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Towards surrogate modeling of material microstructures through the processing variables

Author

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  • Xia, Liang
  • Raghavan, Balaji
  • Breitkopf, Piotr

Abstract

In order to obtain high-performance materials, it is of significant importance to be able to depict the material microstructure corresponding to given values of processing variables in the manufacturing process. Conventional approaches require a knowledge of the internal mechanisms of the evolution in order to numerically simulate the microstructures. This work focuses instead on establishing a surrogate model in order to parameterize microstructures of Representative Volume Elements (RVE) using processing variables. The surrogate model requires a set of RVE microstructure snapshots generated experimentally or numerically. By using the Proper Orthogonal Decomposition (POD) method, the parametric space is developed using a series of approximated response surfaces of the POD projection coefficients. Thereafter, RVE microstructures may be parameterized for any given value of the processing variables. In addition, for the purpose of scaling down the storage requirement due to a high quality digital representation, the snapshots are given a bi-level reduced order epresentation in terms of the extracted common spatial and parametric bases. We showcase the approach by parameterizing Voronoi-simulated RVE microstructures under both uniaxial and biaxial conceptional compressions.

Suggested Citation

  • Xia, Liang & Raghavan, Balaji & Breitkopf, Piotr, 2017. "Towards surrogate modeling of material microstructures through the processing variables," Applied Mathematics and Computation, Elsevier, vol. 294(C), pages 157-168.
  • Handle: RePEc:eee:apmaco:v:294:y:2017:i:c:p:157-168
    DOI: 10.1016/j.amc.2016.08.056
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