高熵合金
材料科学
人工智能
机器学习
计算机科学
冶金
合金
作者
Uma Maheshwera Reddy Paturi,Muhammad Ishtiaq,P.L. Narayana,Anoop Kumar Maurya,Seong-Woo Choi,N.S. Reddy
出处
期刊:Crystals
[MDPI AG]
日期:2025-04-25
卷期号:15 (5): 404-404
被引量:2
标识
DOI:10.3390/cryst15050404
摘要
This study evaluates the predictive capabilities of various machine learning (ML) algorithms for estimating the hardness of AlCoCrCuFeNi high-entropy alloys (HEAs) based on their compositional variables. Among the ML methods explored, a backpropagation neural network (BPNN) model with a sigmoid activation function exhibited superior predictive accuracy compared to other algorithms. The BPNN model achieved excellent correlation coefficients (R2) of 99.54% and 96.39% for training (116 datasets) and cross-validation (39 datasets), respectively. Testing of the BPNN model on an independent dataset (14 alloys) further confirmed its high predictive reliability. Additionally, the developed BPNN model facilitated a comprehensive analysis of the individual effects of alloying elements on hardness, providing valuable metallurgical insights. This comparative evaluation highlights the potential of BPNN as an effective predictive tool for material scientists aiming to understand composition–property relationships in HEAs.
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