High-end vehicles have been furnished with a number of electronic control units (ECUs), which provide upgrading functions to enhance the driving experience. The controller area network (CAN) is a well-known protocol that connects these ECUs because of its modesty and efficiency. However, the CAN bus is vulnerable to various types of attacks. Although the intrusion detection system (IDS) is proposed to address the security problem of the CAN bus, most previous studies only provide alerts when attacks occur without knowing the specific type of attack. Moreover, an IDS is designed for a specific car model due to diverse car manufacturers. In this study, we proposed a novel deep learning model called supervised contrastive (SupCon) ResNet, which can handle multiple attack identification on the CAN bus. Furthermore, the model can be used to improve the performance of a limited-size dataset using a transfer learning technique. The capability of the proposed model is evaluated on two real car datasets. When tested with the car hacking dataset, the experiment results show that the SupCon ResNet model improves the overall false-negative rates of four types of attack by four times on average, compared to other models. In addition, the model achieves the highest F1 score at 0.9994 on the survival dataset by utilizing transfer learning. Finally, the model can adapt to hardware constraints in terms of memory size and running time.
翻译:高端车辆配备了若干电子控制器(ECUs),提供升级功能,以提高驾驶经验。控制区网络(CAN)是一个众所周知的协议程序,将这些ECU连接起来,因为其规模小、效率低。然而,CAN公共汽车很容易受到各种袭击。虽然建议入侵探测系统(IDS)处理CAN公共汽车的安全问题,但大多数先前的研究只提供袭击发生时的警报,而不知道袭击的具体类型。此外,一个IDS是为不同的汽车制造商设计的特定汽车模型设计的。在这个研究中,我们提出了一个名为监督对比(SupCon) ResNet的新型深层次学习模型,它可以处理CAN公共汽车上的多重袭击识别。此外,该模型可以用来利用传输学习技术改进有限数据集的性能。拟议模型的能力是在两个真正的汽车数据集上进行评估。在进行汽车黑客数据集测试时,实验结果显示SupCon ResNet模型改进了四类袭击的总体假反向率。我们提出了一个新的深层次的深层次学习模式(Supennegy)ResNet,可以使用最高级的F级标准,在最后的硬质测试中达到最高级的硬质标准。