Battery state-of-charge estimation amid dynamic usage with physics-informed deep learning

被引:123
|
作者
Tian, Jinpeng [1 ]
Xiong, Rui [1 ]
Lu, Jiahuan [1 ]
Chen, Cheng [1 ]
Shen, Weixiang [2 ]
机构
[1] Beijing Inst Technol, Sch Mech Engn, Dept Vehicle Engn, 5 South Zhongguancun St, Beijing 100081, Peoples R China
[2] Swinburne Univ Technol, Sch Sci Comp & Engn Technol, Hawthorn, Vic 3122, Australia
基金
中国国家自然科学基金;
关键词
Lithium-ion battery; State of charge; Deep learning; Artificial intelligence; EQUIVALENT-CIRCUIT MODELS; LITHIUM-ION BATTERIES; NEURAL-NETWORK; ONLINE STATE; IDENTIFICATION;
D O I
10.1016/j.ensm.2022.06.007
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Accurate estimation of state of charge (SOC) constitutes the basis to enable the reliable operations of lithium-ion batteries. The recent development in deep learning provides an emerging solution to SOC estimation. However, the limited training and testing profiles and the ignorance of battery working principles jeopardise the performance of deep learning-based methods. In this study, we propose to incorporate two kinds of domain knowledge into the deep learning-based methods. First, voltage and current sequences are decoupled into open circuit voltage (OCV), ohmic response and polarisation voltage to augment the input of deep neural networks (DNNs). Second, as conventional DNNs ignore the time-dependency in SOC estimation results, we propose a combination framework to adaptively fuse the SOC estimation results from the DNN and short-term Ampere-hour predictions. The proposed method is validated on a large dataset which is collected by conducting the tests on eight batteries at various real-world driving profiles and is compared with a basic long short-term memory DNN based on the input of only voltage and current. The results show that the proposed method can sharply reduce the SOC estimation root mean square error and maximum absolute error by 30.89% and 64.88%, respectively, with only slightly increased computational cost. Further validations under different temperatures and the applications of the proposed method to other DNNs also demonstrate its effectiveness. These results highlight the potential to boost the performance of DNNs by making effective use of battery domain knowledge.
引用
收藏
页码:718 / 729
页数:12
相关论文
共 50 条
  • [41] Battery state-of-charge estimation using machine learning analysis of ultrasonic signatures
    Galiounas, Elias
    Tranter, Tom G.
    Owen, Rhodri E.
    Robinson, James B.
    Shearing, Paul R.
    Brett, Dan J. L.
    ENERGY AND AI, 2022, 10
  • [42] Online Parameter Estimation using Physics-Informed Deep Learning for Vehicle Stability Algorithms
    Koysuren, Kemal
    Keles, Ahmet Faruk
    Cakmakci, Melih
    2023 AMERICAN CONTROL CONFERENCE, ACC, 2023, : 466 - 471
  • [43] Probabilistic physics-informed machine learning for dynamic systems
    Subramanian, Abhinav
    Mahadevan, Sankaran
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2023, 230
  • [44] Dynamic state estimation method of heating network based on physics-informed neural networks
    Zhang J.
    Guo Q.
    Wang Z.
    Sun Y.
    Li B.
    Yin G.
    Sun H.
    Dianli Zidonghua Shebei/Electric Power Automation Equipment, 2023, 43 (10): : 69 - 78
  • [45] Effect of data enhancement on state-of-charge estimation of lithium-ion battery based on deep learning methods
    Li, Menghan
    Li, Chaoran
    Chen, Chen
    Zhang, Qiang
    Liu, Xinjian
    Liao, Wei
    Liu, Xiaori
    Rao, Zhonghao
    JOURNAL OF ENERGY STORAGE, 2024, 82
  • [46] Physics-Informed Machine Learning for Sound Field Estimation: Fundamentals, state of the art, and challenges
    Koyama, Shoichi
    Ribeiro, Juliano G. C.
    Nakamura, Tomohiko
    Ueno, Natsuki
    Pezzoli, Mirco
    IEEE SIGNAL PROCESSING MAGAZINE, 2024, 41 (06) : 60 - 71
  • [47] Physics-Informed Deep Learning with Kalman Filter Mixture: A New State Prediction Model
    Deshpande, Niharika
    Park, Hyoshin
    2024 58TH ANNUAL CONFERENCE ON INFORMATION SCIENCES AND SYSTEMS, CISS, 2024,
  • [48] Physics-informed machine learning for battery degradation diagnostics: A comparison of state-of-the-art methods
    Navidi, Sina
    Thelen, Adam
    Li, Tingkai
    Hu, Chao
    ENERGY STORAGE MATERIALS, 2024, 68
  • [49] Battery state of health estimation under dynamic operations with physics-driven deep learning
    Tang, Aihua
    Xu, Yuchen
    Hu, Yuanzhi
    Tian, Jinpeng
    Nie, Yuwei
    Yan, Fuwu
    Tan, Yong
    Yu, Quanqing
    APPLIED ENERGY, 2024, 370
  • [50] Physics-informed deep Koopman operator for Lagrangian dynamic systems
    Xuefeng WANG
    Yang CAO
    Shaofeng CHEN
    Yu KANG
    ScienceChina(InformationSciences), 2024, 67 (09) : 146 - 163