LGCRNIMay 31, 2021

Machine Learning for Security in Vehicular Networks: A Comprehensive Survey

arXiv:2105.15035v286 citations
Originality Synthesis-oriented
AI Analysis

It synthesizes existing research for researchers and practitioners in vehicular network security, but is incremental as it is a survey.

This paper provides a comprehensive survey of machine learning-based techniques for addressing security issues in vehicular networks, covering various attacks, challenges, and solution approaches without presenting new experimental results.

Machine Learning (ML) has emerged as an attractive and viable technique to provide effective solutions for a wide range of application domains. An important application domain is vehicular networks wherein ML-based approaches are found to be very useful to address various problems. The use of wireless communication between vehicular nodes and/or infrastructure makes it vulnerable to different types of attacks. In this regard, ML and its variants are gaining popularity to detect attacks and deal with different kinds of security issues in vehicular communication. In this paper, we present a comprehensive survey of ML-based techniques for different security issues in vehicular networks. We first briefly introduce the basics of vehicular networks and different types of communications. Apart from the traditional vehicular networks, we also consider modern vehicular network architectures. We propose a taxonomy of security attacks in vehicular networks and discuss various security challenges and requirements. We classify the ML techniques developed in the literature according to their use in vehicular network applications. We explain the solution approaches and working principles of these ML techniques in addressing various security challenges and provide insightful discussion. The limitations and challenges in using ML-based methods in vehicular networks are discussed. Finally, we present observations and lessons learned before we conclude our work.

Foundations

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