高熵材料的机器学习和高通量研究

IF 31.6 1区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY Materials Science and Engineering: R: Reports Pub Date : 2022-01-01 DOI:10.1016/j.mser.2021.100645
E-Wen Huang , Wen-Jay Lee , Sudhanshu Shekhar Singh , Poresh Kumar , Chih-Yu Lee , Tu-Ngoc Lam , Hsu-Hsuan Chin , Bi-Hsuan Lin , Peter K. Liaw
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引用次数: 38

摘要

多主元素材料的组合被称为高熵材料,将多维成分空间扩展到巨大的化学计量。我们不可能提供一种全面的方法来探索每一种可能性。随着材料基因组计划和表征技术的发展,高通量(high-throughput, HT)的方法更为合理,特别是对新型HEMs的特定功能的鉴定。HT方法有三个主要组成部分,即计算工具、实验工具和数字数据。本文综述了材料信息学和实验方法的研究进展。这些工具在不同成分样品上的应用可以有效地获得化学计量和相-结构-性能关系,为建立材料-性能数据库提供依据。它们还可以与机器学习(ML)结合使用,以提高模型的可预测性。这些机器学习工具将成为开发新hem的HT方法的重要组成部分。ml开发的hem与ml创建的其他材料一起定位在这份手稿中,以供未来的hem发展。通过对比研究发现,层次化的微观结构和非均匀的晶粒尺寸显示了将ML应用于新型hem的最大潜力,这需要HT验证来加速开发。HEMs探索的潜力和数据库将为人类从火星风化层开始建造的未来提供光明。
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Machine-learning and high-throughput studies for high-entropy materials

The combination of multiple-principal element materials, known as high-entropy materials (HEMs), expands the multi-dimensional compositional space to gigantic stoichiometry. It is impossible to afford a holistic approach to explore each possibility. With the advance of the materials genome initiative and characterization technology, a high-throughput (HT) approach is more reasonable, especially to identify the specified functions for the new HEMs development. There are three major components for the HT approach, which are the computational tools, experimental tools, and digital data. This article reviews both the materials informatics and experimental approaches for the HT methods. Applications of these tools on composition-varying samples can be used to obtain stoichiometry effectively and phase-structure-property relationships efficiently for the materials-property database establishment. They can also be used in conjunction with machine learning (ML) to improve the predictability of models. These ML tools will be an essential part of HT approaches to develop the new HEMs. The ML-developed HEMs together with ML-created other materials are positioned in this manuscript for future HEMs advancement. Comparing all the reviewed properties, the hierarchical microstructures together with the heterogeneous grain sizes show the highest potential to apply ML for new HEMs, which needs HT validations to accelerate the development. The promising potential and the database from the HEMs exploration would shed light on the future of humanity building from the scratch of Mars regolith.

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来源期刊
Materials Science and Engineering: R: Reports
Materials Science and Engineering: R: Reports 工程技术-材料科学:综合
CiteScore
60.50
自引率
0.30%
发文量
19
审稿时长
34 days
期刊介绍: Materials Science & Engineering R: Reports is a journal that covers a wide range of topics in the field of materials science and engineering. It publishes both experimental and theoretical research papers, providing background information and critical assessments on various topics. The journal aims to publish high-quality and novel research papers and reviews. The subject areas covered by the journal include Materials Science (General), Electronic Materials, Optical Materials, and Magnetic Materials. In addition to regular issues, the journal also publishes special issues on key themes in the field of materials science, including Energy Materials, Materials for Health, Materials Discovery, Innovation for High Value Manufacturing, and Sustainable Materials development.
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