Authors :
Shreyash patil; D. A. Patil
Volume/Issue :
Volume 9 - 2024, Issue 5 - May
Google Scholar :
https://tinyurl.com/32kf6fb9
DOI :
https://doi.org/10.38124/ijisrt/24may760
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
With the rapid integration of Electric Vehicles (EVs) into modern transportation systems, ensuring their security
against potential threats has become paramount. This review paper comprehensively explores the utilization of Artificial
Intelligence (AI) and Machine Learning (ML) techniques to fortify the security of EVs. The amalgamation of AI and ML
not only promises enhanced security protocols but also facilitates intelligent decision-making in real-time scenarios. The
paper begins by delineating the inherent vulnerabilities of EVs, ranging from communication networks to onboard systems,
which expose them to diverse cyber threats. Subsequently, it delves into the application of AI and ML algorithms for threat
detection, anomaly identification, and predictive maintenance in EVs. These techniques leverage advanced data analytics to
discern patterns and anomalies, thereby fortifying the EV's security posture. Furthermore, the review elucidates the role of
AI-driven intrusion detection systems (IDS) and anomaly detection algorithms in preempting cyber-attacks on EVs. It also
investigates the potential of reinforcement learning algorithms in adapting security measures dynamically based on evolving
threats. Moreover, the paper discusses the integration of AI- powered authentication mechanisms to safeguard EVs against
unauthorized access and malicious interventions. In addition to cyber threats, the review addresses physical security
concerns by examining AI-enabled surveillance systems and autonomous security mechanisms for EV charging stations and
parking facilities. Furthermore, it assesses the ethical implications and privacy concerns associated with the deployment of
AI-driven security solutions in the EV ecosystem. By synthesizing insights from diverse scholarly works and Empirical
studies, this review paper provides a comprehensive understanding of the evolving landscape of AI and ML-based security
measures for Electric Vehicles. It not only underscores the significance of proactive security measures but also elucidates
the challenges and future research directionsin leveraging AIto bolster the security of EVs in an increasingly interconnected
and digitized transportation environment.
References :
- Biswas, A., & Mahanti, A. Cyber security in electric vehicles: A comprehensive review. IEEE Access, 8, 104132-104154.
- Goh, W., & Ewe, H. T. A review on cyber security management in electric vehicles. IOP Conference Series: Materials Science and Engineering, 508(3), 032078.
- Li, W., Zheng, R., Lin, J., & Sun, Y Electric vehicle security: Vulnerabilities, threats, and countermeasures. IEEE Transactions on Industrial Informatics, 17(4), 2741-2750.
- Liu, J., Yang, C., & Zhang, H. A review on security and privacy of electric vehicle telematics systems. IEEE Access, 7, 65564-65575.
- Wu, L., Ma, Y., & Lu, R. A comprehensive review on electric vehicle security: Threats, potential attacks, and countermeasures. IEEE Access, 8, 50410-50427.
With the rapid integration of Electric Vehicles (EVs) into modern transportation systems, ensuring their security
against potential threats has become paramount. This review paper comprehensively explores the utilization of Artificial
Intelligence (AI) and Machine Learning (ML) techniques to fortify the security of EVs. The amalgamation of AI and ML
not only promises enhanced security protocols but also facilitates intelligent decision-making in real-time scenarios. The
paper begins by delineating the inherent vulnerabilities of EVs, ranging from communication networks to onboard systems,
which expose them to diverse cyber threats. Subsequently, it delves into the application of AI and ML algorithms for threat
detection, anomaly identification, and predictive maintenance in EVs. These techniques leverage advanced data analytics to
discern patterns and anomalies, thereby fortifying the EV's security posture. Furthermore, the review elucidates the role of
AI-driven intrusion detection systems (IDS) and anomaly detection algorithms in preempting cyber-attacks on EVs. It also
investigates the potential of reinforcement learning algorithms in adapting security measures dynamically based on evolving
threats. Moreover, the paper discusses the integration of AI- powered authentication mechanisms to safeguard EVs against
unauthorized access and malicious interventions. In addition to cyber threats, the review addresses physical security
concerns by examining AI-enabled surveillance systems and autonomous security mechanisms for EV charging stations and
parking facilities. Furthermore, it assesses the ethical implications and privacy concerns associated with the deployment of
AI-driven security solutions in the EV ecosystem. By synthesizing insights from diverse scholarly works and Empirical
studies, this review paper provides a comprehensive understanding of the evolving landscape of AI and ML-based security
measures for Electric Vehicles. It not only underscores the significance of proactive security measures but also elucidates
the challenges and future research directionsin leveraging AIto bolster the security of EVs in an increasingly interconnected
and digitized transportation environment.