurent
Arriaga, Aitor
Major, Zoltan
Wu, Ling
Noels, Ludovic
Service public de Wallonie : Direction générale opérationnelle de l'économie, de l'emploi et de la recherche - DG06 [sponsor]
Mahamedou, Mohamed
Zulueta Uriondo, Kepa
Chung, Chi Nghia
Rappel, Hussein
Beex, Lars
Adam, Laurent
Arriaga, Aitor
Major, Zoltan
Wu, Ling
Noels, Ludovic
Publication Year :
2019

Abstract

We present a stochastic approach combining Bayesian Inference (BI) with homogenization theories in order to identify, on the one hand, the parameters inherent to the model assumptions and, on the other hand, the composite material constituents behaviors, including their variability. In particular, we characterize the model parameters of a Mean-Field Homogenization (MFH) model and the elastic matrix behavior, including the inherent dispersion in its Young's modulus, of non-aligned Short Fibers Reinforced Polymer (SFRP) composites. The inference is achieved by considering as observations experimental tests conducted at the SFRP composite coupons level. The inferred model and material law parameters can in turn be used in Mean-Field Homogenization (MFH)-based multi-scale simulations and can predict the confidence range of the composite material responses.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1134888912
Document Type :
Electronic Resource