Research on hybrid data-driven method for predicting the remaining useful life of lithium-ion batteries

被引:1
作者
Li, Yuanjiang [1 ,2 ]
Li, Liping [1 ]
Li, Lei [3 ]
Huang, Xinyu [1 ]
Sun, Guodong [4 ]
Wang, Yina [5 ]
Zhang, Jinglin [6 ,7 ,8 ]
机构
[1] Jiangsu Univ Sci & Technol, Sch Oceanog, Zhenjiang, Peoples R China
[2] Jiangsu Daquan Box Transformer Technol Co Ltd, Dept Engn, Zhenjiang, Peoples R China
[3] Monitoring & Res Ctr, Shanghai Elect Vehicle Publ Data Collecting, Shanghai, Peoples R China
[4] Shandong Inst Sci & Tech Informat, Jinan 250101, Peoples R China
[5] China State Shipbuilding Corp, Res Inst 7, Power Unit Div, Beijing, Peoples R China
[6] Shandong Univ, Sch Control Sci & Engn, Jinan 250100, Peoples R China
[7] Linyi Univ, Dept Informat Sci & Engn, Linyi 276000, Peoples R China
[8] Shandong Res Inst Ind Technol, Jinan 250100, Peoples R China
基金
中国国家自然科学基金;
关键词
Lithium-ion batteries; Remaining useful life; Improved northern goshawk optimization; Variational mode decomposition; Ordered neurons-long short-term memory; Attention mechanism; Tensor transfer; Learning-deep neural network; MODEL;
D O I
10.1016/j.cpc.2025.109500
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The instability and inconsistency of lithium-ion batteries (LIBs) may lead to sudden battery failures that cause serious accidents, hence the safety and reliability of the battery can be ordinarily effectively improved via improving the accuracy and uncertainty of the remaining useful life (RUL). Nevertheless, capacity data of LIBs display significant nonlinearity and are plagued by problems such as capacity regeneration (CR) and difficult to precise uncertainty. In order to address this issue, the improved northern goshawk optimization (INGO) algorithm and the variational mode decomposition (VMD) algorithm are combined in this article to present a unique hybrid driven by data prediction technique that adaptively breaks down the nonlinear, non-smooth initial battery capacity sequence into several trend subsequences and fluctuating subsequences. Its goal is to make the battery capacity sequence less complicated. Additionally, the deconstructed fluctuation subsequence is summed into a reconstructed sequence to optimize the computational process. Ordered neurons-long short-term memory attention mechanism (ONLSTM-AM) architectures and Tensor transfer learning-deep neural network (TTL-DNN) are employed to forecast the trending subsequence and rebuilt sequences, respectively. By doing this, the quantity of data that needs to be predicted is decreased and the training process is expedited. In this paper, the method is experimentally validated using the NASA dataset and the CALCE dataset, and the accuracy is compared with several common machine learning algorithms. The experiment's findings show that the proposed strategy produces the lowest RMSE values of 0.0055 Ah in the NASA dataset and 0.0061 Ah in the CALCE dataset, displaying high prediction accuracy, strong long-term prediction ability and high generalization ability. Our source code is available at https://github.com/Mmabc333/A-hybrid-method.
引用
收藏
页数:13
相关论文
共 34 条
[1]   Remaining useful life prediction of lithium-ion battery with optimal input sequence selection and error compensation [J].
Chen, Liaogehao ;
Zhang, Yong ;
Zheng, Ying ;
Li, Xiangshun ;
Zheng, Xiujuan .
NEUROCOMPUTING, 2020, 414 :245-254
[2]   Remaining useful life and state of health prediction for lithium batteries based on empirical mode decomposition and a long and short memory neural network [J].
Cheng, Gong ;
Wang, Xinzhi ;
He, Yurong .
ENERGY, 2021, 232
[3]   Prognostics of Lithium-Ion Batteries Based on Capacity Regeneration Analysis and Long Short-Term Memory Network [J].
Cui, Yuxuan ;
Chen, Yunxia .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2022, 71
[4]   Variational Mode Decomposition [J].
Dragomiretskiy, Konstantin ;
Zosso, Dominique .
IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2014, 62 (03) :531-544
[5]   State of health estimation of large-cycle lithium-ion batteries based on error compensation of autoregressive model [J].
Feng, Hailin ;
Yan, Huimin .
JOURNAL OF ENERGY STORAGE, 2022, 52
[6]   Early prediction of cycle life for lithium-ion batteries based on evolutionary computation and machine learning [J].
Gong, Dongliang ;
Gao, Ying ;
Kou, Yalin ;
Wang, Yurang .
JOURNAL OF ENERGY STORAGE, 2022, 51
[7]   Exploration of parameter spaces assisted by machine learning [J].
Hammad, A. ;
Park, Myeonghun ;
Ramos, Raymundo ;
Saha, Pankaj .
COMPUTER PHYSICS COMMUNICATIONS, 2023, 293
[8]   A comparative study of commercial lithium ion battery cycle life in electrical vehicle: Aging mechanism identification [J].
Han, Xuebing ;
Ouyang, Minggao ;
Lu, Languang ;
Li, Jianqiu ;
Zheng, Yuejiu ;
Li, Zhe .
JOURNAL OF POWER SOURCES, 2014, 251 :38-54
[9]   Multiple health indicators assisting data-driven prediction of the later service life for lithium-ion batteries [J].
Jiang, Hongmin ;
Wang, Hejing ;
Su, Yitian ;
Kang, Qiaoling ;
Meng, Xianhe ;
Yan, Lijing ;
Ma, Tingli .
JOURNAL OF POWER SOURCES, 2022, 542
[10]   TensorBNN: Bayesian inference for neural networks using TensorFlow [J].
Kronheim, B. S. ;
Kuchera, M. P. ;
Prosper, H. B. .
COMPUTER PHYSICS COMMUNICATIONS, 2022, 270