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k-Nearest Neighbours classification based Sybil attack detection in Vehicular networks

机译:基于k-cirction邻居在车辆网络中基于Sybil攻击检测

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In Vehicular networks, privacy, especially the vehicles' location privacy is highly concerned. Several pseudonymous based privacy protection mechanisms have been established and standardized in the past few years by IEEE and ETSI. However, vehicular networks are still vulnerable to Sybil attack. In this paper, a Sybil attack detection method based on k-Nearest Neighbours (kNN) classification algorithm is proposed. In this method, vehicles are classified based on the similarity in their driving patterns. Furthermore, the kNN methods' high runtime complexity issue is also optimized. The simulation results show that our detection method can reach a high detection rate while keeping error rate low.
机译:在车辆网络中,隐私,特别是车辆的位置隐私非常关注。在IEEE和ETSI的过去几年中,已经建立和标准化了几种基于匿名的隐私保护机制。然而,车辆网络仍然容易受到Sybil攻击的影响。本文提出了一种基于k最近邻居(KNN)分类算法的SYBIL攻击检测方法。在该方法中,基于其驾驶模式中的相似性来分类车辆。此外,还优化了KNN方法的高运行时复杂性问题。仿真结果表明,我们的检测方法可以达到高检测率,同时保持误差率低。

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