TY - JOUR
T1 - Processing Time, Temperature, and Initial Chemical Composition Prediction from Materials Microstructure by Deep Network for Multiple Inputs and Fused Data
AU - Farizhandi, Amir Abbas Kazemzadeh
AU - Mamivand, Mahmood
N1 - Publisher Copyright:
© 2022 The Authors
PY - 2022/7
Y1 - 2022/7
N2 - Prediction of the chemical composition and processing history from microstructure morphology can help in material inverse design. In this work, we propose a fused-data deep learning framework that can predict the processing history of a microstructure. We used the Fe-Cr-Co alloys as a model material. The developed framework is able to predict the heat treatment time, temperature, and initial chemical compositions by reading the morphology of Fe distribution and its concentration. The results show that the trained deep neural network has the highest accuracy for chemistry and then time and temperature. We identified two scenarios for inaccurate predictions; 1) There are several paths for an identical microstructure, 2) Microstructures reach steady-state morphologies after a long time of aging. The error analysis shows that the majority of the wrong predictions are indeed not wrong, but the other right answers. We validated the model successfully with an experimental Fe-Cr-Co transmission electron microscopy micrograph.
AB - Prediction of the chemical composition and processing history from microstructure morphology can help in material inverse design. In this work, we propose a fused-data deep learning framework that can predict the processing history of a microstructure. We used the Fe-Cr-Co alloys as a model material. The developed framework is able to predict the heat treatment time, temperature, and initial chemical compositions by reading the morphology of Fe distribution and its concentration. The results show that the trained deep neural network has the highest accuracy for chemistry and then time and temperature. We identified two scenarios for inaccurate predictions; 1) There are several paths for an identical microstructure, 2) Microstructures reach steady-state morphologies after a long time of aging. The error analysis shows that the majority of the wrong predictions are indeed not wrong, but the other right answers. We validated the model successfully with an experimental Fe-Cr-Co transmission electron microscopy micrograph.
KW - Deep learning
KW - Materials informatics
KW - Microstructure-mediated materials design
KW - Process history prediction
KW - Transfer learning
UR - http://www.scopus.com/inward/record.url?scp=85131946527&partnerID=8YFLogxK
UR - https://scholarworks.boisestate.edu/mecheng_facpubs/142
U2 - 10.1016/j.matdes.2022.110799
DO - 10.1016/j.matdes.2022.110799
M3 - Article
SN - 0264-1275
VL - 219
JO - Materials and Design
JF - Materials and Design
M1 - 110799
ER -