Battery State-of-Health Estimation: A Step towards Battery Digital Twins

被引:11
作者
Safavi, Vahid [1 ]
Bazmohammadi, Najmeh [1 ]
Vasquez, Juan C. [1 ]
Guerrero, Josep M. [1 ,2 ,3 ]
机构
[1] Aalborg Univ, Ctr Res Microgrids CROM, AAU Energy, DK-9220 Aalborg, Denmark
[2] Tech Univ Catalonia, Ctr Res Microgrids CROM, Dept Elect Engn, Barcelona 08034, Spain
[3] Catalan Inst Res & Adv Studies ICREA, Pg Lluis Co 23, Barcelona 08010, Spain
关键词
lithium-ion batteries; state of health; data pre-processing; discharging characteristics; digital twin; deep learning; CNN-LSTM;
D O I
10.3390/electronics13030587
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
For a lithium-ion (Li-ion) battery to operate safely and reliably, an accurate state of health (SOH) estimation is crucial. Data-driven models with manual feature extraction are commonly used for battery SOH estimation, requiring extensive expert knowledge to extract features. In this regard, a novel data pre-processing model is proposed in this paper to extract health-related features automatically from battery-discharging data for SOH estimation. In the proposed method, one-dimensional (1D) voltage data are converted to two-dimensional (2D) data, and a new data set is created using a 2D sliding window. Then, features are automatically extracted in the machine learning (ML) training process. Finally, the estimation of the SOH is achieved by forecasting the battery voltage in the subsequent cycle. The performance of the proposed technique is evaluated on the NASA public data set for a Li-ion battery degradation analysis in four different scenarios. The simulation results show a considerable reduction in the RMSE of battery SOH estimation. The proposed method eliminates the need for the manual extraction and evaluation of features, which is an important step toward automating the SOH estimation process and developing battery digital twins.
引用
收藏
页数:22
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共 60 条
  • [21] Terminal Group-Oriented Self-Assembly to Controllably Synthesize a Layer-by-Layer SnSe2 and MXene Heterostructure for Ultrastable Lithium Storage
    Kong, Xianglong
    Zhao, Xiaohan
    Li, Chen
    Jia, Zhuoming
    Yang, Chengkai
    Wu, Zhuoyan
    Zhao, Xudong
    Zhao, Ying
    He, Fei
    Ren, Yueming
    Yang, Piaoping
    Liu, Zhiliang
    [J]. SMALL, 2023, 19 (14)
  • [22] Parameter sensitivity analysis of electrochemical model-based battery management systems for lithium-ion batteries
    Li, Weihan
    Cao, Decheng
    Joest, Dominik
    Ringbeck, Florian
    Kuipers, Matthias
    Frie, Fabian
    Sauer, Dirk Uwe
    [J]. APPLIED ENERGY, 2020, 269
  • [23] Li Y, 2020, CHIN CONT DECIS CONF, P5489, DOI 10.1109/CCDC49329.2020.9164208
  • [24] Battery state of health modeling and remaining useful life prediction through time series model
    Lin, Chun-Pang
    Cabrera, Javier
    Yang, Fangfang
    Ling, Man-Ho
    Tsui, Kwok-Leung
    Bae, Suk-Joo
    [J]. APPLIED ENERGY, 2020, 275
  • [25] Deep learning enabled state of charge, state of health and remaining useful life estimation for smart battery management system: Methods, implementations, issues and prospects
    Lipu, M. S. Hossain
    Ansari, Shaheer
    Miah, Md Sazal
    Meraj, Sheikh T.
    Hasan, Kamrul
    Shihavuddin, A. S. M.
    Hannan, M. A.
    Muttaqi, Kashem M.
    Hussain, Aini
    [J]. JOURNAL OF ENERGY STORAGE, 2022, 55
  • [26] A review of deep learning approach to predicting the state of health and state of charge of lithium-ion batteries
    Luo, Kai
    Chen, Xiang
    Zheng, Huiru
    Shi, Zhicong
    [J]. JOURNAL OF ENERGY CHEMISTRY, 2022, 74 : 159 - 173
  • [27] Synchronous state of health estimation and remaining useful lifetime prediction of Li-Ion battery through optimized relevance vector machine framework
    Lyu, Zhiqiang
    Wang, Geng
    Gao, Renjing
    [J]. ENERGY, 2022, 251
  • [28] Remaining useful life and state of health prediction for lithium batteries based on differential thermal voltammetry and a deep-learning model
    Ma, Bin
    Yang, Shichun
    Zhang, Lisheng
    Wang, Wentao
    Chen, Siyan
    Yang, Xianbin
    Xie, Haicheng
    Yu, Hanqing
    Wang, Huizhi
    Liu, Xinhua
    [J]. JOURNAL OF POWER SOURCES, 2022, 548
  • [29] Multiple health indicators fusion-based health prognostic for lithium-ion battery using transfer learning and hybrid deep learning method
    Ma, Yan
    Shan, Ce
    Gao, Jinwu
    Chen, Hong
    [J]. RELIABILITY ENGINEERING & SYSTEM SAFETY, 2023, 229
  • [30] A hybrid method for prognostics of lithium-ion batteries capacity considering regeneration phenomena
    Meng, Huixing
    Geng, Mengyao
    Xing, Jinduo
    Zio, Enrico
    [J]. ENERGY, 2022, 261