社交车联网中事件驱动的不良行为检测机制研究

Chenchen Lv, Yue Cao, Lexi Xu, Shitao Zou, Yongdong Zhu, Zhili Sun
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引用次数: 0

摘要

由于车辆自组织网络(VANETs)管理不足,恶意节点可能会参与通信并产生不当行为,例如丢弃数据包和传播虚假信息。因此,必须检测内部攻击者的不当行为,这些行为将导致网络性能下降(例如,花费更长的时间接收消息或绕路到达目的地)。除了捕获VANETs的动态网络拓扑外,节点之间的社会关系也可以作为一个相对稳定的度量来限定节点。本文提出了一种基于社会关系的错误行为检测机制,节点根据社会关系确定接收方或发送方的信任程度。基于该机制,道路交通控制应用可以避免来自恶意节点的干扰。社会关系的构建依赖于节点运动所反映的地理信息,包括接触频率和轨迹相似度,地理信息可以准确地表示节点之间的相关性。除了社会关系之外,该机制还从时间和空间两方面对数据信任进行评估,以减少虚假数据的干扰。最后,提出的机制集成了数据信任和社会关系,以实现不当行为检测决策。大量的仿真结果表明,该机制在各种恶意节点比例和运动模式下都具有出色的恶意节点检测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Event-driven Misbehavior Detection Mechanism in Social Internet of Vehicles
Due to inadequate management of Vehicular Ad hoc Networks (VANETs), malicious nodes could participate in communications along with misbehavior, e.g., dropping packets and spreading fake information. Therefore, it is essential to detect misbehavior of internal attackers that will cause network performance degradation (e.g., taking longer time to receive messages or reaching destinations with detours). Apart from the capture of dynamic network topology of VANETs, the social relationship among nodes can also be applied as a relatively stable metric to qualify nodes. This paper proposes a misbehavior detection mechanism based on social relationships, from which nodes determine trust for the receiver or transmitter. Based on the proposed mechanism, road traffic control applications can avoid the interference from malicious nodes. The construction of social relationships depends on the geographic information reflected by the movement of nodes, including contact frequency and trajectory similarity, since the geographic information can accurately indicate the relevance among nodes. In addition to the social relationship, the proposed mechanism also evaluates the data trust from time and spatial factors to reduce the interference of fake data. Finally, the proposed mechanism integrates data trust and social relationships to enable misbehavior detection decisions. Extensive results of simulations show that the proposed mechanism has outstanding malicious nodes detection rates under various proportions of malicious nodes and movement patterns.
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