期刊
COMPOSITE STRUCTURES
卷 321, 期 -, 页码 -出版社
ELSEVIER SCI LTD
DOI: 10.1016/j.compstruct.2023.117257
关键词
Finite element analysis; Machine learning; Markov chain Monte Carlo; Open-hole tension
This study combines finite element analysis, machine learning, and Markov Chain Monte Carlo to estimate the probability density of input parameters for progressive damage simulation in fiber-reinforced composites. By conducting numerous FEA simulations with randomly varying input parameters and using synthetic data to train a neural network, a highly efficient surrogate model is developed. The application of Markov Chain Monte Carlo algorithms, along with statistical test data from experiments, enables Bayesian parameter estimation and determination of virtual design allowables.
Despite gradual progress over the past decades, the simulation of progressive damage in composite laminates remains a challenging task, in part due to inherent uncertainties of material properties. This paper combines three computational methods - finite element analysis (FEA), machine learning and Markov Chain Monte Carlo - to estimate the probability density of FEA input parameters while accounting for the variation of mechanical properties. First, 15,000 FEA simulations of open-hole tension tests are carried out with randomly varying input parameters by applying continuum damage mechanics material models. This synthetically generated data is then used to train and validate a neural network consisting of five hidden layers and 32 nodes per layer to develop a highly efficient surrogate model. With this surrogate model and the incorporation of statistical test data from experiments, the application of Markov Chain Monte Carlo algorithms enables Bayesian parameter estimation to learn the probability density of input parameters for the simulation of progressive damage evolution in fibre reinforced composites. This methodology is validated against various open-hole tension test geometries enabling the determination of virtual design allowables.
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