Modeling Lithium-Ion Batteries Using Machine Learning Algorithms for Mild-Hybrid Vehicle Applications

被引:0
|
作者
Jerouschek, Daniel [1 ]
Tan, Omer [1 ]
Kennel, Ralph [2 ]
Taskiran, Ahmet [1 ]
机构
[1] IAV GmbH, Dept Syst Integrat & Energy Management, Munich, Germany
[2] Tech Univ Munich, Inst Elect Drive Syst & Power Elect, Munich, Germany
关键词
lithium-ion battery (LIB); long short-term memories (LSTM); machine learning (ML); modeling recurrent neural network (RNN); NEURAL-NETWORKS;
D O I
10.1109/SEST50973.2021.9543225
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
The prediction of voltage levels in an automotive 48V mild hybrid power supply system is safety-relevant while also enabling greater efficiency. The high power-to-energy ratio in these power supply systems makes exact voltage prediction challenging, so that a method is established to model the behavior of the lithium-ion batteries by means of a recurrent neural network. The raw data are consequently pre-processed with over- and undersampling, normalization and sequentialization algorithms. The resulting database is used to train the constructed recurrent neural network models, while hyperparameter tuning is carried out with the optimization framework optuna. This training methodology is performed with two battery types. Validation shows a maximum error of 234 V for the LTO battery and a maximum error of 3.39 V for the LFP battery. The results demonstrate performance of the proposed methodology in an appropriate error range for utilization as a tool to generate a battery model based on available data.
引用
收藏
页数:6
相关论文
共 50 条
  • [31] Study of aging mechanisms in lithium-ion batteries for working vehicle applications
    Mocera, Francesco
    Soma, Aurelio
    Clerici, Davide
    2020 FIFTEENTH INTERNATIONAL CONFERENCE ON ECOLOGICAL VEHICLES AND RENEWABLE ENERGIES (EVER), 2020,
  • [32] Optimizing Lithium-Ion Batteries - Tailoring Electrodes for Microhybrid Vehicle Applications
    Sisk, Brian
    Zhang, Zhenli
    SAE INTERNATIONAL JOURNAL OF ALTERNATIVE POWERTRAINS, 2014, 3 (01) : 86 - 97
  • [33] Integrating physics-based modeling and machine learning for degradation diagnostics of lithium-ion batteries
    Thelen, Adam
    Lui, Yu Hui
    Shen, Sheng
    Laflamme, Simon
    Hu, Shan
    Ye, Hui
    Hu, Chao
    ENERGY STORAGE MATERIALS, 2022, 50 : 668 - 695
  • [34] Plug-In Hybrid Vehicle and Second-Life Applications of Lithium-Ion Batteries at Elevated Temperature
    Vaidya, Rutvik
    Selvan, Vishnu
    Badami, Pavan
    Knoop, Kathy
    Kannan, Arunachala M.
    BATTERIES & SUPERCAPS, 2018, 1 (02) : 75 - 82
  • [35] Hybrid BTMS for Lithium-Ion Batteries
    Alaoui, Chakib
    Zineddine, Mhamed
    Boulmalf, Mohammed
    PROCEEDINGS OF 2017 INTERNATIONAL RENEWABLE & SUSTAINABLE ENERGY CONFERENCE (IRSEC' 17), 2017, : 573 - 579
  • [36] A Novel Approach for Predicting Remaining Useful Life and Capacity Fade in Lithium-Ion Batteries Using Hybrid Machine Learning
    Jafari, Sadiqa
    Byun, Yung-Cheol
    Ko, Seokjun
    IEEE ACCESS, 2023, 11 : 131950 - 131963
  • [37] Hybrid machine learning framework for predictive maintenance and anomaly detection in lithium-ion batteries using enhanced random forest
    Kumar, R. Seshu
    Singh, Arvind R.
    Narayana, P. Lakshmi
    Chandrika, V. S.
    Bajaj, Mohit
    Zaitsev, Ievgen
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [38] Energetical modeling of lithium-ion batteries
    Urbain, M.
    Rael, S.
    Davat, B.
    CONFERENCE RECORD OF THE 2007 IEEE INDUSTRY APPLICATIONS CONFERENCE FORTY-SECOND IAS ANNUAL MEETING, VOLS. 1-5, 2007, : 714 - 721
  • [39] LITHIUM-ION BATTERIES FOR INDUSTRIAL APPLICATIONS
    Lavoie, Yves
    Danet, Francois
    Lombard, Benoit
    2017 INDUSTRY APPLICATIONS SOCIETY 64TH ANNUAL PETROLEUM AND CHEMICAL INDUSTRY TECHNICAL CONFERENCE (PCIC), 2017, : 283 - 290
  • [40] Modeling and simulation of lithium-ion batteries
    Martinez-Rosas, Ernesto
    Vasquez-Medrano, Ruben
    Flores-Tlacuahuac, Antonio
    COMPUTERS & CHEMICAL ENGINEERING, 2011, 35 (09) : 1937 - 1948