July 15, 2021
Journal Article

Predicting material microstructure evolution via data-driven machine learning

Abstract

The recent rapid rise in data-driven practices in the materials science domain has led to the development of efficient, generalizable, and accurate approaches for several applications, including: material property prediction, mining (micro)structure- property and (micro)structure-processing relationships, and characterization of material microstructures. Central to the materials science domain is linking microstructure to properties and performance, and critical to building such linkages is understanding how microstructures evolve as a function of environmental exposure or processing conditions (e.g., time, temperature, applied stress or strain, irradiation). This preview article summarizes recent work on the development of recurrent neural networks for predicting spatio-temporal microstructure evolution detailed by Yang et al in their manuscript entitled 'Self-supervised Learning and Prediction of Microstructure Evolution with Recurrent Neural Networks'.

Published: July 15, 2021

Citation

Kautz E.J. 2021. Predicting material microstructure evolution via data-driven machine learning. Patterns 2, no. 7:Article No.100285. PNNL-SA-161929. doi:10.1016/j.patter.2021.100285