CRLGNIJan 25, 2022

A Survey on Machine Learning-based Misbehavior Detection Systems for 5G and Beyond Vehicular Networks

arXiv:2201.10500v1130 citations
Originality Synthesis-oriented
AI Analysis

It tackles security challenges in V2X communications for autonomous vehicles and network operators, but is incremental as a survey paper.

This paper presents a comprehensive survey and classification of machine learning-based misbehavior detection systems for 5G and beyond vehicular networks, analyzing them from security and ML perspectives to address research gaps and open issues.

Significant progress has been made towards deploying Vehicle-to-Everything (V2X) technology. Integrating V2X with 5G has enabled ultra-low latency and high-reliability V2X communications. However, while communication performance has enhanced, security and privacy issues have increased. Attacks have become more aggressive, and attackers have become more strategic. Public Key Infrastructure proposed by standardization bodies cannot solely defend against these attacks. Thus, in complementary of that, sophisticated systems should be designed to detect such attacks and attackers. Machine Learning (ML) has recently emerged as a key enabler to secure our future roads. Many V2X Misbehavior Detection Systems (MDSs) have adopted this paradigm. Yet, analyzing these systems is a research gap, and developing effective ML-based MDSs is still an open issue. To this end, this paper present a comprehensive survey and classification of ML-based MDSs. We analyze and discuss them from both security and ML perspectives. Then, we give some learned lessons and recommendations helping in developing, validating, and deploying ML-based MDSs. Finally, we highlight open research and standardization issues with some future directions.

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