A Fuzzy-Stochastic Multiscale Model for Fiber Composites: A one-dimensional study
Ivo Babuska, Mohammad Motamed

TL;DR
This paper introduces a fuzzy-stochastic multiscale model for fiber composites that better captures uncertainties, combining microstructural effects with a global-local computational approach validated by experimental data.
Contribution
It presents a novel fuzzy-stochastic modeling framework that integrates imprecise uncertainty theory with multiscale analysis for fiber-reinforced composites.
Findings
Fuzzy-stochastic model more accurately characterizes uncertainties.
Global-local algorithm efficiently computes local deformation.
Model validated with real experimental data.
Abstract
We study mathematical and computational models for computing the deformation of fiber-reinforced cross-plied laminates due to external forces. This requires an understanding of both micro-structural effects and different sources of uncertainty in the problem. We first show that the uncertainties in the problem are of both statistical (aleatoric) and systematic (epistemic) types and that current multiscale stochastic models, such as stationary random fields, which are based on precise probability theory, are not capable of correctly characterizing uncertainty in fiber composites. Next, we motivate the applicability of models based on imprecise uncertainty theory and present a novel fuzzy-stochastic model, which can more accurately describe uncertainties in fiber composites. The new model is constructed by combining stochastic fields and fuzzy variables through a simple…
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