对车载网络中行为不端的入侵者的检测和预防

Hichem Sedjelmaci, Tarek Bouali, S. Senouci
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引用次数: 29

摘要

本文设计并实现了一种新的车载网络入侵检测与防御方案。它具有检测和预测攻击者未来恶意行为的高精度能力。这与目前的检测诈骗不同,后者没有预防技术,因为它们的目标是检测网络中发生的当前攻击者。我们使用博弈论概念来预测被监控车辆的未来行为,并根据其预测的攻击严重程度将其分类为适当的列表(白色,白灰,灰色和recvocation_black)。在本文中,我们的目标是防止针对车辆网络的最危险的攻击,即假警报的生成攻击。仿真结果表明,该入侵检测与防御方案具有较高的检测率和较低的误报率。此外,它需要较低的开销来实现高级别的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and prevention from misbehaving intruders in vehicular networks
In this paper, we design and implement a new intrusion detection and prevention schema for vehicular networks. It has the ability to detect and predict with a high accuracy a future malicious behavior of an attacker. This is unlike the current detection schémas, where there is no prevention technique since they aim to detect only current attackers that occur in the network. We used game theory concept to predict the future behavior of the monitored vehicle and categorize it into the appropriate list (White, White & Gray, Gray, and Revocation_Black) according to its predicted attack severity. In this paper, our aim is to prevent from the most dangerous attack that targets a vehicular network, which is false alert's generation attack. Simulation results show that our intrusion detection and prevention schema exhibits a high detection rate and generates a low false positive rate. In addition, it requires a low overhead to achieve a high-level security.
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