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Accelerating phase prediction of refractory high entropy alloys via machine learning

Nan Qu, Yan Zhang, Yong Liu, Mingqing Liao, Tianyi Han, Danni Yang, Zhonghong Lai, Jingchuan Zhu, Liang Yu

2022Physica Scripta12 citationsDOI

Abstract

Abstract The unique high-temperature properties of refractory high entropy alloys (HEAs) are mainly depended on their phase formation. Therefore, a new approach to predict the phase formation has to be proposed, in order to accelerate the development of refractory HEAs. Here, we use machine learning to build classifiers to predict the phase formation in refractory HEAs. Our dataset containing 271 data only consists of as-cast refractory HEAs data. We simplify the input parameters to element content, and refine the phase formation outputs into five classes. Decision tree has been employed to build our phase classifier, due to its great advantages in solving classification problem. Both training and test accuracy of phase formation prediction achieve 90% using our classifier. The five single phase prediction accuracies are above 97%. Our phase classifier performs effectively in multi-phases classification and prediction of refractory HEAs, and establishes a direct relation between compositions and refractory phase formation.

Topics & Concepts

High entropy alloysRefractory (planetary science)Materials scienceClassifier (UML)Artificial intelligenceDecision treeComputer scienceMachine learningPattern recognition (psychology)MetallurgyMicrostructureHigh Entropy Alloys StudiesHigh-Temperature Coating BehaviorsAdditive Manufacturing Materials and Processes
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