Machine learning assisted prediction of the Young’s modulus of compositionally complex alloys

被引:0
作者
Hrishabh Khakurel
M. F. N. Taufique
Ankit Roy
Ganesh Balasubramanian
Gaoyuan Ouyang
Jun Cui
Duane D. Johnson
Ram Devanathan
机构
[1] The University of Texas at Arlington,Department of Mathematics
[2] Pacific Northwest National Laboratory,Department of Mechanical Engineering and Mechanics
[3] Lehigh University,Ames Laboratory
[4] United States Department of Energy,Department of Materials Science and Engineering
[5] Iowa State University,undefined
来源
Scientific Reports | / 11卷
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摘要
We identify compositionally complex alloys (CCAs) that offer exceptional mechanical properties for elevated temperature applications by employing machine learning (ML) in conjunction with rapid synthesis and testing of alloys for validation to accelerate alloy design. The advantages of this approach are scalability, rapidity, and reasonably accurate predictions. ML tools were implemented to predict Young’s modulus of refractory-based CCAs by employing different ML models. Our results, in conjunction with experimental validation, suggest that average valence electron concentration, the difference in atomic radius, a geometrical parameter λ and melting temperature of the alloys are the key features that determine the Young’s modulus of CCAs and refractory-based CCAs. The Gradient Boosting model provided the best predictive capabilities (mean absolute error of 6.15 GPa) among the models studied. Our approach integrates high-quality validation data from experiments, literature data for training machine-learning models, and feature selection based on physical insights. It opens a new avenue to optimize the desired materials property for different engineering applications.
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