机器学习在材料发现、设计和工程中的应用。

IF 7.6 2区 工程技术 Q1 CHEMISTRY, APPLIED Annual review of chemical and biomolecular engineering Pub Date : 2022-06-10 Epub Date: 2022-03-23 DOI:10.1146/annurev-chembioeng-092320-120230
Chenru Duan, Aditya Nandy, Heather J Kulik
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引用次数: 9

摘要

机器学习(ML)已经成为高通量筛选和材料计算发现的一部分。尽管机器学习发挥着越来越重要的作用,但在充分实现机器学习的前景方面仍然存在挑战。对于坚固材料工程的实际加速以及超越反复试验或高通量筛选的设计策略的开发尤其如此。根据预测的数量和可用的实验数据,机器学习可以超越基于物理的模型,用于加速这些模型,或者与它们集成以提高它们的性能。我们涵盖了算法及其应用方面的最新进展,这些进展正开始向(a)通过大规模枚举筛选发现新材料,(b)通过确定控制材料特性的规则和原则来设计材料,以及(c)通过满足多种目标来设计实用材料。我们总结了进一步发展的机会,以实现机器学习作为实用计算材料设计的广泛工具。
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Machine Learning for the Discovery, Design, and Engineering of Materials.

Machine learning (ML) has become a part of the fabric of high-throughput screening and computational discovery of materials. Despite its increasingly central role, challenges remain in fully realizing the promise of ML. This is especially true for the practical acceleration of the engineering of robust materials and the development of design strategies that surpass trial and error or high-throughput screening alone. Depending on the quantity being predicted and the experimental data available, ML can either outperform physics-based models, be used to accelerate such models, or be integrated with them to improve their performance. We cover recent advances in algorithms and in their application that are starting to make inroads toward (a) the discovery of new materials through large-scale enumerative screening, (b) the design of materials through identification of rules and principles that govern materials properties, and (c) the engineering of practical materials by satisfying multiple objectives. We conclude with opportunities for further advancement to realize ML as a widespread tool for practical computational materials design.

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来源期刊
Annual review of chemical and biomolecular engineering
Annual review of chemical and biomolecular engineering CHEMISTRY, APPLIED-ENGINEERING, CHEMICAL
CiteScore
16.00
自引率
0.00%
发文量
25
期刊介绍: The Annual Review of Chemical and Biomolecular Engineering aims to provide a perspective on the broad field of chemical (and related) engineering. The journal draws from disciplines as diverse as biology, physics, and engineering, with development of chemical products and processes as the unifying theme.
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