Depth analysis of battery performance based on a data-driven approach

被引:2
作者
Zhang, Zhen [1 ]
Sun, Hongrui [1 ]
Sun, Hui [1 ]
机构
[1] China Univ Petr, Coll New Energy & Mat, State Key Lab Heavy Oil Proc, Fuxue Rd 18, Beijing 102249, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
Machine learning; Lithium -ion battery; Capacity estimation; Interpretability; STATE; OPTIMIZATION;
D O I
10.1016/j.electacta.2023.143565
中图分类号
O646 [电化学、电解、磁化学];
学科分类号
081704 ;
摘要
Capacity degradation remains a significant challenge in the current application of the cells. The disintegration mechanism is well known to be very complex across the system. Understanding this intricate process and accurately predicting it pose considerable challenges. Thus, the machine learning (ML) technology is employed to predict the specific capacity changes of the cell throughout the cycle and grasp this intricate procedure. In contrast to prior work, this study introduces the WOA-ELM model, achieving an impressive R2 = 0.9998, the key factors affecting the specific capacity of the battery are determined, and the defects in the machine learning black box are overcome by the interpretable model. Their connection with the structural damage of electrode materials and battery failure during battery cycling is comprehensively explained, revealing their essentiality to battery performance. These findings contribute to enhanced research on contemporary batteries and potential modifications.
引用
收藏
页数:11
相关论文
共 43 条
  • [1] Andrey M., 2019, arXiv, DOI 10.48550y/arXiv.1905.13472
  • [2] Closed-loop optimization of fast-charging protocols for batteries with machine learning
    Attia, Peter M.
    Grover, Aditya
    Jin, Norman
    Severson, Kristen A.
    Markov, Todor M.
    Liao, Yang-Hung
    Chen, Michael H.
    Cheong, Bryan
    Perkins, Nicholas
    Yang, Zi
    Herring, Patrick K.
    Aykol, Muratahan
    Harris, Stephen J.
    Braatz, Richard D.
    Ermon, Stefano
    Chueh, William C.
    [J]. NATURE, 2020, 578 (7795) : 397 - +
  • [3] Machine learning for continuous innovation in battery technologies
    Aykol, Muratahan
    Herring, Patrick
    Anapolsky, Abraham
    [J]. NATURE REVIEWS MATERIALS, 2020, 5 (10) : 725 - 727
  • [4] GENERALIZED K NEAREST NEIGHBOR RULES
    BEZDEK, JC
    CHUAH, SK
    LEEP, D
    [J]. FUZZY SETS AND SYSTEMS, 1986, 18 (03) : 237 - 256
  • [5] Public perceptions of and responses to new energy technologies
    Boudet, Hilary S.
    [J]. NATURE ENERGY, 2019, 4 (06) : 446 - 455
  • [6] Machine learning for molecular and materials science
    Butler, Keith T.
    Davies, Daniel W.
    Cartwright, Hugh
    Isayev, Olexandr
    Walsh, Aron
    [J]. NATURE, 2018, 559 (7715) : 547 - 555
  • [7] Multi-criteria material selections and end-of-life product strategy: Grey relational analysis approach
    Chan, Joseph W. K.
    Tong, Thomas K. L.
    [J]. MATERIALS & DESIGN, 2007, 28 (05) : 1539 - 1546
  • [8] Applying Machine Learning to Rechargeable Batteries: From the Microscale to the Macroscale
    Chen, Xiang
    Liu, Xinyan
    Shen, Xin
    Zhang, Qiang
    [J]. ANGEWANDTE CHEMIE-INTERNATIONAL EDITION, 2021, 60 (46) : 24354 - 24366
  • [9] Experimental validation of a vanadium redox flow battery model for state of charge and state of health estimation
    Clemente, Alejandro
    Montiel, Manuel
    Barreras, Felix
    Lozano, Antonio
    Costa-Castello, Ramon
    [J]. ELECTROCHIMICA ACTA, 2023, 449
  • [10] CORTES C, 1995, MACH LEARN, V20, P273, DOI 10.1023/A:1022627411411