화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2021년 가을 (10/27 ~ 10/29, 광주 김대중컨벤션센터)
권호 27권 2호, p.1552
발표분야 공정시스템
제목 Early diagnosis of knee-point in capacity degradation of Li-ion NCM battery using a long short-term memory model
초록 Accurate prediction of battery capacity fade is essential to improve the performance of the battery and ensure the safety of the users. As the lithium nickel-cobalt-manganese (NCM) batteries are put through repeated charging and discharging cyclic processes, the batteries encounter sudden degradation of capacity due to lithium plating and loss of active material. The point where the sudden degradation starts is called ‘knee-point’ and it is critical to recognize the knee-point as early as possible to provide instructions on when to replace the battery and prevent the battery system explodes. This study proposes a novel way to early diagnose the knee-point within capacity fade curves of NMC cells. In this study, a long short-term memory (LSTM) network is employed to detect knee-points 100 cycles before they occur. Key features characterizing battery aging status, obtained from voltage-capacity curve analysis, are used as input of the LSTM model. The model is constructed and validated using battery cell data from 12 different charging and discharging conditions.
저자 금화연, 이재형
소속 한국과학기술원
키워드 인공지능 기반 공정기술
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