Short-Circuit Detection in Lithium-Ion Batteries Using Machine Learning: Analysis and Comparison with Physics-Based Method

被引:1
作者
Patil, Shubham Sambhaji [1 ]
Bharathraj, Sagar [1 ]
Lee, Myeong-Jae [2 ]
Adiga, Shashishekar P. [1 ]
Mayya, K. Subramanya [1 ]
机构
[1] SSIR, SAIT India, Next Gen Projects, Bengaluru, India
[2] SAIT, Battery Mat TU, Suwon, South Korea
关键词
short circuit classification; short circuit estimation; 1D convolutional neural networks; Lithium-ion Battery; INTERNAL SHORT-CIRCUIT; THERMAL RUNAWAY; MECHANISM;
D O I
10.1149/1945-7111/ad81b3
中图分类号
O646 [电化学、电解、磁化学];
学科分类号
081704 ;
摘要
Early detection of short circuits in battery-powered systems is critical in preventing potential catastrophic failures. However, nascent short-circuit signatures are extremely weak and challenging to detect using existing algorithms without compromising on prediction accuracy. Traditional physics-based approaches rely on hand-crafted models to establish relationships between battery operating parameters and short resistance, which limits their ability to capture all relevant details, resulting in sub-optimal accuracies. In this study, we present a machine learning-based approach that leverages rest period voltage data to detect short circuits. Our method employs a 1D convolutional neural network (CNN) classifier/estimator that extracts temporal dynamic features relevant to the short circuit prediction problem from both the long and short tails of the rest period voltage profile. The approach is validated using commercial battery data, generated at different conditions including temperatures, and short circuits of varying severities; with prediction accuracies greater than 90% even for soft shorts of 500 Omega. The key performance parameters of the 1D CNN model are compared against a physics-based short detection approach, demonstrating its superior performance and cost-effectiveness. Overall, our work represents a significant advancement in the field of short circuit detection in battery-powered systems, offering improved accuracy, efficiency, and cost-effectiveness.
引用
收藏
页数:8
相关论文
共 24 条
[1]   Isolation of relaxation times under open-circuit conditions: Toward prognosis of nascent short circuits in Li-ion batteries [J].
Bharathraj, Sagar ;
Lee, Myeongjae ;
Adiga, Shashishekar P. ;
Mayya, K. Subramanya ;
Kim, Jin-Ho .
ISCIENCE, 2023, 26 (05)
[2]   Detection, classification and quantification of short circuits in batteries using a short fatigue metric [J].
Bharathraj, Sagar ;
Lee, MyeongJae ;
Adiga, Shashishekar P. ;
Song, Taewon ;
Mayya, K. Subramanya ;
Kim, Jin-Ho .
JOURNAL OF ENERGY STORAGE, 2023, 61
[3]   Towards in-situ detection of nascent short circuits and accurate estimation of state of short in Lithium-Ion Batteries [J].
Bharathraj, Sagar ;
Adiga, Shashishekar P. ;
Kaushik, Anshul ;
Mayya, K. Subramanya ;
Lee, Myeongjae ;
Sung, Younghun .
JOURNAL OF POWER SOURCES, 2022, 520
[4]   Internal short circuit early detection of lithium-ion batteries from impedance spectroscopy using deep learning [J].
Cui, Binghan ;
Wang, Han ;
Li, Renlong ;
Xiang, Lizhi ;
Du, Jiannan ;
Zhao, Huaian ;
Li, Sai ;
Zhao, Xinyue ;
Yin, Geping ;
Cheng, Xinqun ;
Ma, Yulin ;
Huo, Hua ;
Zuo, Pengjian ;
Du, Chunyu .
JOURNAL OF POWER SOURCES, 2023, 563
[5]   Mitigating Thermal Runaway of Lithium-Ion Batteries [J].
Feng, Xuning ;
Ren, Dongsheng ;
He, Xiangming ;
Ouyang, Minggao .
JOULE, 2020, 4 (04) :743-770
[6]   Thermal runaway mechanism of lithium ion battery for electric vehicles: A review [J].
Feng, Xuning ;
Ouyang, Minggao ;
Liu, Xiang ;
Lu, Languang ;
Xia, Yong ;
He, Xiangming .
ENERGY STORAGE MATERIALS, 2018, 10 :246-267
[7]   Online internal short circuit detection for a large format lithium ion battery [J].
Feng, Xuning ;
Weng, Caihao ;
Ouyang, Minggao ;
Sun, Jing .
APPLIED ENERGY, 2016, 161 :168-180
[8]   The Application of Data-Driven Methods and Physics-Based Learning for Improving Battery Safety [J].
Finegan, Donal P. ;
Zhu, Juner ;
Feng, Xuning ;
Keyser, Matt ;
Ulmefors, Marcus ;
Li, Wei ;
Bazant, Martin Z. ;
Cooper, Samuel J. .
JOULE, 2021, 5 (02) :316-329
[9]   Precise and fast safety risk classification of lithium-ion batteries based on machine learning methodology [J].
Jia, Yikai ;
Li, Jiani ;
Yao, Weiran ;
Li, Yangxing ;
Xu, Jun .
JOURNAL OF POWER SOURCES, 2022, 548
[10]   1D convolutional neural networks and applications: A survey [J].
Kiranyaz, Serkan ;
Avci, Onur ;
Abdeljaber, Osama ;
Ince, Turker ;
Gabbouj, Moncef ;
Inman, Daniel J. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2021, 151