2021
DOI: 10.2139/ssrn.3901939
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Deep Learning Approach for Chemistry and Processing History Prediction From Materials Microstructure: Application to Spinodal Decomposition

Abstract: Finding the chemical composition and processing history from a microstructure morphology for heterogeneous materials is desired in many applications. While the simulation methods based on physical concepts such as the phase-eld method can predict the spatio-temporal evolution of the materials' microstructure, they are not e cient techniques for predicting processing and chemistry if a speci c morphology is desired. In this study, we propose a framework based on a deep learning approach that enables us to predi… Show more

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