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A Manifold Learning Approach for Integrated Computational Materials Engineering

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出版社

SPRINGER
DOI: 10.1007/s11831-016-9172-5

关键词

Real time thermal simulation; Composite materials; Model order reduction; Computational homogenization; Locally linear embedding; Machine learning; Manifold learning

资金

  1. Spanish Ministry of Science and Competitiveness [CICYT-DPI2014-51844-C2-1-R]
  2. Institut Universitaire de France

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Image-based simulation is becoming an appealing technique to homogenize properties of real microstructures of heterogeneous materials. However fast computation techniques are needed to take decisions in a limited time-scale. Techniques based on standard computational homogenization are seriously compromised by the real-time constraint. The combination of model reduction techniques and high performance computing contribute to alleviate such a constraint but the amount of computation remains excessive in many cases. In this paper we consider an alternative route that makes use of techniques traditionally considered for machine learning purposes in order to extract the manifold in which data and fields can be interpolated accurately and in real-time and with minimum amount of online computation. Locallly Linear Embedding is considered in this work for the real-time thermal homogenization of heterogeneous microstructures.

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