Molecular dynamics simulation and machine learning-based analysis for predicting tensile properties of high-entropy FeNiCrCoCu alloys

极限抗拉强度 材料科学 高熵合金 各向同性 机器学习 支持向量机 克里金 分子动力学 人工神经网络 人工智能 合金 算法 计算机科学 复合材料 化学 物理 计算化学 量子力学
作者
Omarelfarouq Elgack,Belal Almomani,Junaidi Syarif,Mohamed El‐Azab,Mohammad Irshaid,Mohammad Al‐Shabi
出处
期刊:Journal of materials research and technology [Elsevier]
卷期号:25: 5575-5585 被引量:10
标识
DOI:10.1016/j.jmrt.2023.07.023
摘要

High entropy alloys (HEAs) attract many researchers due to their unique and desirable properties in comparison to conventional alloys, and their potential for advanced applications. Because of the complexity of designing HEAs, several attempts have been conducted to integrate experimental and computational studies with machine learning (ML) algorithms to predict their mechanical properties. Yet, few studies have considered a set of input parameters including atomic concentrations, grain size, operating temperature, and strain rate. Therefore, this study considers these combined predictors to forecast the tensile properties of FeNiCrCoCu HEAs, including Young's modulus, yield strength, and ultimate tensile strength based on molecular dynamics (MD) and ML algorithms. 918 datasets of polycrystalline HEAs were generated by MD simulations. Some of the MD datasets were selected as representative samples and assessed by checking the isotropy of mechanical properties. Also, the MD simulations provided data that reasonably agreed with previously published results. All the generated datasets were used afterward to train Artificial neural networks (ANN), support vector machine, and Gaussian process regression models. The proposed ANN models revealed the most accurate predictions among the other ML models, and their performances were evaluated on new datasets containing different predictor variables' values that were not used to build the models. It was found that the ANN models were most sensitive to the strain rate predictor variable. The proposed ANN models can assist in guiding the experimental work to optimize the search for HEAs with desired tensile properties.
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