Inferring low-dimensional microstructure representations using convolutional neural networks

ORAL

Abstract

We apply recent advances in machine learning and computer vision to a central problem in materials informatics: The statistical representation of microstructural images. We use activations in a pre-trained convolutional neural network to provide a high-dimensional characterization of a set of synthetic microstructural images. Next, we use manifold learning to obtain a low-dimensional embedding of this statistical characterization. We show that the low-dimensional embedding extracts the parameters used to generate the images. According to a variety of metrics, the convolutional neural network method yields dramatically better embeddings than the analogous method derived from two-point correlations alone.

Authors

  • Nicholas Lubbers

    Los Alamos National Laboratory

  • Turab Lookman

    Los Alamos National Laboratory, Los Alamos Natl Lab

  • Kipton Barros

    Los Alamos National Laboratory