English

A Conditional Generative Model for Predicting Material Microstructures from Processing Methods

Image and Video Processing 2019-10-08 v1 Materials Science Machine Learning Machine Learning

Abstract

Microstructures of a material form the bridge linking processing conditions - which can be controlled, to the material property - which is the primary interest in engineering applications. Thus a critical task in material design is establishing the processing-structure relationship, which requires domain expertise and techniques that can model the high-dimensional material microstructure. This work proposes a deep learning based approach that models the processing-structure relationship as a conditional image synthesis problem. In particular, we develop an auxiliary classifier Wasserstein GAN with gradient penalty (ACWGAN-GP) to synthesize microstructures under a given processing condition. This approach is free of feature engineering, requires modest domain knowledge and is applicable to a wide range of material systems. We demonstrate this approach using the ultra high carbon steel (UHCS) database, where each microstructure is annotated with a label describing the cooling method it was subjected to. Our results show that ACWGAN-GP can synthesize high-quality multiphase microstructures for a given cooling method.

Keywords

Cite

@article{arxiv.1910.02133,
  title  = {A Conditional Generative Model for Predicting Material Microstructures from Processing Methods},
  author = {Akshay Iyer and Biswadip Dey and Arindam Dasgupta and Wei Chen and Amit Chakraborty},
  journal= {arXiv preprint arXiv:1910.02133},
  year   = {2019}
}
R2 v1 2026-06-23T11:35:00.712Z