Remaining Useful Life Prediction of Lithium Battery Based on Sequential CNN-LSTM Method

被引:17
作者
Li, Dongdong [1 ]
Yang, Lin [1 ]
机构
[1] Shanghai Jiao Tong Univ, Sch Mech Engn, Natl Engn Lab Automot Elect Control Technol, Shanghai 200240, Peoples R China
基金
中国国家自然科学基金;
关键词
remaining useful life; lithium battery; sequential CNN-LSTM method; hyperparameter optimization; DIFFERENTIAL THERMAL VOLTAMMETRY; DEGRADATION; TRACKING; NETWORK;
D O I
10.1115/1.4050886
中图分类号
O646 [电化学、电解、磁化学];
学科分类号
081704 ;
摘要
Among various methods for remaining useful life (RUL) prediction of lithium batteries, the data-driven approach shows the most attractive character for non-linear relation learning and accurate prediction. However, the existing neural network models for RUL prediction not only lack accuracy but also are time-consuming in model training. In this paper, the sequential convolutional neural network-long short-term memory (CNN-LSTM) method is proposed for accurate RUL prediction of lithium batteries. First, degradation trajectories are analyzed, and six features are adopted for RUL prediction. Then, the CNN model is introduced for filtering the data features of degradation characters. And the orthogonal experiment is studied for optimizing the hyperparameters of the CNN model. Furthermore, by inputting the time-series features flattened by CNN and non-time series feature, the LSTM is reconstructed for memorizing the long-term degradation data of lithium battery. Finally, the proposed method is validated by four cells under different aging conditions. Comparing with the isolated models, the RUL prediction of sequential CNN-LSTM method has higher accuracy.
引用
收藏
页数:9
相关论文
共 33 条
[1]   Battery Degradation Temporal Modeling Using LSTM Networks [J].
Assefi, Mehdi ;
Hooshmand, Ali ;
Hosseini, Hossein ;
Sharma, Ratnesh .
2018 17TH IEEE INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA), 2018, :853-858
[2]  
Berecibar M, 2019, NATURE, V568, P325, DOI 10.1038/d41586-019-01138-1
[3]  
Bergstra J, 2012, J MACH LEARN RES, V13, P281
[4]  
Cai YS, 2017, PROCEEDINGS OF 2017 2ND INTERNATIONAL CONFERENCE ON POWER AND RENEWABLE ENERGY (ICPRE), P1, DOI 10.1109/ICPRE.2017.8390489
[5]   Online identification of lithium-ion battery state-of-health based on fast wavelet transform and cross D-Markov machine [J].
Cai, Yishan ;
Yang, Lin ;
Deng, Zhongwei ;
Zhao, Xiaowei ;
Deng, Hao .
ENERGY, 2018, 147 :621-635
[6]  
Chen Z, 2018, DESTECH TRANS ENVIR
[7]   Machine Learning-Based Lithium-Ion Battery Capacity Estimation Exploiting Multi-Channel Charging Profiles [J].
Choi, Yohwan ;
Ryu, Seunghyoung ;
Park, Kyungnam ;
Kim, Hongseok .
IEEE ACCESS, 2019, 7 :75143-75152
[8]   General Discharge Voltage Information Enabled Health Evaluation for Lithium-Ion Batteries [J].
Deng, Zhongwei ;
Hu, Xiaosong ;
Lin, Xianke ;
Xu, Le ;
Che, Yunhong ;
Hu, Lin .
IEEE-ASME TRANSACTIONS ON MECHATRONICS, 2021, 26 (03) :1295-1306
[9]   Data-driven state of charge estimation for lithium-ion battery packs based on Gaussian process regression [J].
Deng, Zhongwei ;
Hu, Xiaosong ;
Lin, Xianke ;
Che, Yunhong ;
Xu, Le ;
Guo, Wenchao .
ENERGY, 2020, 205
[10]  
Goebel Kai, 2007, PCOE