通过原位技术和数据挖掘方法指导电催化剂设计

IF 13.4 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Mingyu Ma, Yuqing Wang, Yanting Liu, Shasha Guo, Zheng Liu
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引用次数: 0

摘要

直观的设计策略,主要基于文献研究和试错的努力,对电催化剂领域的进步做出了重大贡献。然而,这些方法固有的耗时和不一致的性质给加速发现高性能电催化剂带来了实质性的挑战。为此,引导性设计方法,包括原位实验技术和数据挖掘,已经成为强大的催化剂设计和优化工具。前者对反应机制提供了有价值的见解,而后者在大型催化剂数据库中识别模式。在这篇综述中,我们首先介绍了使用原位实验技术的例子,强调详细分析了它们的优势和局限性。然后,我们探讨了数据挖掘驱动催化剂开发的进展,重点介绍了数据驱动方法如何补充实验方法,以加速高性能催化剂的发现和优化。最后,我们讨论了当前引导催化剂设计面临的挑战和可能的解决方案。本文综述旨在提供对当前电催化研究方法的全面理解,并激发未来电催化研究的创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Guided electrocatalyst design through in-situ techniques and data mining approaches

Intuitive design strategies, primarily based on literature research and trial-and-error efforts, have significantly contributed to advancements in the electrocatalyst field. However, the inherently time-consuming and inconsistent nature of these methods presents substantial challenges in accelerating the discovery of high-performance electrocatalysts. To this end, guided design approaches, including in-situ experimental techniques and data mining, have emerged as powerful catalyst design and optimization tools. The former offers valuable insights into the reaction mechanisms, while the latter identifies patterns within large catalyst databases. In this review, we first present the examples using in-situ experimental techniques, emphasizing a detailed analysis of their strengths and limitations. Then, we explore advancements in data-mining-driven catalyst development, highlighting how data-driven approaches complement experimental methods to accelerate the discovery and optimization of high-performance catalysts. Finally, we discuss the current challenges and possible solutions for guided catalyst design. This review aims to provide a comprehensive understanding of current methodologies and inspire future innovations in electrocatalytic research.

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来源期刊
Nano Convergence
Nano Convergence Engineering-General Engineering
CiteScore
15.90
自引率
2.60%
发文量
50
审稿时长
13 weeks
期刊介绍: Nano Convergence is an internationally recognized, peer-reviewed, and interdisciplinary journal designed to foster effective communication among scientists spanning diverse research areas closely aligned with nanoscience and nanotechnology. Dedicated to encouraging the convergence of technologies across the nano- to microscopic scale, the journal aims to unveil novel scientific domains and cultivate fresh research prospects. Operating on a single-blind peer-review system, Nano Convergence ensures transparency in the review process, with reviewers cognizant of authors' names and affiliations while maintaining anonymity in the feedback provided to authors.
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