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A Study on Attack Pattern Generation and Hybrid MR-IDS for In-Vehicle Network

机译:车载网络攻击模式生成和混合MR-ID研究

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The CAN (Controller Area Network) bus, which transmits and receives ECU control information in vehicle, has a critical risk of external intrusion because there is no standardized security system. Recently, the need for IDS (Intrusion Detection System) to detect external intrusion of CAN bus is increasing, and high accuracy and real-time processing for intrusion detection are required. In this paper, we propose Hybrid MR (Machine learning and Ruleset) -IDS based on machine learning and ruleset to improve IDS performance. For high accuracy and detection rate, feature engineering was conducted based on the characteristics of the CAN bus, and the generated features were used in detection step. The proposed Hybrid MR-IDS can cope to various attack patterns that have not been learned in previous, as well as the learned attack patterns by using both advantages of rule set and machine learning. In addition, by collecting CAN data from an actual vehicle in driving and stop state, five attack scenarios including physical effects during all driving cycle are generated. Finally, the Hybrid MR-IDS proposed in this paper shows an average of 99% performance based on F1-score.
机译:可以(控制器区域网络)总线,其在车辆中传输和接收ECU控制信息,具有外部入侵的临界风险,因为没有标准化的安全系统。最近,对IDS(入侵检测系统)检测CAN总线的外部入侵的需求增加,并且需要高精度和用于入侵检测的实时处理。在本文中,我们提出了基于机器学习和规则集的混合MR(机器学习和规则集)IID,以提高IDS性能。对于高精度和检测速率,基于CAN总线的特性进行特征工程,并且在检测步骤中使用产生的功能。所提出的混合MR-ID可以应对以前尚未学习的各种攻击模式,以及通过使用规则集和机器学习的两种优点,以及学习攻击模式。另外,通过收集来自驱动和停止状态的实际车辆的数据,产生包括在所有驾驶循环中的物理效果的五个攻击场景。最后,本文提出的杂交MR-ID显示了基于F1分数的平均99%的性能。

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