Övgü Özdemir, M. Tuğberk İşyapar, Pınar Karagöz, Klaus Werner Schmidt, Demet Demir, N. Alpay Karagöz
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引用次数: 0
Abstract
Modern vehicles are equipped with Electronic Control Units (ECU) that are
used for controlling important vehicle functions including safety-critical
operations. ECUs exchange information via in-vehicle communication buses, of
which the Controller Area Network (CAN bus) is by far the most widespread
representative. Problems that may occur in the vehicle's physical parts or
malicious attacks may cause anomalies in the CAN traffic, impairing the correct
vehicle operation. Therefore, the detection of such anomalies is vital for
vehicle safety. This paper reviews the research on anomaly detection for
in-vehicle networks, more specifically for the CAN bus. Our main focus is the
evaluation of methods used for CAN bus anomaly detection together with the
datasets used in such analysis. To provide the reader with a more comprehensive
understanding of the subject, we first give a brief review of related studies
on time series-based anomaly detection. Then, we conduct an extensive survey of
recent deep learning-based techniques as well as conventional techniques for
CAN bus anomaly detection. Our comprehensive analysis delves into anomaly
detection algorithms employed in in-vehicle networks, specifically focusing on
their learning paradigms, inherent strengths, and weaknesses, as well as their
efficacy when applied to CAN bus datasets. Lastly, we highlight challenges and
open research problems in CAN bus anomaly detection.
现代汽车配备有电子控制单元(ECU),用于控制重要的汽车功能,包括安全关键操作。ECU 通过车载通信总线交换信息,其中控制器区域网络(CAN 总线)是迄今为止最广泛的代表。车辆物理部件可能出现的问题或恶意攻击可能会导致 CAN 流量异常,从而影响车辆的正确运行。因此,检测此类异常对车辆安全至关重要。本文回顾了车载网络异常检测方面的研究,特别是 CAN 总线异常检测方面的研究。我们的主要重点是评估 CAN 总线异常检测方法以及用于此类分析的数据集。为了让读者更全面地了解这一主题,我们首先简要回顾了基于时间序列的异常检测方面的相关研究。然后,我们对近期基于深度学习的技术以及用于 CAN 总线异常检测的传统技术进行了广泛调查。我们的综合分析深入探讨了车载网络中采用的异常检测算法,特别关注了这些算法的学习范式、内在优缺点以及应用于 CAN 总线数据集时的有效性。最后,我们强调了 CAN 总线异常检测面临的挑战和有待解决的研究问题。