Computing mechanical response variability of polycrystalline microstructures through dimensionality reduction techniques

نویسندگان

  • Zheng Li
  • Bin Wen
  • Nicholas Zabaras
چکیده

Many areas of material science involve analyzing and linking the material microstructure with macroscale properties. Constructing low-dimensional representations of microstructure variations would greatly simplify and accelerate materials design and analysis tasks. We develop a mathematical strategy for the data-driven generation of low-dimensional models that represents the variability in polycrystal microstructures while maintaining the statistical properties that these microstructures satisfy. This strategy is based on a nonlinear dimensionality reduction framework that maps the space of viable grain size variability of microstructures to a low-dimensional region and a linear dimensionality reduction technique (Karhunen–Loève Expansion) to reduce the texture representation. This methodology allows us to sample microstructure features in the reduced-order space thus making it a highly efficient, lowdimensional surrogate for representing microstructures (grain size and texture). We demonstrate the model reduction approach with polycrystal microstructures and compute the variability of homogenized properties using a sparse grid collocation approach in the reduced-order space that describes the grain size and orientation variability. 2010 Elsevier B.V. All rights reserved.

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تاریخ انتشار 2010