Surrogate models in machine learning for computational stochastic multi-scale modelling in composite materials design

B Liu, W Lu - International Journal of Hydromechatronics, 2022 - inderscienceonline.com
International Journal of Hydromechatronics, 2022inderscienceonline.com
We propose a computational framework using surrogate models through five steps, which
can systematically and comprehensively address a number of related stochastic multi-scale
issues in composites design. We then used this framework to conduct an implementation in
nano-composite. Uncertain input parameters at different scales are propagated within a
bottom-up multi-scale framework. Representative volume elements in the context of finite
element modelling (RVE-FEM) are used to finally obtain the homogenised thermal …
We propose a computational framework using surrogate models through five steps, which can systematically and comprehensively address a number of related stochastic multi-scale issues in composites design. We then used this framework to conduct an implementation in nano-composite. Uncertain input parameters at different scales are propagated within a bottom-up multi-scale framework. Representative volume elements in the context of finite element modelling (RVE-FEM) are used to finally obtain the homogenised thermal conductivity. The input parameters are selected by a top-down scanning method and subsequently are converted as uncertain inputs. Machine learning approaches are exploited for computational efficiency, where particle swarm optimisation (PSO) and ten-fold cross validation (CV) are employed for hyper-parameter tuning. Our machine learning prediction results agree well with published experimental data, which proves our computational framework can be a versatile and efficient method to design new complex nano-composites.
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