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.
翻译:在部署车辆对一切(V2X)技术方面已取得重大进展。将V2X与5G结合,使超低延迟和高可靠性V2X通信得以实现。然而,虽然通信性能提高,安全和隐私问题也有所增加;攻击事件已变得更加激烈,攻击者已变得更加具有战略性;标准化机构提议的公用钥匙基础设施不能仅针对这些攻击事件进行辩护,因此,作为补充,应当设计尖端系统来发现这种攻击和攻击者。机器学习(ML)最近成为确保我们未来道路安全的关键推动者。许多V2X Misbehavor探测系统(MDS)已经采用这一模式。然而,分析这些系统是一个研究差距,而开发有效的MLMS系统仍然是一个尚未解决的问题。为此,本文件对以ML为基础的MDS进行了全面调查和分类。我们从安全和ML的角度分析和讨论这些攻击事件。然后,我们从安全和ML的角度提供一些经验教训和建议,帮助开发、验证和部署MDS。最后,我们强调开放研究和标准化问题,并指明一些未来的方向。