A Cross-layer Method for Identifying and Isolating the Blackhole Nodes in Vehicular Ad-hoc Networks

Naib Rabiaa, A. C. Moussa, B. H. Sofiane
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引用次数: 2

Abstract

ABSTRACT Vehicular Ad-hoc Network (VANET) is a set of intelligent vehicles that communicate without a fixed infrastructure. The communication between each source/destination pair is done by using routing protocols. On-demand multipath distance vector (AOMDV) is one of the most known ad-hoc multipath routing protocols used in VANETs. The decentralized nature of VANET makes this type of network vulnerable to various attacks, such as blackhole attack. In such attack, the malicious vehicle aims to make the communication unavailable. To achieve this goal, the malicious vehicle persuades the source to send its data packets through it because it has the fresher route toward the destination. This is done by forging routing information. After receiving the data packets, the malicious vehicle deletes them instead of forwarding them to their intended destinations. This paper introduces a new Cross-Layer method (CRAOMDV) where information is shared between MAC and network layers to detect and ignore the malicious vehicles in VANETs. Our experiments used the simulator NS2 and SUMO for the generation and simulation of real mobility scenarios. The evaluation results demonstrate the efficiency of CRAOMDV compared to AOMDV under blackhole attack in terms of improving the packet delivery and reducing the average end-to-delay and the routing overhead.
车辆自组织网络中黑洞节点识别与隔离的跨层方法
车辆自组织网络(VANET)是一组在没有固定基础设施的情况下进行通信的智能车辆。每个源/目标对之间的通信是通过使用路由协议完成的。按需多路径距离矢量(AOMDV)是vanet中使用的最著名的自组织多路径路由协议之一。VANET的分散性使得这种类型的网络容易受到各种攻击,例如黑洞攻击。在这种攻击中,恶意车辆的目的是使通信不可用。为了实现这一目标,恶意车辆说服源通过它发送数据包,因为它有通往目的地的最新路由。这是通过伪造路由信息来实现的。在收到数据包后,恶意车辆会将其删除,而不是将其转发到预定的目的地。本文介绍了一种新的跨层方法(CRAOMDV),该方法在MAC层和网络层之间共享信息,以检测和忽略vanet中的恶意车辆。我们的实验使用模拟器NS2和SUMO来生成和模拟真实的移动场景。评价结果表明,在黑洞攻击下,CRAOMDV比AOMDV在提高分组传输速度、减少平均端到端延迟和路由开销等方面具有更高的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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