CLC number: TM912.1
On-line Access: 2024-08-27
Received: 2023-10-17
Revision Accepted: 2024-05-08
Crosschecked: 2017-03-09
Cited: 0
Clicked: 5633
Xi-ming Cheng, Li-guang Yao, Michael Pecht. Lithium-ion battery state-of-charge estimation based on deconstructed equivalent circuit at different open-circuit voltage relaxation times[J]. Journal of Zhejiang University Science A, 2017, 18(4): 256-267.
@article{title="Lithium-ion battery state-of-charge estimation based on deconstructed equivalent circuit at different open-circuit voltage relaxation times",
author="Xi-ming Cheng, Li-guang Yao, Michael Pecht",
journal="Journal of Zhejiang University Science A",
volume="18",
number="4",
pages="256-267",
year="2017",
publisher="Zhejiang University Press & Springer",
doi="10.1631/jzus.A1600251"
}
%0 Journal Article
%T Lithium-ion battery state-of-charge estimation based on deconstructed equivalent circuit at different open-circuit voltage relaxation times
%A Xi-ming Cheng
%A Li-guang Yao
%A Michael Pecht
%J Journal of Zhejiang University SCIENCE A
%V 18
%N 4
%P 256-267
%@ 1673-565X
%D 2017
%I Zhejiang University Press & Springer
%DOI 10.1631/jzus.A1600251
TY - JOUR
T1 - Lithium-ion battery state-of-charge estimation based on deconstructed equivalent circuit at different open-circuit voltage relaxation times
A1 - Xi-ming Cheng
A1 - Li-guang Yao
A1 - Michael Pecht
J0 - Journal of Zhejiang University Science A
VL - 18
IS - 4
SP - 256
EP - 267
%@ 1673-565X
Y1 - 2017
PB - Zhejiang University Press & Springer
ER -
DOI - 10.1631/jzus.A1600251
Abstract: Equivalent circuit model-based state-of-charge (SOC) estimation has been widely studied for power lithium-ion batteries. An appropriate relaxation period to measure the open-circuit voltage (OCV) should be investigated to both ensure good SOC estimation accuracy and improve OCV test efficiency. Based on a battery circuit model, an SOC estimator in the combination of recursive least squares (RLS) and the extended Kalman filter is used to mitigate the error voltage between the measurement and real values of the battery OCV. To reduce the iterative computation complexity, a two-stage RLS approach is developed to identify the model parameters, the battery circuit of which is divided into two simple circuits. Then, the measurement values of the OCV at varying relaxation periods and three temperatures are sampled to establish the relationships between SOC and OCV for the developed SOC estimator. Lastly, dynamic stress test and federal test procedure drive cycles are used to validate the model-based SOC estimation method. Results show that the relationships between SOC and OCV at a short relaxation time, such as 5 min, can also drive the SOC estimator to produce a good performance.
This paper shows original work towards development of a two stage process to estimate the EC model parameters and determine battery SOC. The circuit deconstruction method was validated with DST and FTP test cycles. The uniqueness of the work lies in the reduction in error in estimation of SOC and also reducing in the OCV test time. The authors have followed a reasonable scientific approach to explain the model development, theory and results.
[1]Aung, H., Low, K.S., Goh, S.T., 2015. State-of-charge estimation of lithium-ion battery using square root spherical unscented Kalman filter (Sqrt-UKFST) in nanosatellite. IEEE Transactions on Power Electronics, 30(9):4774-4783.
[2]Cheng, X., Yao, L., Xing, Y., et al., 2016. Novel parametric circuit modeling for Li-ion batteries. Energies, 9(7):539-553.
[3]Chui, C.K., Chen, G., 2009. Kalman Filtering with Real-time Applications. Springer, Berlin, Germany, p.181-184.
[4]Dai, H., Zhang, X., Wei, X., et al., 2013. Cell-BMS validation with a hardware-in-the-loop simulation of lithium-ion battery cells for electric vehicles. International Journal of Electrical Power and Energy Systems, 52:174-184.
[5]Ecker, M., Gerschler, J.B., Vogel, J., et al., 2012. Development of a lifetime prediction model for lithium-ion batteries based on extended accelerated aging test data. Journal of Power Sources, 215:248-257.
[6]Einhorn, M., Conte, F.V., Kral, C., et al., 2013. Comparison, selection, and parameterization of electrical battery models for automotive applications. IEEE Transactions on Power Electronics, 28(3):1429-1437.
[7]Fleischer, C., Waag, W., Heyn, H.M., et al., 2014. On-line adaptive battery impedance parameter and state estimation considering physical principles in reduced order equivalent circuit battery models: Part 1. Requirements, critical review of methods and modeling. Journal of Power Sources, 260:276-291.
[8]Haykin, S., 2001. Kalman Filtering and Neural Networks. John & Wiley Inc., New York, USA, p.123-174.
[9]Hu, X., Sun, F., Cheng, X., 2011. Recursive calibration for a lithium iron phosphate battery for electric vehicles using extended Kalman filtering. Journal of Zhejiang University-SCIENCE A (Applied Physics & Engineering), 12(11):818-825.
