A high-energy-density long-cycle lithium–sulfur battery enabled by 3D graphene architecture

Carbon Energy ›› 2024, Vol. 6 ›› Issue (11) : e599

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Carbon Energy ›› 2024, Vol. 6 ›› Issue (11) : e599 DOI: 10.1002/cey2.599
RESEARCH ARTICLE

A high-energy-density long-cycle lithium–sulfur battery enabled by 3D graphene architecture

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Abstract

Lithium–sulfur (Li–S) battery is attracting increasing interest for its potential in low-cost high-density energy storage. However, it has been a persistent challenge to simultaneously realize high energy density and long cycle life. Herein, we report a synergistic strategy to exploit a unique nitrogen-doped three-dimensional graphene aerogel as both the lithium anode host to ensure homogeneous lithium plating/stripping and mitigate lithium dendrite formation and the sulfur cathode host to facilitate efficient sulfur redox chemistry and combat undesirable polysulfide shuttling effect, realizing Li–S battery simultaneously with ultrahigh energy density and long cycle life. The as-demonstrated polysulfide-based device delivers a high areal capacity of 7.5 mAh/cm2 (corresponds to 787 Wh/L) and an ultralow capacity fading of 0.025% per cycle over 1000 cycles at a high current density of 8.6 mA/cm2. Our findings suggest a novel strategy to scale up the superior electrochemical property of every microscopic unit to a macroscopic-level performance that enables simultaneously high areal energy density and long cycling stability that are critical for practical Li–S batteries.

Keywords

cathode/anode host / lithium–sulfur battery / long cycle life / N-modified graphene aerogel / ultrahigh energy density

Author summay

Yan Cheng and Bihan Liu contributed equally to this study.

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null. A high-energy-density long-cycle lithium–sulfur battery enabled by 3D graphene architecture. Carbon Energy, 2024, 6(11): e599 DOI:10.1002/cey2.599

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