自动驾驶车辆网络中的灰洞检测与冲袭

Khattab M. Ali Alheeti, A. Gruebler, K. Mcdonald-Maier
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引用次数: 42

摘要

车辆自组织网络在自动驾驶和半自动驾驶等新型车辆的成功中发挥着重要作用。这些网络为乘客、司机和车辆本身提供了安全和舒适。这些车辆在很大程度上依赖于外部通信,通过交换合作感知信息(CAMs)和控制数据来预测周围环境。vanet面临多种类型的攻击,如黑洞、灰洞和快速攻击。本文提出了一种基于异常检测的智能入侵检测系统(IDS),以保护外部通信免受灰洞攻击和匆忙攻击。许多研究人员都认为,灰洞攻击在VANETs中是一个巨大的挑战,因为它们有不同的行为类型:正常和异常。这些攻击试图阻止车辆和路边装置之间的传播,并对这种新型车辆的广泛接受产生直接和负面的影响。建议的IDS基于从网络模拟器中生成的跟踪文件中提取的特征。在本文中,我们使用前馈神经网络和支持向量机来设计智能入侵检测系统。该系统只使用从跟踪文件中提取的重要特征。我们的研究得出结论,特征数量的减少会导致更高的检测率和误报的减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the detection of grey hole and rushing attacks in self-driving vehicular networks
Vehicular ad hoc networks play an important role in the success of a new class of vehicles, i.e. self-driving and semi self-driving vehicles. These networks provide safety and comfort to passengers, drivers and vehicles themselves. These vehicles depend heavily on external communication to predicate the surrounding environment through the exchange of cooperative awareness messages (CAMs) and control data. VANETs are exposed to many types of attacks such as black hole, grey hole and rushing attacks. In this paper, we present an intelligent Intrusion Detection System (IDS) which relies on anomaly detection to protect external communications from grey hole and rushing attacks. Many researchers agree that grey hole attacks in VANETs are a substantial challenge due to them having their distinct types of behaviour: normal and abnormal. These attacks try to prevent transmission between vehicles and roadside units and have a direct and negative impact on the wide acceptance of this new class of vehicles. The proposed IDS is based on features that have been extracted from a trace file generated in a network simulator. In our paper, we used a feed-forward neural network and a support vector machine for the design of the intelligent IDS. The proposed system uses only significant features extracted from the trace file. Our research, concludes that a reduction in the number of features leads to a higher detection rate and a decrease in false alarms.
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