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Shuttle inhibition by chemical adsorption of lithium polysulfides in B and N co-doped graphene for Li-S batteries

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Indexed by:期刊论文

Date of Publication:2016-09-28

Journal:PHYSICAL CHEMISTRY CHEMICAL PHYSICS

Included Journals:SCIE、PubMed

Volume:18

Issue:36

Page Number:25241-25248

ISSN No.:1463-9076

Abstract:The advance of lithium sulfur batteries is now greatly restricted by the fast capacity fading induced by shuttle effect. Using first-principles calculations, various vacancies, N doping, and B, N co-doping in graphene sheets have been systematically explored for lithium polysufides entrapped in Li-S batteries. The Li center dot center dot center dot S, Li center dot center dot center dot C, Li center dot center dot center dot N and S center dot center dot center dot B bonds and Hirshfeld charges in the Li2S6 adsorbed defective graphene systems have been analyzed to understand the intrinsic mechanism of retaining lithium polysulfides in these systems. Total and local densities of states analyses elucidate the strongest adsorption sites among the N and B-N co-doped graphene systems. The overall electrochemical performance of Li-S batteries varies with the types of defects in graphene. Among the defective graphene systems, only the reconstructed pyrrole-like vacancy is effective for retaining lithium polysulfides. N doping induces a strong Li...N interaction in the defective graphene systems, in which the pyrrolic N rather than the pyridinic N plays a dominant role in trapping of lithium polysulfides. The shuttle effect can be further depressed via pyrrolic B, N co-doped defective graphene materials, especially the G-B-N-hex system with extremely strong adsorption of lithium polysulfides (4-5 eV), and simultaneous contribution from the strong Li center dot center dot center dot N and S center dot center dot center dot B interactions.

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