C-ITS中Sybil攻击检测的不当行为授权系统

Joseph Kamel, Farah Haidar, I. B. Jemaa, Arnaud Kaiser, B. Lonc, P. Urien
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引用次数: 23

摘要

全局错误行为检测是协同智能交通系统(C-ITS)的重要后端机制。它基于由车载单元(OBUs)和路侧单元(rsu)发送给不当行为管理机构(MA)的称为不当行为报告(mbr)的本地不当行为检测信息。通过分析这些报告,MA提供了更准确和稳健的不当行为检测结果。西比尔攻击对C-ITS系统构成重大威胁。它们的检测和识别可能是不准确和令人困惑的。在这项工作中,我们提出了一种基于机器学习(ML)的MA内部检测过程解决方案。我们通过广泛的模拟表明,我们的解决方案能够精确识别Sybil攻击的类型,并提供有希望的检测精度结果。
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A Misbehavior Authority System for Sybil Attack Detection in C-ITS
Global misbehavior detection is an important backend mechanism in Cooperative Intelligent Transport Systems (C-ITS). It is based on the local misbehavior detection information sent by Vehicle's On-Board Units (OBUs) and by Road-Side Units (RSUs) called Misbehavior Reports (MBRs) to the Misbehavior Authority (MA). By analyzing these reports, the MA provides more accurate and robust misbehavior detection results. Sybil attacks pose a significant threat to the C-ITS systems. Their detection and identification may be inaccurate and confusing. In this work, we propose a Machine Learning (ML) based solution for the internal detection process of the MA. We show through extensive simulation that our solution is able to precisely identify the type of the Sybil attack and provide promising detection accuracy results.
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