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Decision Tree-based Detection of Denial of Service and Command Injection attacks on Robotic Vehicles

机译:基于决策树的拒绝服务和命令注射攻击机器人车辆的检测

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Mobile cyber-physical systems, such as automobiles, drones and robotic vehicles, are gradually becoming attractive targets for cyber attacks. This is a challenge because intrusion detection systems built for conventional computer systems tend to be unsuitable. They can be too demanding for resource-restricted cyber-physical systems or too inaccurate due to the lack of real-world data on actual attack behaviours. Here, we focus on the security of a small remote-controlled robotic vehicle. Having observed that certain types of cyber attacks against it exhibit physical impact, we have developed an intrusion detection system that takes into account not only cyber input features, such as network traffic and disk data, but also physical input features, such as speed, physical jittering and power consumption. As the system is resource-restricted, we have opted for a decision tree-based approach for generating simple detection rules, which we evaluate against denial of service and command injection attacks. We observe that the addition of physical input features can markedly reduce the false positive rate and increase the overall accuracy of the detection.
机译:移动网络 - 物理系统,如汽车,无人机和机器人车辆,逐渐成为网络攻击的吸引力。这是一项挑战,因为为传统计算机系统而构建的入侵检测系统往往是不合适的。由于缺乏实际攻击行为的现实数据,它们对资源限制的网络物理系统来说太需要了,或者太不准确。在这里,我们专注于小型遥控机器人车辆的安全性。观察到某些类型的网络攻击对其表现出身体影响,我们开发了一种入侵检测系统,不仅考虑网络流量和磁盘数据,还考虑了网络流量和磁盘数据,还考虑了物理输入功能,例如速度,物理抖动和功耗。由于系统是资源限制的,我们选择了一种基于决策树的方法,用于生成简单的检测规则,我们评估拒绝服务和命令注入攻击。我们观察到,添加物理输入特征可以显着降低假阳性率并提高检测的总体精度。

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