Journal of Alloys and Compounds2022,Vol.9088.DOI:10.1016/j.jallcom.2022.164578

Machine learning-enabled framework for the prediction of mechanical properties in new high entropy alloys

Bundela A.S. Rahul M.R.
Journal of Alloys and Compounds2022,Vol.9088.DOI:10.1016/j.jallcom.2022.164578

Machine learning-enabled framework for the prediction of mechanical properties in new high entropy alloys

Bundela A.S. 1Rahul M.R.1
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作者信息

  • 1. Department of Fuel Minerals and Metallurgical Engineering Indian Institute of Technology (ISM)
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Abstract

? 2022 Elsevier B.V.Prediction of properties of new compositions will accelerate the material design and development. The current study uses a machine learning framework to predict the microhardness of high entropy alloys. Several feature selection algorithms are used to identify the essential material descriptors. The stability selection algorithm gives optimum material descriptors for the current dataset for the microhardness prediction. Eight different machine learning algorithms are trained and tested for microhardness prediction. The accuracy of prediction improved by reducing the higher-dimensional data to lower dimensions using principal component analysis. The current study shows the testing R2 score of more than 0.89 for XGBoost, Random forest, and Bagging regressor algorithms. Experimental data confirms the applicability of various trained algorithms for property prediction, and for the current study, ANN shows better performance for the new experimental data.

Key words

Feature selection/High entropy alloys/Machine learning/Materials informatics/Microhardness/Principal component analysis

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出版年

2022
Journal of Alloys and Compounds

Journal of Alloys and Compounds

EISCI
ISSN:0925-8388
参考文献量36
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