Computing mechanical response variability of polycrystalline microstructures through dimensionality reduction techniques
نویسندگان
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.
منابع مشابه
Thermal Response Variability of Random Polycrystalline Microstructures
A data-driven model reduction strategy is presented for the representation of random polycrystal microstructures. Given a set of microstructure snapshots that satisfy certain statistical constraints such as given low-order moments of the grain size distribution, using a non-linear manifold learning approach, we identify the intrinsic low-dimensionality of the microstructure manifold. In additio...
متن کاملAn image-based method for modeling the elasto-plastic behavior of polycrystalline microstructures based on the fast Fourier transform
An efficient full-field method of computing the local and homogenized macroscopic responses of elasto-plastic polycrystalline microstructures based on the fast Fourier transform (FFT) algorithm is presented. This approach takes realistic microstructure images as the input and estimates the mechanical response/properties of polycrystal microstructures under periodic boundary conditions without r...
متن کاملOn the design of polycrystalline materials with an integration of multiscale modeling and statistical learning
A sophisticated though efficient and accurate multiscale stochastic framework for uncertainty quantification has been developed to investigate the mechanical property variability of polycrystalline materials due to diverse sources of uncertainties. Crystal plasticity constitutive model is employed as the point simulator to capture the mechanical response of polycrystalline microstructures under...
متن کاملA multiscale approach for model reduction of random microstructures
The mechanical properties of a deformed workpiece are sensitive to the initial microstructure. Often, the initial microstructure is random in nature and location specific. To model the variability of properties of the workpiece induced by variability in the initial microstructure, one needs to develop a reduced order stochastic input model for the initial microstructure. The location-dependence...
متن کامل2D Dimensionality Reduction Methods without Loss
In this paper, several two-dimensional extensions of principal component analysis (PCA) and linear discriminant analysis (LDA) techniques has been applied in a lossless dimensionality reduction framework, for face recognition application. In this framework, the benefits of dimensionality reduction were used to improve the performance of its predictive model, which was a support vector machine (...
متن کامل