[10]Huria, T., Ludovici, G., Lutzemberger, G., 2014. State of charge estimation of high power lithium iron phosphate cells. Journal of Power Sources, 249:92-102.
[11]Jackey, R., Saginaw, M., Sanghvi, P., et al., 2013. Battery model parameter estimation using a layered technique: an example using a lithium iron phosphate cell. SAE Technical Paper, 2013-01-1547.
[12]Khan, M.R., Mulder, G., van Mierlo, J., 2014. An online framework for state of charge determination of battery systems using combined system identification approach. Journal of Power Sources, 246:629-641.
[13]Lee, J., Nam, O., Cho, B.H., 2007. Li-ion battery SOC estimation method based on the reduced order extended Kalman filtering. Journal of Power Sources, 174(1):9-15.
[14]Lee, S., Kim, J., 2015. Discrete wavelet transform-based denoising technique for advanced state-of-charge estimator of a lithium-ion battery in electric vehicles. Energy, 83:462-473.
[15]Leng, F., Tan, C.M., Yazami, R., et al., 2014. A practical framework of electrical based online state-of-charge estimation of lithium ion batteries. Journal of Power Sources, 255:423-430.
[16]Mastali, M., Vazquez-Arenas, J., Fraser, R., et al., 2013. Battery state of the charge estimation using Kalman filtering. Journal of Power Sources, 239:294-307.
[17]Northrop, P.W.C., Suthar, B., Ramadesigan, V., et al., 2014. Efficient simulation and reformulation of lithium-ion battery models for enabling electric transportation. Journal of the Electrochemical Society, 161(8):E3149-E3157.
[18]Pei, L., Wang, T., Lu, R., et al., 2014. Development of a voltage relaxation model for rapid open-circuit voltage prediction in lithium-ion batteries. Journal of Power Sources, 253:412-418.
[19]Petzl, M., Danzer, M.A., 2013. Advancements in OCV measurement and analysis for lithium-ion batteries. IEEE Transactions on Energy Conversion, 28(3):675-681.
[20]Piller, S., Perrin, M., Jossen, A., 2001. Methods for state-of-charge determination and their applications. Journal of Power Sources, 96(1):113-120.
[21]Plett, G.L., 2004. Extended Kalman filtering for battery management systems of LiPB-based HEV battery packs: Part 3. State and parameter estimation. Journal of Power Sources,134(2):277-292.
[22]Plett, G.L., 2006. Sigma-point Kalman filtering for battery management systems of LiPB-based HEV battery packs: Part 1. Introduction and state estimation. Journal of Power Sources, 161(2):1356-1368.
[23]Roscher, M.A., Assfalg, J., Bohlen, O.S., 2011. Detection of utilizable capacity deterioration in battery systems. IEEE Transactions on Vehicle Technology, 60(1):98-103.
[24]Sayed, A.H., 2008. Adaptive Filters. John Wiley & Sons, Inc., Hoboken, New Jersey, USA, p.501-508.
[25]Seaman, A., Dao, T.S., McPhee, J., 2014. A survey of mathematics-based equivalent-circuit and electrochemical battery models for hybrid and electric vehicle simulation. Journal of Power Sources, 256:410-423.
[26]Sepasi, S., Ghorbani, R., Liaw, B.Y., 2014. Improved extended Kalman filter for state of charge estimation of battery pack. Journal of Power Sources, 255:368-376.
[27]Speirs, J., Contestabile, M., Houari, Y., et al., 2014. The future of lithium availability for electric vehicle batteries. Renewable and Sustainable Energy Reviews, 35:183-193.
[28]Sun, F., Hu, X., Zou, Y., et al., 2011. Adaptive unscented Kalman filtering for state of charge estimation of a lithium-ion battery for electric vehicles. Energy, 36(5):3531-3540.
[29]Waag, W., Fleischer, C., Sauer, D.U., 2014. Critical review of the methods for monitoring of lithium-ion batteries in electric and hybrid vehicles. Journal of Power Sources, 258:321-339.
[30]Wang, J., Guo, J., Ding, L., 2009. An adaptive Kalman filtering based state of charge combined estimator for electric vehicle battery pack. Energy Conversion and Management, 50(12):3182-3186.
[31]Xia, B., Wang, H., Tian, Y., et al., 2015. State of charge estimation of lithium-ion batteries using an adaptive cubature Kalman filter. Energies, 8(6):5916-5936.
[32]Xing, Y., He, W., Pecht, M., et al., 2014. State of charge estimation of lithium-ion batteries using the open-circuit voltage at various ambient temperatures. Applied Energy, 113:106-115.
[33]Xiong, R., Sun, F., Chen, Z., et al., 2013a. A data-driven multi-scale extended Kalman filtering based parameter and state estimation approach of lithium-ion polymer battery in electric vehicles. Applied Energy, 113:463-476 .
[34]Xiong, R., Sun, F., He, H., et al., 2013b. A data-driven adaptive state of charge and power capability joint estimator of lithium-ion polymer battery used in electric vehicles. Energy, 63:295-308.
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