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Detecting misbehaviors in VANET with integrated root-cause analysis

机译:利用集成的根本原因分析检测VANET中的不良行为

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Misbehavior detection schemes (MDSs) form an integral part of misbehaving node eviction in vehicular ad hoc networks (VANETs). A misbehaving node can send messages corresponding to an event that either has not occurred (possibly out of malicious intent), or incorrect information corresponding to an actual event (for example, faulty sensor reading), or both, causing applications to malfunction.rnWhile identifying the presence of misbehavior, it is also imperative to extract the root-cause of the observed misbehavior in order to properly assess the misbehavior's impact, which in turn determines the action to be taken. This paper uses the Post Crash Notification (PCN) application to illustrate the basic considerations and the key factors affecting the reliability performance of such schemes. The basic cause-tree approach is illustrated and used effectively to jointly achieve misbehavior detection as well as identification of its root-cause.rnThe considerations regarding parameter tuning and impact of mobility on the performance of the MDS are studied. The performance of the proposed MDS is found to be not very sensitive to slight errors in parameter estimation.
机译:不良行为检测方案(MDS)构成了车辆自组织网络(VANET)中行为异常的节点驱逐的组成部分。行为异常的节点可能发送与尚未发生的事件相对应的消息(可能出于恶意目的),或与实际事件相对应的不正确信息(例如错误的传感器读取),或者两者都发送,从而导致应用程序出现故障。在存在不当行为的情况下,还必须提取观察到的不当行为的根本原因,以便正确评估不当行为的影响,进而确定要采取的措施。本文使用“崩溃后通知”(PCN)应用程序来说明基本注意事项以及影响此类方案可靠性性能的关键因素。说明了基本的原因树方法,并有效地将其用于共同实现不良行为检测以及其根本原因的识别。研究了有关参数调整和移动性对MDS性能的影响的注意事项。发现所提出的MDS的性能对参数估计中的轻微错误不是很敏感。

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