October 7, 2020
Journal Article

Image-driven discriminative and generative machine learning algorithms for establishing microstructure-processing relationships

Abstract

We investigate methods of microstructure representation for the purpose of predicting processing condition from microstructure image data. A binary alloy that is currently under development as a nuclear fuel was studied for the purpose of developing an improved machine learning approach to image recognition, characterization, and building predictive capabilities linking microstructure to processing conditions. Here, we test different microstructure representations and evaluate model performance based on classification accuracy. A classification accuracy of 95.8% was achieved fordistinguishing between micrographs corresponding to ten different thermo-mechanical material processing conditions.We find that our newly developed microstructure representation describes image data well, and the traditional approachof utilizing area fractions of different phases is insufficient for distinguishing between multiple classes using a relativelysmall, imbalanced original data set of 272 images. To explore the applicability of generative methods for supplementing such limited data sets, generative adversarial networks were trained to generate artificial microstructure images. Two different generative networks were trained and tested to assess performance. Challenges and best practices associated with applying machine learning to limited microstructure image data sets is also discussed. Our work has implications for quantitative microstructure analysis, and development of microstructure-processing relationships in limited data sets typical of metallurgical process design studies.

Revised: November 2, 2020 | Published: October 7, 2020

Citation

Ma W., E.J. Kautz, A. Baskaran, A. Chowdhury, V.V. Joshi, B. Yener, and D.J. Lewis. 2020. Image-driven discriminative and generative machine learning algorithms for establishing microstructure-processing relationships. Journal of Applied Physics 128, no. 13:Article No. 134901. PNNL-SA-153190. doi:10.1063/5.0013720