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Cosine similarity based anomaly detection methodology for the CAN bus

机译:基于余弦的相似性基于CAN总线的异常检测方法

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In recent years, vehicular technology has rapidly evolved in terms of the driver's convenience and safety, along with the convergence of vehicle communication and the expansion of external interfaces. However, the connectivity of the vehicle to the external environment poses a considerable driving risk because of the pre-existing vulnerabilities in the vehicle. Furthermore, most of the in-vehicle networks, such as controller area network (CAN), local interconnect network (LIN), and FlexRay network, are not ready to cope with malicious attacks from the outside. For that reason, various studies have addressed the security issues of the automobiles, as protecting the life and safety of the drivers and passengers is one of the core values of the in-vehicle technology. In the present study, in order to address these critical security issues, we propose an anomaly detection method based on cosine similarity for in-vehicle network through the analysis of self-similarity of the CAN bus. Our main goal is to detect three types of injection attacks without having additional information about the attacks. To this end, we evaluated the performance of the proposed method by measuring the accuracy and detection time using a dataset extracted from two real vehicles in driving and stationary conditions. More specifically, we designed a lightweight feature vector that can accomplish real-time detection and then analyzed the performance in terms of accuracy, recall, and detection time by the time window. In the performance evaluation, we achieved high detection accuracy-namely, 98.93% and 99.18% for KIA Soul in the driving condition and in the stationary condition, respectively, 99.43% and 99.49% for the HYUNDAI YF Sonata in the driving condition and in the stationary condition, respectively. Finally, we also showed that the cosine similarity in the CAN bus is a meaningful feature to identify and classify the types of attacks on target CAN IDs.
机译:近年来,车辆技术在驾驶员方便和安全方面迅速发展,以及车辆通信的融合和外部接口的扩展。然而,由于车辆中的预先存在漏洞,车辆到外部环境的连接姿势具有相当大的驾驶风险。此外,大多数车载网络,例如控制器区域网络(CAN),本地互连网络(LIN)和FlexRay网络,尚未准备好从外部应对恶意攻击。因此,各种研究已经解决了汽车的安全问题,因为保护司机和乘客的生活和安全是车载技术的核心价值之一。在本研究中,为了解决这些关键安全问题,我们通过分析CAN总线的自相似性来提出基于车载网络的余弦相似性的异常检测方法。我们的主要目标是检测三种类型的注射攻击,而无需有关攻击的其他信息。为此,我们通过测量从两个真实车辆中的驱动和静止条件中提取的数据集来评估所提出的方法的性能。更具体地,我们设计了一种可以实现实时检测的轻质特征向量,然后在时间窗口中以准确度,召回和检测时间分析性能。在绩效评估中,我们在驾驶条件下和静止条件下,在驾驶条件下,在驾驶条件下,达到98.93%和99.18%的高度检测精度,98.93%和99.18%,驾驶条件中的现代YF索纳塔99.43%和99.49%固定条件分别。最后,我们还表明CAN总线中的余弦相似性是一个有意义的功能,可以识别和分类目标的攻击类型可以ID。

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