A Comparative Study on Electric Vehicle Battery Management Systems Using Machine Learning for Enhanced Safety and Longevity

Authors

  • David Alexander Lee Universitas Sorbonne
  • Jessica Ann Smith Universitas Sorbonne
  • Emily Rose Johnson Universitas Sorbonne

DOI:

https://doi.org/10.61132/ijmecie.v1i2.72

Keywords:

Electric Vehicles, Battery Management System, Machine Learning, State of Charge, State of Health, Thermal Runaway

Abstract

This paper presents a comparative analysis of various battery management systems (BMS) in electric vehicles, with a focus on incorporating machine learning techniques to improve battery safety and extend battery life. The study evaluates conventional BMS against machine learning-enhanced models in predicting thermal runaway, state of charge (SOC), and state of health (SOH) under diverse operating conditions. Results indicate that machine learning algorithms outperform conventional methods, providing more accurate SOC and SOH estimations, thus enhancing vehicle safety and longevity.

References

Anderson, P., & Lee, J. (2021). Machine learning applications in battery management systems for electric vehicles. Journal of Energy Storage, 35, 102145.

Brown, C., & Robinson, P. (2020). A study of BMS prediction accuracy in electric vehicle applications. Journal of Applied Energy, 261, 114479.

Chen, Y., & Xu, H. (2019). A review of battery state-of-health estimation methods for electric vehicles. Renewable and Sustainable Energy Reviews, 113, 109254.

Gao, X., & Wang, Z. (2020). Advanced battery management systems with machine learning: Challenges and opportunities. IEEE Transactions on Industrial Informatics, 16(5), 3058–3070.

Garcia, M., & Fernandez, D. (2019). Battery thermal management systems and machine learning for EVs. Journal of Power and Energy Engineering, 7(1), 1–13.

Huang, Y., & Kim, T. (2021). Comparing data-driven BMS approaches for extending EV battery life. Journal of Electrochemical Science and Technology, 12(3), 319–332.

Kim, M., & Park, S. (2018). Comparative analysis of BMS algorithms for state-of-charge estimation using machine learning. Journal of Power Sources, 384, 368–379.

Patel, K., & Shen, Z. (2021). Real-time battery fault detection in electric vehicles using machine learning techniques. Journal of Electrical and Electronics Engineering, 14(2), 215–226.

Singh, A., & Gupta, R. (2022). Optimizing electric vehicle battery life using machine learning models. IEEE Access, 10, 56789–56799.

White, S., & Thompson, R. (2019). Machine learning-based prediction for state-of-charge and state-of-health in EV batteries. Energy Storage Science and Technology, 8(3), 315–325.

Wu, J., & Tan, L. (2021). Battery management systems for EVs: Analyzing performance and safety metrics. Energy Reports, 7, 3076–3089.

Yu, H., & Chen, W. (2022). Optimizing battery performance and safety in electric vehicles using deep learning. IEEE Transactions on Smart Grid, 13(4), 2321–2330.

Zhang, R., & Yang, D. (2018). Machine learning techniques in battery management systems for EV safety improvements. Renewable and Sustainable Energy Reviews, 94, 739–752.

Zhang, T., & Lin, Y. (2020). Data-driven approaches for battery thermal management in electric vehicles. Renewable Energy, 147, 2121–2132.

Zhou, L., & Li, Q. (2020). Battery state-of-health monitoring for electric vehicles using neural networks. Journal of Energy Storage, 27, 101096.

Downloads

Published

2024-04-30

How to Cite

David Alexander Lee, Jessica Ann Smith, & Emily Rose Johnson. (2024). A Comparative Study on Electric Vehicle Battery Management Systems Using Machine Learning for Enhanced Safety and Longevity. International Journal of Mechanical, Electrical and Civil Engineering, 1(2), 21–26. https://doi.org/10.61132/ijmecie.v1i2.72