石墨烯
材料科学
硫黄
阴极
纳米技术
电化学
碳纤维
储能
制作
锂(药物)
化学工程
集电器
锂硫电池
复合数
电极
复合材料
化学
电解质
冶金
内分泌学
工程类
病理
物理化学
功率(物理)
量子力学
替代医学
物理
医学
作者
Fail Sultanov,Almаgul Mentbayeva,Sandugash Kalybekkyzy,Azhar Zhaisanova,Seung‐Taek Myung,Zhumabay Bakenov
出处
期刊:Carbon
[Elsevier]
日期:2022-09-29
卷期号:201: 679-702
被引量:43
标识
DOI:10.1016/j.carbon.2022.09.069
摘要
Lithium-sulfur (Li–S) batteries are the current focus of attention as candidates for next-generation energy storage systems due to their high energy density, low cost and environmental friendliness. However, their commercialization is hampered by various issues, including poor electrical conductivity of sulfur and its reduction products, low utilization of active material, limited sulfur loading and severe lithium polysulfides (LiPSs) shuttling effect. To solve these problems, various 0D, 1D and 2D nanostructured carbon materials with developed surface morphology, electrochemical stability and electrical conductivity have been examined for immobilizing sulfur, mitigating its volume variation and enhancing its electrochemical kinetics. Here we review the recent progress in design and fabrication of carbon-based sulfur hosts, free-standing cathodes, interlayers and functional separators for Li–S batteries using 3D graphene networks presented by graphene aerogels (GAs). The main characteristics of GAs and their synthesis routes are overviewed first. Further, the fabrication of both conventional slurry-casted cathodes and binder and current collector-free self-supporting sulfur composite cathodes based on pure and modified GAs acting as highly porous matrix for sulfur are discussed. In-depth analysis of the mechanisms of electrochemical reactions depending on the modifier type are provided. The advances of modified GAs in the design and preparation of interlayers and functional separators for Li–S batteries are deliberated as well. Finally, the conclusion and perspectives for future development of 3D nanostructured carbons for Li–S battery technology are offered.
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