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Predicting Oxidation Behavior of Multi-Principal Element Alloys by Machine Learning Methods
被引:0
|作者:
Jose A. Loli
Amish R. Chovatiya
Yining He
Zachary W. Ulissi
Maarten P. de Boer
Bryan A. Webler
机构:
[1] Carnegie Mellon University,Department of Mechanical Engineering
[2] Carnegie Mellon University,Department of Chemical Engineering
[3] Carnegie Mellon University,Department of Material Science Engineering
来源:
关键词:
High-temperature oxidation;
Machine learning;
Multi-principal element alloys;
CALPHAD;
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摘要:
In this work, we operate on a small dataset available from the technical literature to predict the oxidation-induced mass change at 1000 °C of thousands of new alloy compositions using “Tree-based Pipeline Optimization Tool” , an automated machine learning (ML) method. The ML pipeline we develop is trained on the log10 of the mass change per unit area. This yields a mean absolute error of 0.34 on the test set’s values, which span 3.5 decades. With additional insights from thermodynamic simulations, a set of seven alloys is selected, manufactured, and characterized. Of these, the oxidation behavior of five alloys is well-predicted by the ML-based model, while results for two alloys show orders of magnitude deviations from predictions. The results show that ML-based methods can be useful for predicting composition-dependent oxidation behavior, despite its many complexities.
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页码:429 / 450
页数:21
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