Energy Storage Science and Technology ›› 2024, Vol. 13 ›› Issue (4): 1142-1153.doi: 10.19799/j.cnki.2095-4239.2023.0889
Previous Articles Next Articles
Xiaobing CHANG1,2(), Zongshang HOU1,2, Lianqi LIU1,2, Guang WANG1,2, Jiale XIE1,2()
Received:
2023-12-07
Revised:
2023-12-25
Online:
2024-04-26
Published:
2024-04-22
Contact:
Jiale XIE
E-mail:220222216031@ncepu.edu.cn;tellerxie@ncepu.edu.cn
CLC Number:
Xiaobing CHANG, Zongshang HOU, Lianqi LIU, Guang WANG, Jiale XIE. Joint estimation of the state of charge and temperature of lithium batteries based on the electric thermal coupling effect[J]. Energy Storage Science and Technology, 2024, 13(4): 1142-1153.
Fig. 14
(a) Internal temperature and error curve at 0 ℃; (b) Internal temperature and error curve at 10 ℃; (c) Internal temperature and error curve at 20 ℃; (d) Internal temperature and error curve at 30 ℃; (e) 40 ℃ internal temperature and error curve; (f) Internal temperature and error curve at 50 ℃"
1 | WEI Z B, QUAN Z Y, WU J D, et al. Deep deterministic policy gradient-DRL enabled multiphysics-constrained fast charging of lithium-ion battery[J]. IEEE Transactions on Industrial Electronics, 2022, 69(3): 2588-2598. |
2 | YU Q Q, WANG C, LI J M, et al. Challenges and outlook for lithium-ion battery fault diagnosis methods from the laboratory to real world applications[J]. eTransportation, 2023, 17: 100254. |
3 | LIU K L, GAO Y Z, ZHU C, et al. Electrochemical modeling and parameterization towards control-oriented management of lithium-ion batteries[J]. Control Engineering Practice, 2022, 124: 105176. |
4 | BAZINSKI S J, WANG X. Experimental study on the influence of temperature and state-of-charge on the thermophysical properties of an LFP pouch cell[J]. Journal of Power Sources, 2015, 293: 283-291. |
5 | ZHANG C, LI K, DENG J. Real-time estimation of battery internal temperature based on a simplified thermoelectric model[J]. Journal of Power Sources, 2016, 302: 146-154. |
6 | DAMAY N, FORGEZ C, BICHAT M P, et al. Thermal modeling of large prismatic LiFePO4/graphite battery. Coupled thermal and heat generation models for characterization and simulation[J]. Journal of Power Sources, 2015, 283: 37-45. |
7 | ZHOU Z Y, LIU Y G, YOU M X, et al. Two-stage aging trajectory prediction of LFP lithium-ion battery based on transfer learning with the cycle life prediction[J]. Green Energy and Intelligent Transportation, 2022, 1(1): 100008. |
8 | YU Y B, HUANG T F, MIN H T, et al. Co-estimation of state of charge and internal temperature of pouch lithium battery based on multi-parameter time-varying electrothermal coupling model[J]. Journal of Energy Storage, 2023, 66: 107411. |
9 | ZHAO R, GU J J, LIU J. An investigation on the significance of reversible heat to the thermal behavior of lithium ion battery through simulations[J]. Journal of Power Sources, 2014, 266: 422-432. |
10 | TIAN Y, LAI R C, LI X Y, et al. A combined method for state-of-charge estimation for lithium-ion batteries using a long short-term memory network and an adaptive cubature Kalman filter[J]. Applied Energy, 2020, 265: 114789. |
11 | CHOMBO P V, LAOONUAL Y. A review of safety strategies of a Li-ion battery[J]. Journal of Power Sources, 2020, 478: 228649. |
12 | HAO X Y, WANG S L, FAN Y C, et al. An improved forgetting factor recursive least square and unscented particle filtering algorithm for accurate lithium-ion battery state of charge estimation[J]. Journal of Energy Storage, 2023, 59: 106478. |
