A Lithium-ion Battery RUL Prediction Method Considering the Capacity Regeneration Phenomenon

被引:95
作者
Pang, Xiaoqiong [1 ]
Huang, Rui [1 ]
Wen, Jie [2 ]
Shi, Yuanhao [2 ]
Jia, Jianfang [2 ]
Zeng, Jianchao [1 ]
机构
[1] North Univ China, Sch Data Sci & Technol, 3 XueYuan Rd, Taiyuan 030051, Shanxi, Peoples R China
[2] North Univ China, Sch Elect & Control Engn, 3 XueYuan Rd, Taiyuan 030051, Shanxi, Peoples R China
基金
中国国家自然科学基金;
关键词
lithium-ion battery; remaining useful life; regeneration phenomenon; wavelet decomposition; NAR neural network; REMAINING USEFUL LIFE; AUTOREGRESSIVE NEURAL-NETWORK; HEALTH ESTIMATION; PROGNOSTICS; STATE; MANAGEMENT;
D O I
10.3390/en12122247
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Prediction of Remaining Useful Life (RUL) of lithium-ion batteries plays a significant role in battery health management. Battery capacity is often chosen as the Health Indicator (HI) in research on lithium-ion battery RUL prediction. In the rest time of batteries, capacity will produce a certain degree of regeneration phenomenon, which exists in the use of each battery. Therefore, considering the capacity regeneration phenomenon in RUL prediction of lithium-ion batteries is helpful to improve the prediction performance of the model. In this paper, a novel method fusing the wavelet decomposition technology (WDT) and the Nonlinear Auto Regressive neural network (NARNN) model for predicting the RUL of a lithium-ion battery is proposed. Firstly, the multi-scale WDT is used to separate the global degradation and local regeneration of a battery capacity series. Then, the RUL prediction framework based on the NARNN model is constructed for the extracted global degradation and local regeneration. Finally, the two parts of the prediction results are combined to obtain the final RUL prediction result. Experiments show that the proposed method can not only effectively capture the capacity regeneration phenomenon, but also has high prediction accuracy and is less affected by different prediction starting points.
引用
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页数:14
相关论文
共 35 条
[1]   A new music-empirical wavelet transform methodology for time-frequency analysis of noisy nonlinear and non-stationary signals [J].
Amezquita-Sanchez, Juan P. ;
Adeli, Hojjat .
DIGITAL SIGNAL PROCESSING, 2015, 45 :55-68
[2]   Small-scale solar radiation forecasting using ARMA and nonlinear autoregressive neural network models [J].
Benmouiza, Khalil ;
Cheknane, Ali .
THEORETICAL AND APPLIED CLIMATOLOGY, 2016, 124 (3-4) :945-958
[3]   Fourier-Bessel series expansion based empirical wavelet transform for analysis of non-stationary signals [J].
Bhattacharyya, Abhijit ;
Singh, Lokesh ;
Pachori, Ram Bilas .
DIGITAL SIGNAL PROCESSING, 2018, 78 :185-196
[4]  
Deng L.M., 2017, P ANN C PROGN HLTH M
[5]   Multistep-ahead forecasting of chlorophyll a using a wavelet nonlinear autoregressive network [J].
Du Zhenhong ;
Qin Mengjiao ;
Zhang Feng ;
Liu Renyi .
KNOWLEDGE-BASED SYSTEMS, 2018, 160 :61-70
[6]   Prediction of Remaining Useful Life of Lithium-ion Battery based on Multi-kernel Support Vector Machine with Particle Swarm Optimization [J].
Gao, Dong ;
Huang, Miaohua .
JOURNAL OF POWER ELECTRONICS, 2017, 17 (05) :1288-1297
[7]   Empirical Wavelet Transform [J].
Gilles, Jerome .
IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2013, 61 (16) :3999-4010
[8]   Prognostics in battery health management [J].
Goebel, Kai ;
Saha, Bhaskar ;
Saxena, Abhinav ;
Celaya, Jose R. ;
Christophersen, Jon P. .
IEEE INSTRUMENTATION & MEASUREMENT MAGAZINE, 2008, 11 (04) :33-40
[9]   State of health estimation of lithium-ion batteries: A multiscale Gaussian process regression modeling approach [J].
He, Yi-Jun ;
Shen, Jia-Ni ;
Shen, Ji-Fu ;
Ma, Zi-Feng .
AICHE JOURNAL, 2015, 61 (05) :1589-1600
[10]   Nonlinear autoregressive neural network in an energy management strategy for battery/ultra-capacitor hybrid electrical vehicles [J].
Ibrahim, Mona ;
Jemei, Samir ;
Wimmer, Genevieve ;
Hissel, Daniel .
ELECTRIC POWER SYSTEMS RESEARCH, 2016, 136 :262-269