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Understanding Mechanical Failure Behaviours and Protocol Optimization for Fast Charging Applications in Co-free Ni-based Cathodes for Lithium-Ion Batteries

Jaesub Kwon,Jaehyun Kim, Jong-Heon Lim,Kyoung Eun Lee, Seok-Mun Kang, Youngsun Kong, Dong-Hyun Kim,Kyu-Su Kim, Gogwon Choe,Sang-Mun Jung,Docheon Ahn,Yoon-Uk Heo,Janghyuk Moon, Kyu-Young Park,Yong-Tae Kim

MATERIALS HORIZONS(2025)

Pohang Univ Sci & Technol POSTECH

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Abstract
Currently, it is a significant challenge to achieve long-term cyclability and fast chargeability in lithium-ion batteries, especially for the Ni-based oxide cathode, due to severe chemo-mechanical degradation. Despite its importance, the fast charging long-term cycling behaviour is not well understood. Therefore, we comprehensively evaluate the feasibility of fast charging applications for Co-free layered oxide cathodes, with a focus on the extractable capacity and cyclability. The cathodes with a Ni content of over 80% attain 80% of their nominal capacity, along with superior cyclability under fast charging due to the suppression of the following two mechanical failure modes: (i) Li-ion concentration shock fracture (CSF) and (ii) H2-H3 phase shock fracture (HSF). In particular, CSF produces stronger stress than HSF and causes severe crack penetration in mid-Ni cathodes under fast charging. Meanwhile, HSF induces mild internal stress, but prolonged exposure accelerates mechanical degradation. To maximize the fast charging application of high-Ni cathodes, we evaluated a 5C constant current constant voltage protocol to deliver 180 mAh g-1 in 35 min, improving the cycle life by up to 89% over 100 cycles with LiNi0.90Mn0.10O2. This study provides insights into the fast charging applications of high-Ni cathodes, thereby advancing the understanding of their behaviour and optimization.
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