RUL Prediction for Lithium Batteries Using a Novel Ensemble Learning Method

被引:14
|
作者
Wu, Jiaju [1 ,2 ]
Kong, Linggang [2 ]
Cheng, Zheng [2 ]
Yang, Yonghui [2 ]
Zuo, Hongfu [1 ]
机构
[1] Nanjing Univ Aeronaut & Astronaut, Coll Civil Aviat, Nanjing 210016, Peoples R China
[2] China Acad Engn Phys, Inst Comp Applicat, Mianyang 621900, Sichuan, Peoples R China
关键词
PHM; RUL; Lithium-Ion batteries; Ensemble learning; GA; USEFUL LIFE PREDICTION;
D O I
10.1016/j.egyr.2022.10.298
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
The remaining useful life (RUL) is the key element of fault diagnosis, prediction and health management (PHM) during the equipment operation service period. The prediction result of RUL is the premise for equipment to adopt preventive maintenance, condition-based maintenance, fault maintenance and other maintenance strategies. Lithium battery is an important energy component of new energy vehicles, mobile phones, etc. Its RUL is related to the state of its equipment system. Many model-based methods have been used to predict the lithium batteries' RUL, and some studies have begun to use lithium battery monitoring data to predict its remaining service life. With the continuous detection and monitoring capability of equipment throughout its life cycle gradually improved, a large number of monitoring and detection data promote the wide application of data-driven residual life prediction in the field of equipment. At present, the data-driven prediction method of the lithium batteries' RUL mostly adopts a single time-series forecasting model. The robustness and generalization of the prediction method are insufficient. It needs to be further improved to improve the prediction accuracy and robustness. Preventive maintenance measures shall be taken immediately according to the prediction results to ensure the effective supply of energy at any time. In this paper, an integrated learning algorithm based on monitoring data is proposed to fit the degradation model of lithium batteries and predict their RUL. The ensemble learning method consists of 5 basic learners to achieve better prediction performance, including relevance vector machine (RVM), random forest (RF), elastic net (EN), autoregressive model (AR), and long shortterm memory (LSTM) Network. The genetic algorithm (GA) is used in the ensemble learning method to find and determine the optimal weights of the basic learners, and obtain the final prediction result of lithium batteries. Then, the simulation is carried out on the CS2_35 lithium battery data set. The simulation results show that the method proposed in this paper has a smaller Root Mean Square Error (RMSE) than another 5 single methods. The RMSE is respectively 0.00744 for RVM, 0.01097 for RF, 0.01507 for EN, 0.03223 for AR, 0.01541 for LSTM, and 0.00483 for ensemble learning, and the RMSE of ensemble learning is reduced by 0.0274 at the highest and 0.00261 at the lowest, so the ensemble learning algorithm has better robustness and generalization effect. (c) 2022 The Author(s). Published by Elsevier Ltd. This is an open access article under theCCBY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
收藏
页码:313 / 326
页数:14
相关论文
共 50 条
  • [21] RUL PREDICTION FOR LITHIUM-ION BATTERIES BASED ON DWD-SVR MODEL
    Wang, Xiaoming
    He, Ye
    Wang, Lulu
    Wu, Hongbin
    Xu, Bin
    Zhao, Wenguang
    Taiyangneng Xuebao/Acta Energiae Solaris Sinica, 2025, 46 (02): : 52 - 59
  • [22] An optimal goose lithium-ion batteries accurate and rapid RUL prediction method with automatic initial hyperparameters settings
    Li, Gang
    Huang, Yiyi
    Sun, Caitang
    Pang, Ying
    MEASUREMENT SCIENCE AND TECHNOLOGY, 2024, 35 (12)
  • [23] A novel ensemble learning model for state of health estimation of lithium-ion batteries
    Zeng, Chuxi
    Xu, Cheng
    Li, Haomiao
    Wang, Kangli
    JOURNAL OF POWER SOURCES, 2025, 638
  • [24] Adaptive self-attention LSTM for RUL prediction of lithium-ion batteries
    Wang, Zhuqing
    Liu, Ning
    Chen, Chilian
    Guo, Yangming
    INFORMATION SCIENCES, 2023, 635 : 398 - 413
  • [25] RUL Prediction of Lithium-ion Batteries Based on TimeGAN-Pyraformer-BiLSTM
    Li, Xiaoxin
    Ai, Qiang
    Xu, Ming
    ENGINEERING LETTERS, 2024, 32 (08) : 1675 - 1689
  • [26] A RUL prediction method for lithium-ion batteries based on improved singular spectrum analysis and CSA-KELM
    Ding, Guorong
    Chen, Hongxia
    MICROELECTRONICS RELIABILITY, 2023, 144
  • [27] A novel ensemble learning method for crash prediction using road geometric alignments and traffic data
    Wu, Peijie
    Meng, Xianghai
    Song, Li
    JOURNAL OF TRANSPORTATION SAFETY & SECURITY, 2020, 12 (09) : 1128 - 1146
  • [28] A coarse-to-fine ensemble method for capacity prediction of lithium-ion batteries in production
    Zhang, Guocui
    Zhang, Changlun
    He, Qiang
    INTERNATIONAL JOURNAL OF GREEN ENERGY, 2024, 21 (15) : 3538 - 3552
  • [29] State of health prediction for lithium-ion batteries with a novel online sequential extreme learning machine method
    Tian, Huixin
    Qin, Pengliang
    INTERNATIONAL JOURNAL OF ENERGY RESEARCH, 2021, 45 (02) : 2383 - 2397
  • [30] Prediction of Carbonation Capacity of SCMs Using Ensemble Learning Method
    Cai, Kangyi
    Liu, Jian
    Mwanza, Edward
    Fikru, Mahelet G.
    Ma, Hongyan
    Wunsch, Donald C., II
    2024 IEEE 7TH INTERNATIONAL CONFERENCE ON INDUSTRIAL CYBER-PHYSICAL SYSTEMS, ICPS 2024, 2024,