2024
DOI: 10.1002/mgea.49
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Data mining accelerated the design strategy of high‐entropy alloys with the largest hardness based on genetic algorithm optimization

Xianzhe Jin,
Hong Luo,
Xuefei Wang
et al.

Abstract: This article proposed a design strategy that integrated machine learning models based on random forest and genetic algorithm (GA) for the rapid screening of hardness in the AlCoCrCuFeMoNiTi high‐entropy alloys system. Through feature engineering and modeling, valence electron concentration, atomic size difference (δr), Pauling electronegativity difference (Δχ), geometric parameters (Λ), and the Cr content were identified as the five key features in the database. The GA was employed to search for alloys with su… Show more

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