# Stochastic multiscale modeling of polycrystalline materials

@inproceedings{Wen2013StochasticMM, title={Stochastic multiscale modeling of polycrystalline materials}, author={Bin Wen}, year={2013} }

- Published 2013

Abstract : Mechanical properties of engineering materials are sensitive to the underlying random microstructure. Quantification of mechanical property variability induced by microstructure variation is essential for the prediction of extreme properties and microstructure-sensitive design of materials. Recent advances in high throughput characterization of polycrystalline microstructures have resulted in huge data sets of microstructural descriptors and image snapshots. To utilize these large… CONTINUE READING

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