Real-Time Predicting the Low-Temperature Performance of WLTC-Based Lithium-Ion Battery Using an LSTM-PF Sequential Ensemble Model

被引:1
作者
Sim, Min-Sung [1 ]
Kim, Do-Yoon [1 ]
Yoon, Yong-Jin [2 ]
Kang, Seok-Won [1 ]
Baek, Jong Dae [1 ]
机构
[1] Yeungnam Univ, Dept Automot Engn, Gyongsan 38541, Gyeongbuk, South Korea
[2] Korea Adv Inst Sci & Technol KAIST, Dept Mech Engn, Daejeon 34141, South Korea
关键词
Lithium-ion batteries; Real-time systems; Vehicles; Temperature measurement; Lithium-ion battery; low-temperature; long short-term memory (LSTM); particle filter (PF); worldwide light vehicles test cycle (WLTC); real-time prediction; MANAGEMENT-SYSTEMS; USEFUL LIFE; NEURAL-NETWORKS; PACKS; PROGNOSTICS; FILTER; STATE; SOC;
D O I
10.1109/ACCESS.2024.3419009
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Predicting an abnormally rapid decline in battery capacity in low-temperature environments is important for maintaining battery stability and performance. This study introduces a method that integrates cycling tests under various current conditions with deep neural network algorithms to identify and predict in real-time the trend of battery capacity reduction in low-temperature conditions ( -10(degrees)C). For this method, 18 feature data points were included, consisting of the test environment and conditions, as well as geometric and statistical features. The importance of these features was analyzed using the Random Forest (RF) algorithm, and the top 12 feature data points were selected to improve the efficiency and accuracy of the Long Short-Term Memory (LSTM) model. Furthermore, we applied a sequential ensemble technique that uses the output of the LSTM model as the input for the particle filter, significantly improving the performance of the prediction model. The approach was used to predict the capacity of the tested battery using C-rate transformation based on the WLTC. The results showed an error rate of 0.9% and an RMSE of 0.0048, representing a 25% decrease in the error rate and a 48% reduction in the RMSE compared with those predicted by the LSTM model.
引用
收藏
页码:90171 / 90180
页数:10
相关论文
共 43 条
[1]   A Critical Review of Thermal Issues in Lithium-Ion Batteries [J].
Bandhauer, Todd M. ;
Garimella, Srinivas ;
Fuller, Thomas F. .
JOURNAL OF THE ELECTROCHEMICAL SOCIETY, 2011, 158 (03) :R1-R25
[2]   On the use of cross-validation for time series predictor evaluation [J].
Bergmeir, Christoph ;
Benitez, Jose M. .
INFORMATION SCIENCES, 2012, 191 :192-213
[3]   Second life batteries lifespan: Rest of useful life and environmental analysis [J].
Canals Casals, Lluc ;
Amante Garcia, B. ;
Canal, Camille .
JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2019, 232 :354-363
[4]   Improved particle filter for nonlinear problems [J].
Carpenter, J ;
Clifford, P ;
Fearnhead, P .
IEE PROCEEDINGS-RADAR SONAR AND NAVIGATION, 1999, 146 (01) :2-7
[5]   State-of-charge estimation of Li-ion batteries using deep neural networks: A machine learning approach [J].
Chemali, Ephrem ;
Kollmeyer, Phillip J. ;
Preindl, Matthias ;
Emadi, Ali .
JOURNAL OF POWER SOURCES, 2018, 400 :242-255
[6]   All-temperature area battery application mechanism, performance, and strategies [J].
Chen, Siqi ;
Wei, Xuezhe ;
Zhang, Guangxu ;
Wang, Xueyuan ;
Zhu, Jiangong ;
Feng, Xuning ;
Dai, Haifeng ;
Ouyang, Minggao .
INNOVATION, 2023, 4 (04)
[7]  
Chen Z., 2003, STAT A J THEORETICAL, V182, P69, DOI [10.1080/02331880309257, DOI 10.1080/02331880309257]
[8]   Charge and discharge profiles of repurposed LiFePO4 batteries based on the UL 1974 standard [J].
Chung, Hsien-Ching .
SCIENTIFIC DATA, 2021, 8 (01)
[9]   Online cell SOC estimation of Li-ion battery packs using a dual time-scale Kalman filtering for EV applications [J].
Dai, Haifeng ;
Wei, Xuezhe ;
Sun, Zechang ;
Wang, Jiayuan ;
Gu, Weijun .
APPLIED ENERGY, 2012, 95 :227-237
[10]   Particle filtering [J].
Djuric, PM ;
Kotecha, JH ;
Zhang, JQ ;
Huang, YF ;
Ghirmai, T ;
Bugallo, MF ;
Míguez, J .
IEEE SIGNAL PROCESSING MAGAZINE, 2003, 20 (05) :19-38