Effect of fabrication techniques of high entropy alloys: A review with integration of machine learning

IF 7.9 Q1 ENGINEERING, MULTIDISCIPLINARY Results in Engineering Pub Date : 2025-03-01 Epub Date: 2025-02-21 DOI:10.1016/j.rineng.2025.104441
Mohamed Yasin Abdul Salam , Enoch Nifise Ogunmuyiwa , Victor Kitso Manisa , Abid Yahya , Irfan Anjum Badruddin
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Abstract

High Entropy Alloys (HEAs) are an emerging class of materials distinguished by equimolar or near-equimolar compositions of five or more principal elements. HEAs display exceptional mechanical properties, thermal stability, and wear resistance, making them suitable for advanced aerospace, biomedical, and automotive engineering applications. This review thoroughly explores various fabrication techniques for HEAs, including Vacuum Arc Melting (VAM), Hot Compression (HC), Laser Cladding (LC), and Spark Plasma Sintering (SPS). Each method's advantages, limitations, and impacts on microstructural properties are discussed in detail. Additionally, the integration of Machine Learning (ML) techniques in HEA research is highlighted, demonstrating their potential for optimizing fabrication parameters and predicting phase stability, microstructure evolution, and mechanical properties. The review concludes by identifying challenges in HEA fabrication, such as data availability and sustainability, and proposes future research directions to address these gaps. This work aims to provide researchers and engineers with a consolidated resource for advancing the development and application of HEAs.
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高熵合金制备技术的影响:结合机器学习的综述
高熵合金(HEAs)是一类新兴的材料,其特征是由五种或更多的主元素组成等摩尔或近等摩尔。HEAs具有优异的机械性能、热稳定性和耐磨性,适用于先进的航空航天、生物医学和汽车工程应用。本文综述了HEAs的各种制备技术,包括真空电弧熔化(VAM)、热压缩(HC)、激光熔覆(LC)和火花等离子烧结(SPS)。详细讨论了每种方法的优点、局限性及其对微观结构性能的影响。此外,强调了HEA研究中机器学习(ML)技术的集成,展示了它们在优化制造参数和预测相稳定性、微观结构演变和机械性能方面的潜力。这篇综述最后指出了HEA制造中的挑战,例如数据的可用性和可持续性,并提出了解决这些差距的未来研究方向。这项工作旨在为研究人员和工程师提供一个整合的资源,以促进HEAs的发展和应用。
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来源期刊
Results in Engineering
Results in Engineering Engineering-Engineering (all)
CiteScore
5.80
自引率
34.00%
发文量
441
审稿时长
47 days
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