| [1] DONG Guangzhong, WEI Jingwen, CHEN Zonghai. Constrained Bayesian dual-filtering for state of charge estimation of lithium-ion batteries[J]. Electrical Power and Energy Systems, 2018, 99:516-524. [2] SHEN Yanqing. Improved chaos genetic algorithm based state of charge determination for lithium batteries in electric vehicles[J]. Energy, 2018, 152:576-585
 [3] WU Ji, WANG Yujie, ZHANG Xu, et al. A novel state of health estimation method of Li-ion battery using group method of data handling[J]. Journal of Power Source, 2016, 327:457-464.
 [4] HU Xiaosong, ZOU Changfu, ZHANG Caiping, et al. Technological developments in batteries:A survey of principal roles, types, and management needs[J]. IEEE Power Energy Magazine, 2017, 15(5):20-31.
 [5] CHAOUI H, GOLBON N, HMOUZ I, et al. Lyapunov-based adaptive state of charge and state of health estimation for lithium-ion batteries[J]. IEEE Trans. and Electron. 2015, 62(3):1610-1618.
 [6] SHENG Hanmin, XIAO Jian. Electric vehicle state of charge estimation:Nonlinear correlation and fuzzy support vector machine[J]. Journal of Power Sources, 2015, 281:131-137.
 [7] LI J, BARILLAS J K, GUENTHER C, et al. A comparative study of state of charge estimation algorithms for LiFePO4 batteries used in electric vehicles[J]. Journal of Power Sources, 2013(230):244-250.
 [8] DANG X, YAN L, XU K, et al. Open-circuit voltage-based state of charge estimation of lithium-ion battery using dual neural network fusion battery model[J]. Electrochimica Acta, 2016, 188:356-366.
 [9] KALAWOUN J, BILETSKA K, SUARD F, et al. From a novel classification of the battery state of charge estimators toward a conception of an ideal one[J]. Journal of Power Sources, 2015, 279:694-706.
 [10] RAHIMI-EICHI H, OJHA U, BARONTI F, et al. Battery management system:An overview of its application in the smart grid and electric vehicles[J]. IEEE Industrial Electronics Magazine, 2013, 7(2):4-16.
 [11] OMID Rahbaria, NOSHIN Omara, YOUSEF Firouz, et al. A novel state of charge and capacity estimation technique for electric vehicles connected to a smart grid based on inverse theory and a metaheuristic algorithm[J]. Energy, 2018, 155:1047-1058.
 [12] WANG Qianqian, WANG Jiao, ZHAO Pengju, et al. Correlation between the model accuracy and model-based SOC estimation[J]. Electrochimica Acta, 2017(228):146-159
 [13] RAMADAN H S, BECHERIF M, CLAUDE F. Extended kalman filter for accurate state of charge estimation of lithium-based batteries:A comparative analysis[J]. International Journal of Hydrogen Energy, 2017, 42:29033-29046.
 [14] MARAL Partovibakhsh, LIU Guangjun. An adaptive unscented Kalman filtering approach for online estimation of model parameters and state-of-charge of lithium-ion batteries for autonomous mobile robots[J]. IEEE Transactions on Control Systems Technology, 2015, 1(23):357-363.
 [15] ZHANG Jinlong, XIA Chaoying. State-of-charge estimation of valve regulated lead acid battery based on multi-state unscented Kalman filter[J]. Electrical Power and Energy Systems, 2011, 33:472-476.
 [16] SONG Qingping, LIU Rongke. Weighted adaptive filtering algorithm for carrier tracking of deep space signal[J]. Chinese Journal of Aeronautics, 2015, 28(4):1236-1244.
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