车载目标CAN总线攻击检测

Florian Fenzl, R. Rieke, Andreas Dominik
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引用次数: 4

摘要

大多数车辆使用控制器局域网总线在其组件之间进行通信。已经渗透到车载网络的攻击者经常利用该总线来控制车辆的安全相关组件。这种有针对性的攻击场景通常很难被网络入侵检测系统检测到,因为特定的有效载荷通常不包含在他们的训练数据集中。在这项工作中,我们描述了一个入侵检测系统,该系统使用了通过遗传编程建模的决策树。与人工神经网络和基于规则的方法相比,我们评估了这种方法的优点和缺点。为此,我们建模和模拟了特定的目标攻击以及文献中描述的几种类型的入侵。结果表明,遗传规划方法非常适合于识别具有传感器值之间复杂关系的入侵,我们认为这对于特定目标攻击的分类很重要。然而,该系统对于其他类型的攻击的分类效率较低,这些攻击可以通过我们评估中的替代方法更好地识别。因此,进一步的研究可以考虑混合方法。
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In-vehicle detection of targeted CAN bus attacks
Most vehicles use the controller area network bus for communication between their components. Attackers who have already penetrated the in-vehicle network often utilize this bus in order to take control of safety-relevant components of the vehicle. Such targeted attack scenarios are often hard to detect by network intrusion detection systems because the specific payload is usually not contained within their training data sets. In this work, we describe an intrusion detection system that uses decision trees that have been modelled through genetic programming. We evaluate the advantages and disadvantages of this approach compared to artificial neural networks and rule-based approaches. For this, we model and simulate specific targeted attacks as well as several types of intrusions described in the literature. The results show that the genetic programming approach is well suited to identify intrusions with respect to complex relationships between sensor values which we consider important for the classification of specific targeted attacks. However, the system is less efficient for the classification of other types of attacks which are better identified by the alternative methods in our evaluation. Further research could thus consider hybrid approaches.
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