机器学习加速探索元素掺杂触发材料性能改进在能量转换和存储应用中的应用

IF 9.5 2区 材料科学 Q1 CHEMISTRY, PHYSICAL
Hao Wang, Yue Zhu, Jinliang Li, Xinjuan Liu, Yongchao Ma, Yefeng Yao, Jie Zhang and Likun Pan
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引用次数: 0

摘要

元素掺杂作为一种重要的材料改性策略,可以有效调节材料的电子结构、晶体结构和表面化学性质。掺杂元素的选择和掺杂条件的精确控制是决定材料最终性能的关键,这使得掺杂策略广泛应用于各个领域。然而,传统的优化掺杂条件的实验方法往往是耗时和昂贵的,而理论计算虽然有见地,但往往是资源密集型的,需要大量的时间和费用,效率有限。机器学习(ML)已经成为一种强大的工具,通过利用大型数据集来预测最佳掺杂策略,加速元素掺杂材料的发展。本文综述了ML在高性能掺杂材料的设计和筛选中的应用,重点介绍了电催化、光催化和锂电池。机器学习技术可以准确预测材料性能,降低实验成本,揭示掺杂与材料性能之间的复杂关系。尽管取得了显著进展,但数据质量和多目标优化等挑战仍然存在。报告还强调了这些问题的潜在解决办法。展望未来,未来的研究应优先推进机器学习方法和改进材料数据库,以进一步推动发现下一代掺杂材料的各种应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning-accelerated exploration on element doping-triggering material performance improvement for energy conversion and storage applications

Machine learning-accelerated exploration on element doping-triggering material performance improvement for energy conversion and storage applications

Element doping, as a crucial material modification strategy, can effectively regulate the electronic structure, crystal structure, and surface chemical properties of materials. The selection of doping elements and the precise control of doping conditions are key to determining the material's final performance, making doping strategies widely applicable across various fields. However, traditional experimental methods for optimizing doping conditions are often time-consuming and costly, while theoretical calculations, though insightful, tend to be resource-intensive, requiring significant time and expense with limited efficiency. Machine learning (ML) has emerged as a powerful tool to accelerate the development of element-doped materials by leveraging large datasets to predict optimal doping strategies. This review examines the application of ML in the design and screening of high-performance doped materials, with a focus on electrocatalysis, photocatalysis, and lithium batteries. ML techniques can accurately predict material performance, reduce experimental costs, and reveal complex relationships between doping and material properties. Despite notable progress, challenges such as data quality and multi-objective optimization persist. The review also highlights potential solutions to these issues. Looking forward, future research should prioritize advancing ML methodologies and improving material databases to further drive the discovery of next-generation doped materials for diverse applications.

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来源期刊
Journal of Materials Chemistry A
Journal of Materials Chemistry A CHEMISTRY, PHYSICAL-ENERGY & FUELS
CiteScore
19.50
自引率
5.00%
发文量
1892
审稿时长
1.5 months
期刊介绍: The Journal of Materials Chemistry A, B & C covers a wide range of high-quality studies in the field of materials chemistry, with each section focusing on specific applications of the materials studied. Journal of Materials Chemistry A emphasizes applications in energy and sustainability, including topics such as artificial photosynthesis, batteries, and fuel cells. Journal of Materials Chemistry B focuses on applications in biology and medicine, while Journal of Materials Chemistry C covers applications in optical, magnetic, and electronic devices. Example topic areas within the scope of Journal of Materials Chemistry A include catalysis, green/sustainable materials, sensors, and water treatment, among others.
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