Data-Driven Microstructure Property Relations
An image based prediction of the effective heat conductivity for highly heterogeneous microstructured materials is presented. The synthetic materials under consideration show different inclusion morphology, orientation, volume fraction and topology. The prediction of the effective property is made e...
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Zusammenfassung: | An image based prediction of the effective heat conductivity for highly
heterogeneous microstructured materials is presented. The synthetic materials
under consideration show different inclusion morphology, orientation, volume
fraction and topology. The prediction of the effective property is made
exclusively based on image data with the main emphasis being put on the 2-point
spatial correlation function. This task is implemented using both unsupervised
and supervised machine learning methods. First, a snapshot proper orthogonal
decomposition (POD) is used to analyze big sets of random microstructures and
thereafter compress significant characteristics of the microstructure into a
low-dimensional feature vector. In order to manage the related amount of data
and computations, three different incremental snapshot POD methods are
proposed. In the second step, the obtained feature vector is used to predict
the effective material property by using feed forward neural networks.
Numerical examples regarding the incremental basis identification and the
prediction accuracy of the approach are presented. A Python code illustrating
the application of the surrogate is freely available. |
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DOI: | 10.48550/arxiv.1903.10841 |