异常
电池(电)
计算机科学
恒虚警率
鉴定(生物学)
警报
工作(物理)
可靠性工程
人工智能
工程类
医学
电气工程
功率(物理)
量子力学
机械工程
生物
精神科
物理
植物
作者
Xiaopeng Tang,Xin Lai,Changfu Zou,Yuanqiang Zhou,Jiajun Zhu,Yuejiu Zheng,Furong Gao
标识
DOI:10.1002/advs.202305315
摘要
Abstract The service life of large battery packs can be significantly influenced by only one or two abnormal cells with faster aging rates. However, the early‐stage identification of lifetime abnormality is challenging due to the low abnormal rate and imperceptible initial performance deviations. This work proposes a lifetime abnormality detection method for batteries based on few‐shot learning and using only the first‐cycle aging data. Verified with the largest known dataset with 215 commercial lithium‐ion batteries, the method can identify all abnormal batteries, with a false alarm rate of only 3.8%. It is also found that any capacity and resistance‐based approach can easily fail to screen out a large proportion of the abnormal batteries, which should be given enough attention. This work highlights the opportunities to diagnose lifetime abnormalities via “big data” analysis, without requiring additional experimental effort or battery sensors, thereby leading to extended battery life, increased cost‐benefit, and improved environmental friendliness.
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