Comprehensive Review of Data-Driven Degradation Diagnosis of Lithium-Ion Batteries through Electrochemical and Multi-scale Imaging Analyses

Authors
Park, CheolhwiKim, TaehunSung, Yung-EunRyu, KanghyunPark, Jungjin
Issue Date
2024-09
Publisher
한국화학공학회
Citation
Korean Journal of Chemical Engineering
Abstract
Electrochemical degradation diagnoses for evaluating the state of health (SOH) in lithium-ion batteries (LIBs) have been extensively utilized for real-time assessments in electric vehicles (EVs) and for determining the reusability of spent batteries. However, the criteria for the accuracy of these diagnostic methods have not yet been established, highlighting the need to develop methods for validating or cross-checking ones. This review encompasses cutting-edge and innovative diagnostic approaches that incorporate machine learning (ML)-applied analyses to expedite big-data-based electrochemical analyses and enhance their accuracy. Moreover, it introduces emerging non-electrochemical analysis methods, particularly imaging-based degradation diagnosis, which can provide the atomic, particle and electrode level examinations, for assessing the SOH in LIBs. Lastly, this paper provides a comprehensive perspective on the future of rechargeable battery diagnostic fields through the integrated concepts of electrochemical and imaging diagnostics in conjunction with data-driven informatics analyses.
Keywords
GAUSSIAN PROCESS REGRESSION; SUPPORT VECTOR MACHINE; OF-HEALTH ESTIMATION; POLYMER BATTERIES; THERMAL RUNAWAY; STATE; IMPEDANCE; CAPACITY; PERFORMANCE; MODEL; Lithium-ion batteries; Degradations; Electrochemical diagnoses; Imaging diagnoses; Data informatics
ISSN
0256-1115
URI
https://pubs.kist.re.kr/handle/201004/150774
DOI
10.1007/s11814-024-00277-0
Appears in Collections:
KIST Article > 2024
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