Vol. 4 No. 1 (2024): Advances in Deep Learning Techniques
Articles

Standardization and Regulation of V2X Cybersecurity: Analyzing the Current Landscape, Identifying Gaps, and Proposing Frameworks for Harmonization

Babajide J Asaju
Towson University, USA
Cover

Published 05-03-2024

Keywords

  • V2X,
  • Cybersecurity

How to Cite

[1]
B. J Asaju, “Standardization and Regulation of V2X Cybersecurity: Analyzing the Current Landscape, Identifying Gaps, and Proposing Frameworks for Harmonization”, Adv. in Deep Learning Techniques, vol. 4, no. 1, pp. 33–52, Mar. 2024.

Abstract

In recent years, the automotive industry has witnessed a profound transformation propelled by the widespread adoption of Vehicle-to-Everything (V2X) communication technology. This innovation empowers vehicles to establish seamless communication between various elements of the transportation infrastructure, pedestrians, and other road users. While this interconnectedness promises enhanced safety, efficiency, and convenience on the roads, it also introduces a myriad of cybersecurity challenges.

Recognizing the critical importance of safeguarding V2X systems against malicious threats and cyber-attacks, this research article delves into the imperative need for the establishment of robust standards and regulations. The primary objective of this study is to conduct a meticulous analysis of the prevailing global landscape of standards and regulations concerning V2X cybersecurity.

To achieve this objective, the research meticulously identifies and scrutinizes existing standards, regulations, and best practices implemented across diverse jurisdictions and within various automotive stakeholders. Through a systematic evaluation of their efficacy and limitations, the study endeavors to pinpoint deficiencies and inadequacies in the current regulatory framework governing V2X cybersecurity.

Furthermore, this article endeavors to transcend the mere identification of gaps by proposing comprehensive frameworks aimed at harmonizing cybersecurity measures. These frameworks are envisioned to facilitate coherence and consistency in cybersecurity protocols across different geographical regions and among diverse stakeholders within the automotive ecosystem. By promoting alignment and collaboration, the proposed frameworks aspire to fortify the overall security posture of V2X systems, thereby mitigating vulnerabilities and bolstering resilience against potential cyber threats.

In essence, this research article serves as a clarion call for concerted action toward the establishment of a robust, standardized, and harmonized regulatory framework for V2X cybersecurity. Through collective efforts and strategic collaboration among policymakers, regulators, and industry stakeholders, the vision of a secure and resilient V2X ecosystem can be actualized, thereby ensuring the safety and integrity of future transportation systems.

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