Reactivity descriptors for sulfur redox kinetics in lithium–sulfur batteries: from mechanistic insights to machine learning driven catalyst design

IF 39 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Ziqing Yao, Yulu Zou, Shuangke Liu, Yujie Li, Qingpeng Guo, Chunman Zheng and Weiwei Sun
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Abstract

The judicious selection of catalytic materials has emerged as a critical strategy for addressing the notorious lithium polysulfide (LiPS) shuttle effect and sluggish sulfur reduction reaction (SRR) kinetics in lithium sulfur batteries (LSBs). While traditional catalyst development has relied heavily on empirical trial-and-error approaches, recent advances in reactivity descriptor theory offer the potential to understand the mechanisms inherent in the SRR and to revolutionize the catalyst development paradigm, but a comprehensive understanding of the role and origins of descriptors in the SRR remains lacking. This review systematically examines validated descriptor-based research paradigms and their significant advances in LSBs. Firstly, we elucidate critical LiPS intermediates and rate-limiting steps in the SRR process, and present a summary of the role played by descriptors, establishing fundamental connections to descriptor functionality. Subsequently, we delineate the operational principles of three primary descriptor categories (electronic, structural, and energy descriptors) and the establishment of scaling relationships based on them. Moreover, advanced descriptor constructs are also explored, including comprehensive descriptors with multi-factor integration and other types of descriptors. In particular, we summarize how emerging artificial intelligence (AI) methodologies can facilitate the further development and application of descriptors. Ultimately, we envision great potential for clarifying the scope of applicability, developing universal descriptors, integrating with AI, and breaking the scaling relationships to accurately identify and design highly active catalysts.

Abstract Image

Abstract Image

锂硫电池中硫氧化还原动力学的反应性描述符:从机械洞察到机器学习驱动的催化剂设计
为了解决锂硫电池(LSBs)中臭名昭著的多硫锂(LiPS)穿梭效应和缓慢的硫还原反应(SRR)动力学,明智地选择催化材料已成为一种关键策略。虽然传统的催化剂开发在很大程度上依赖于经验试错方法,但最近在反应性描述子理论方面的进展为理解SRR的内在机制和彻底改变催化剂开发范式提供了潜力,但对SRR中描述子的作用和起源的全面理解仍然缺乏。本文系统地考察了基于描述符的有效研究范式及其在lsdb中的重大进展。首先,我们阐明了SRR过程中关键的lip中间体和限速步骤,并总结了描述符所起的作用,建立了与描述符功能的基本联系。随后,我们描述了三种主要描述符类别(电子、结构和能量描述符)的工作原理,并在此基础上建立了缩放关系。此外,还探讨了高级描述符结构,包括多因子集成的综合描述符和其他类型的描述符。特别是,我们总结了新兴的人工智能(AI)方法如何促进描述符的进一步发展和应用。最终,我们设想在阐明适用范围、开发通用描述符、与人工智能集成以及打破标度关系以准确识别和设计高活性催化剂方面具有巨大的潜力。
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来源期刊
Chemical Society Reviews
Chemical Society Reviews 化学-化学综合
CiteScore
80.80
自引率
1.10%
发文量
345
审稿时长
6.0 months
期刊介绍: Chemical Society Reviews is published by: Royal Society of Chemistry. Focus: Review articles on topics of current interest in chemistry; Predecessors: Quarterly Reviews, Chemical Society (1947–1971); Current title: Since 1971; Impact factor: 60.615 (2021); Themed issues: Occasional themed issues on new and emerging areas of research in the chemical sciences
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