13 | LI Y G, CHEN J Q, LAN F C. Enhanced online model identification and state of charge estimation for lithium-ion battery under noise corrupted measurements by bias compensation recursive least squares[J]. Journal of Power Sources, 2020, 456: 227984. |
14 | ERAZO K, NAGARAJAIAH S. An offline approach for output-only Bayesian identification of stochastic nonlinear systems using unscented Kalman filtering[J]. Journal of Sound and Vibration, 2017, 397: 222-240. |
15 | SUN C C, LIN H P, CAI H, et al. Improved parameter identification and state-of-charge estimation for lithium-ion battery with fixed memory recursive least squares and sigma-point Kalman filter[J]. Electrochimica Acta, 2021, 387: 138501. |
16 | HUI P, GUO L, WU L X, et al. A novel extended Kalman filter-based battery internal and surface temperature estimation based on an improved electro-thermal model[J]. Journal of Energy Storage, 2021, 41: 102854. |
17 | ZHANG S Z, GUO X D, ZHANG X W. An improved adaptive unscented Kalman filtering for state of charge online estimation of lithium-ion battery[J]. Journal of Energy Storage, 2020, 32: 101980. |
18 | DAI H F, ZHU L T, ZHU J G, et al. Adaptive Kalman filtering based internal temperature estimation with an equivalent electrical network thermal model for hard-cased batteries[J]. Journal of Power Sources, 2015, 293: 351-365. |
19 | MA Y, CUI Y F, MOU H Y, et al. Core temperature estimation of lithium-ion battery for EVs using Kalman filter[J]. Applied Thermal Engineering, 2020, 168: 114816. |
20 | SHI J J, GUO H S, CHEN D W. Parameter identification method for lithium-ion batteries based on recursive least square with sliding window difference forgetting factor[J]. Journal of Energy Storage, 2021, 44: 103485. |
21 | SUTULO S, GUEDES SOARES C. Application of an offline identification algorithm for adjusting parameters of a modular manoeuvring mathematical model[J]. Ocean Engineering, 2023, 279: 114328. |
22 | YANG B W, WANG D F, SUN X, et al. Offline order recognition for state estimation of lithium-ion battery using fractional order model[J]. Applied Energy, 2023, 341: 120977. |
23 | ZHENG F D, XING Y J, JIANG J C, et al. Influence of different open circuit voltage tests on state of charge online estimation for lithium-ion batteries[J]. Applied Energy, 2016, 183: 513-525. |
24 | XING Y J, HE W, PECHT M, et al. State of charge estimation of lithium-ion batteries using the open-circuit voltage at various ambient temperatures[J]. Applied Energy, 2014, 113: 106-115. |
25 | PLETT G L. Extended Kalman filtering for battery management systems of LiPB-based HEV battery packs[J]. Journal of Power Sources, 2004, 134(2): 262-276. |
26 | PANG H, GUO L, WU L X, et al. An enhanced temperature-dependent model and state-of-charge estimation for a Li-Ion battery using extended Kalman filter[J]. International Journal of Energy Research, 2020, 44(9): 7254-7267. |
27 | FU G Q, ZHOU L F, ZHENG Y, et al. Improved unscented Kalman filter algorithm-based rapid identification of thermal errors of machine tool spindle for shortening thermal equilibrium time[J]. Measurement, 2022, 195: 111121. |
28 | LI X Y, HUANG Z J, HUA W, et al. Mechanical vibration modeling and characterization of a plastic-cased lithium-ion battery[J]. Green Energy and Intelligent Transportation, 2022, 1(2): 100006. |
