如何加速无机材料合成:从计算指南到数据驱动方法?

IF 16.3 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
National Science Review Pub Date : 2025-03-04 eCollection Date: 2025-04-01 DOI:10.1093/nsr/nwaf081
Yilei Wu, Xiaoyan Li, Rong Guo, Ruiqi Xu, Ming-Gang Ju, Jinlan Wang
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引用次数: 0

摘要

新型功能材料的发展已引起人们的广泛关注,以满足不断增长的需求,以解决人类面临的重大全球性挑战,其中实验合成成为关键挑战之一。了解合成过程和预测合成实验结果对提高实验成功率至关重要。随着计算能力的进步和机器学习(ML)技术的出现,计算指南和数据驱动方法为加速和优化材料合成做出了重大贡献。本文综述了计算指导和机器学习辅助无机材料合成的最新进展。首先介绍了无机材料的常用合成方法,然后讨论了基于热力学和动力学的物理模型,这些模型与无机材料的合成可行性有关。其次,讨论了数据采集,常用的材料描述符,以及ML辅助无机材料合成中的ML技术。第三,介绍了机器学习技术在无机材料合成中的应用,并根据不同的材料数据源进行了分类。最后,我们强调了ml辅助无机材料合成的关键挑战和有希望的机会。本文综述旨在为今后ml辅助无机材料合成的发展提供重要的科学指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to accelerate the inorganic materials synthesis: from computational guidelines to data-driven method?

The development of novel functional materials has attracted widespread attention to meet the constantly growing demand for addressing the major global challenges facing humanity, among which experimental synthesis emerges as one of the crucial challenges. Understanding the synthesis processes and predicting the outcomes of synthesis experiments are essential for increasing the success rate of experiments. With the advancements in computational power and the emergence of machine learning (ML) techniques, computational guidelines and data-driven methods have significantly contributed to accelerating and optimizing material synthesis. Herein, a review of the latest progress on the computation-guided and ML-assisted inorganic material synthesis is presented. First, common synthesis methods for inorganic materials are introduced, followed by a discussion of physical models based on thermodynamics and kinetics, which are relevant to the synthesis feasibility of inorganic materials. Second, data acquisition, commonly utilized material descriptors, and ML techniques in ML-assisted inorganic material synthesis are discussed. Third, applications of ML techniques in inorganic material synthesis are presented, which are classified according to different material data sources. Finally, we highlight the crucial challenges and promising opportunities for ML-assisted inorganic materials synthesis. This review aims to provide critical scientific guidance for future advancements in ML-assisted inorganic materials synthesis.

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来源期刊
National Science Review
National Science Review MULTIDISCIPLINARY SCIENCES-
CiteScore
24.10
自引率
1.90%
发文量
249
审稿时长
13 weeks
期刊介绍: National Science Review (NSR; ISSN abbreviation: Natl. Sci. Rev.) is an English-language peer-reviewed multidisciplinary open-access scientific journal published by Oxford University Press under the auspices of the Chinese Academy of Sciences.According to Journal Citation Reports, its 2021 impact factor was 23.178. National Science Review publishes both review articles and perspectives as well as original research in the form of brief communications and research articles.
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