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Vol.3, No.3, 2024: pp.132-140

APPLICATION OF MACHINE LEARNING DURING MAINTENANCE AND EXPLOITATION OF ELECTRIC VEHICLES

Authors:

Dragan Marinković1,2

, Gergely Dezső3

, Saša Milojević4

1Department of Structural Analysis, Berlin Institute of Technology, Strasse des 17, Juni 135, 10623 Berlin, Germany
2Institute of Mechanical Science, Vilnius Gediminas Technical University, 10105 Vilnius, Lithuania
3Department of Physics and Production Engineering, Institute of Engineering and Agricultural Science, University of Nyíregyháza, Sóstói út 31/B, Nyíregyháza, H-4400, Hungary
4University of Kragujevac Faculty of Engineering, Sestre Janjić 6, Kragujevac 34000, Serbia

Received: 29 May 2024
Revised: 24 July 2024
Accepted: 12 August 2024
Published: 30 September 2024

Abstract:

In the era of increasing demand for sources of renewable and cleaner energy, electric vehicles offer possible solutions in order to maintain and improve the mobility of transport systems. In parallel, the application of machine learning for digital twin technology greatly contributes to the development and optimization of vehicles and systems, saving time and resources, as well as material resources. In terms of electric vehicle components, electric batteries represent the most expensive elements where machine learning can help to optimize characteristics during exploitation and to predict maintenance time and their lifetime. This article related to the possibilities of future research, which, by intensifying the digitalization and machine learning for digital twin technology, will affect the improvement of the application and disposal of components, but the complete system of electric vehicles, during the entire life cycle, including the recycling.

Keywords:

Digital Twin, Electric Vehicle, Battery, Machine Learning, Maintenance, Recycling

References:

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© 2024 by the authors. This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0)

Volume 4
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December 2025.

 

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How to Cite

D. Marinković, G. Dezső, S. Milojević, Application of Machine Learning During Maintenance and Exploitation of Electric Vehicles. Advanced Engineering Letters, 3(3), 2024: 132-140.
https://doi.org/10.46793/adeletters.2024.3.3.5

More Citation Formats

Marinković, D., Dezső, G., & Milojević, S. (2024). Application of Machine Learning During Maintenance and Exploitation of Electric Vehicles. Advanced Engineering Letters, 3(3), 132-140.
https://doi.org/10.46793/adeletters.2024.3.3.5

Marinković, Dragan, et al. “Application of Machine Learning During Maintenance and Exploitation of Electric Vehicles.“ Advanced Engineering Letters, vol. 3, no. 3, 2024, pp. 132-140.
https://doi.org/10.46793/adeletters.2024.3.3.5

Marinković, Dragan, Gergely Dezső, and Saša Milojević. 2024. “Application of Machine Learning During Maintenance and Exploitation of Electric Vehicles.“ Advanced Engineering Letters, 3 (3): 132-140.
https://doi.org/10.46793/adeletters.2024.3.3.5

Marinković, D., Dezső, G., and Milojević, S. (2024). Application of Machine Learning During Maintenance and Exploitation of Electric Vehicles. Advanced Engineering Letters, 3(3), pp. 132-140.
doi: 10.46793/adeletters.2024.3.3.5