[1] | Bingjin LI, Xiaoxia HAN, Wenjie ZHANG, Weiguo ZENG, Jinde WU. Review of the remaining useful life prediction methods for lithium-ion batteries [J]. Energy Storage Science and Technology, 2024, 13(4): 1266-1276. |
[2] | Qing LI, Shaowei ZHANG, Silun LUO, Juchen LI, Haichao CHENG, Chenyi LU. A novel automatic underwater vehicle SOC estimator based on BPNN-AUKF at different temperatures [J]. Energy Storage Science and Technology, 2024, 13(4): 1205-1215. |
[3] | Ge LI, Xiangdong KONG, Yuedong SUN, Fei CHEN, Yuebo YUAN, Xuebing HAN, Yuejiu ZHENG. Method for sorting the dynamic characteristics of lithium-ion battery consistency based on production line big data [J]. Energy Storage Science and Technology, 2024, 13(4): 1188-1196. |
[4] | Wei XIAO, Xiaowen WU, Jingling SUN, Wei CHEN. Numerical calculation of temperature field of energy storage battery module and optimization design of heat dissipation system [J]. Energy Storage Science and Technology, 2024, 13(4): 1159-1166. |
[5] | Mingming SUN. Patent analysis of organic-inorganic composite solid-state electrolytes for lithium-ion batteries [J]. Energy Storage Science and Technology, 2024, 13(3): 1096-1105. |
[6] | Chunshan HE, Ziyang WANG, Bin YAO. Experimental study of the thermal runaway characteristics of lithium iron phosphate batteries for energy storage under various discharge powers [J]. Energy Storage Science and Technology, 2024, 13(3): 981-989. |
[7] | Xiaoyu SHEN, Congbo YIN. SOH estimation of lithium-ion batteries using a convolutional Fastformer [J]. Energy Storage Science and Technology, 2024, 13(3): 990-999. |
[8] | Jia LIU, Zhiqiang MA, Guangchen LIU, Jundong GAO, Hongxun LI. Predicting the residual useful life of power batteries based on the GRUU-TCN ensemble under multiscale decomposition [J]. Energy Storage Science and Technology, 2024, 13(3): 1009-1018. |
[9] | Shuangming DUAN, Shengli ZHANG. Lithium-ion battery parameter identification based on adaptive multilayer RLS [J]. Energy Storage Science and Technology, 2024, 13(2): 712-720. |
[10] | Xiaoyun SUN, Deren WANG, Lin MENG, Zhongshan REN, Sensen LI. Design and optimization of cell structure and negative electrode materials for high areal capacity zinc-bromine flow batteries [J]. Energy Storage Science and Technology, 2024, 13(2): 370-380. |
[11] | Xintian XU, Bixiao ZHANG, Xinlong ZHU, Kaijie YANG. Refined thermal design optimization of energy storage battery system based on battery box openings [J]. Energy Storage Science and Technology, 2024, 13(2): 515-525. |
[12] | Zhaokai YUAN, Qiuhua FAN, Dongqing WANG, Tianmin SUN. State of charge estimation for lithium-ion batteries under multiple temperatures based on the MIAEK algorithm [J]. Energy Storage Science and Technology, 2024, 13(2): 680-690. |
[13] | Panqing WANG, Yanjie HUANG, Yipeng HE, Qiheng CHEN, Ti YIN, Weihao CHEN, Lei TAN, Tianxiang NING, Kangyu ZOU, Lingjun LI. Research progress on the surface lithium residue of high-nickel cathode materials [J]. Energy Storage Science and Technology, 2024, 13(1): 92-112. |
[14] | Lin LI. Technological landscape, challenges, and future outlook of the lithium-ion battery industry: An economic perspective [J]. Energy Storage Science and Technology, 2024, 13(1): 358-360. |
[15] | Linghu TIAN, Bingxia YUAN. Prediction of ion battery remaining life of energy storage system based on data preprocessing and computer VMD-LSTM-GPR [J]. Energy Storage Science and Technology, 2024, 13(1): 336-338. |
Viewed | ||||||
Full text |
|
|||||
Abstract |
|
|||||