Positron unveiling high mobility graphene stack interfaces in Li-ion cathodes

Author
Zheng, Meiying
Makkonen, Ilja
Ferragut, Rafael
Di Noto, Vito
Pagot, Gioele
Laakso, Ekaterina
Barbiellini, Bernardo
Publication date
2024Published in
Communications MaterialsVolume / Issue
5 (1)ISBN / ISSN
ISSN: 2662-4443ISBN / ISSN
eISSN: 2662-4443Metadata
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This publication has a published version with DOI 10.1038/s43246-024-00561-w
Abstract
Carbon-based coatings in Li-ion battery cathodes improve electron conductivity and enable rapid charging. However, the mechanism is not well understood. Here, we address this question by using positrons as non-destructive probes to investigate nano-interfaces within cathodes. We calculate the positron annihilation lifetime in a graphene stack LiCoO2 heterojunction using an ab initio method with a non-local density approximation to accurately describe the electron-positron correlation. This ideal heterostructure represents the standard carbon-based coating performed on cathode nanoparticles to improve the conduction properties of the cathode. We characterize the interface between LiCoO2 and graphene as a p-type Schottky junction and find positron surface states. The intensity of the lifetime component for these positron surface states serves as a descriptor for positive ion ultra-fast mobility. Consequently, optimizing the carbon layer by enhancing this intensity and by analogizing Li-ion adatoms on graphene layers with positrons at surfaces can improve the design of fast-charging channels. Carbon layers in Li-ion battery cathodes are important for fast charging but the underlying mechanism is still not well understood. Here, ab initio calculations of the positron annihilation lifetime in graphene stack LiCoO2 heterojunction gives insights into ultra-fast ion mobility.
Keywords
Li-ion battery, positron annihilation
Permanent link
https://hdl.handle.net/20.500.14178/2970License
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