基于机动性数据合理性的VANETs中心不当行为评估

N. Bißmeyer, Joël Njeukam, J. Petit, K. Bayarou
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引用次数: 69

摘要

车辆自组织网络中可靠的通信是提供功能可靠的交通安全和效率应用的必要条件。Sybil攻击者通过发送带有伪造位置声明的信息来模拟道路上的“幽灵车辆”,必须被检测到并永久排除在网络之外。基于运行在车辆和路边单元上的不当行为检测系统,提出了一种中央评估方案,旨在识别和排除网络中的攻击者。中心方案的算法使用错误行为报告中提供的信任和声誉信息,以保证网络的长期功能。一个主要方面是可伸缩性,因为只有在VANET中检测到事件时才会创建错误行为报告。因此,所提出的中心系统的负载与网络节点总数无关。通过仿真研究,在假设大多数恶意行为报告者存在的情况下,对攻击节点进行有效可靠的检测。大量的模拟表明,少数良性节点(至少三个证人)足以显著降低虚假节点的声誉,从而识别不当行为的原因。在串通攻击者的情况下,模拟表明,如果37%的邻居节点合作,那么攻击可能会被混淆。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Central misbehavior evaluation for VANETs based on mobility data plausibility
Trustworthy communication in vehicular ad-hoc networks is essential to provide functional and reliable traffic safety and efficiency applications. A Sybil attacker that is simulating "ghost vehicles" on the road, by sending messages with faked position statements, must be detected and excluded permanently from the network. Based on misbehavior detection systems, running on vehicles and roadside units, a central evaluation scheme is proposed that aims to identify and exclude attackers from the network. The proposed algorithms of the central scheme are using trust and reputation information provided in misbehavior reports in order to guarantee long-term functionality of the network. A main aspect, the scalability, is given as misbehavior reports are created only if an incident is detected in the VANET. Therefore, the load of the proposed central system is not related to the total number of network nodes. A simulation study is conducted to show the effective and reliable detection of attacker nodes, assuming a majority of benign misbehavior reporters. Extensive simulations show that a few benign nodes (at least three witnesses) are enough to significantly decrease the fake node reputation and thus identify the cause of misbehavior. In case of colluding attackers, simulations show that if 37% of neighbor nodes cooperate, then an attack could be obfuscated.
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