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Accelerated design of low-activation high entropy alloys with desired phase and property by machine learning

Li, Xiaochen; Zheng, Mingjie*; Li, Chang; Pan, Hao; Ding, Wenyi; Yu, Jie
SCIE
中国科学院

摘要

Low-activation high-entropy alloys (HEAs) have been regarded as novel candidate structural materials for fusion reactors due to their excellent mechanical and radiation resistant properties. Nevertheless, the potential vast composition space brings a prominent challenge in the design of low-activation HEAs. Herein, a new strategy based on machine learning (ML) was proposed to accelerate the exploitation of low-activation HEAs with desired phase and property. Two optimized classification models with accuracy of > 85% were developed to identify single-phase body-centered-cubic (BCC) solid-solution (SS) HEAs. One regression model with correlation coefficient (R) of > 0.9 was constructed to predict the hardness of HEAs. The phase and hardness prediction models were combined in accordance with an integrated design strategy to identify the low-activation HEAs with desired phase and property from 284,634 candidates. With this design strategy, a new desired single-phase BCC Fe35Cr30V20Mn10Ti5 low-activation HEA with 555.9 +/- 15.3 HV was designed and fabricated via only two experimental iterations. Besides, two new phase selection rules with accuracy of > 95% were given to efficiently screen SS and BCC HEAs, respectively. Our research work not only provides new ideas to search for low-activation HEAs, but also can be extended to the integrated design of structure and performance of other advanced materials.

关键词

Machine learning Feature screening High entropy alloys Phase classification Hardness prediction

出版信息

论文状态
公开发表
期刊名称
Applied Materials Today
发表日期
2024-2
卷
36
期
-
页码
102000
DOI
10.1016/j.apmt.2023.102000

学科领域

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