Journal
MECHANICS OF MATERIALS
Volume 142, Issue -, Pages -Publisher
ELSEVIER
DOI: 10.1016/j.mechmat.2019.103280
Keywords
Multi-scale modeling; Uncertainty quantification; Polymeric nano-composites(PNCs); Heat conductivity; Stochastic modeling
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Funding
- China Scholarship Council (CSC)
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We propose a stochastic multi-scale method to quantify the most significant input parameters influencing the heat conductivity of polymeric nano-composites (PNCs) with clay reinforcement. Therefore, a surrogate based global sensitivity analysis is coupled with a hierarchical multi-scale method employing computational homogenization. The effect of the conductivity of the fibers and the matrix, the Kapitza resistance, volume fraction and aspect ratio on the 'macroscopic' conductivity of the composite is systematically studied. We show that all selected surrogate models yield consistently the conclusions that the most influential input parameters are the aspect ratio followed by the volume fraction. The Kapitza Resistance has no significant effect on the thermal conductivity of the PNCs. The most accurate surrogate model in terms of the R-2 value is the moving least square (MLS).
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