Sustainable Intrusion Detection in Vehicular Controller Area Networks using Machine Intelligence Paradigm

Ahmed Metwaly, Ibrahim Elhenawy
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Abstract

The advent of smart mobility and the proliferation of connected vehicles have introduced new challenges in securing Vehicular Controller Area Networks (CANs) against cyber threats. This paper proposes an innovative machine intelligence paradigm for sustainable intrusion detection within vehicular networks. We present a Deep Neural Network (DNN) model that effectively classifies CAN traffic into categories, including Normal, Denial of Service (DoS), Gear Attack (Spoofing), RPM Attack (Spoofing), and Fuzzy Attack. The DNN's architecture is designed to learn and adapt to the dynamic nature of vehicular communications, enhancing its ability to detect network intrusions. The study encompasses an inclusive exploration of the CAN bus architecture, message data format, and related security vulnerabilities to provide a solid foundation for intrusion detection. Our methodology employs mathematical representations of the DNN model, offering insight into its training process. Visualizations of results, such as confusion matrices, ROC-AUC curves, T-SNE plots, and SHAP explanations, provide a holistic view of the model's performance and offer valuable insights for system refinement. By bridging the gap between machine intelligence and vehicular security, this research contributes to the ongoing efforts to fortify critical infrastructure, ensuring the reliability and sustainability of vehicular networks in the era of connected and autonomous vehicles.
基于机器智能范式的车辆控制器区域网络可持续入侵检测
智能移动的出现和联网车辆的普及为保护车辆控制器区域网络(can)免受网络威胁带来了新的挑战。本文提出了一种创新的机器智能模式,用于车辆网络的可持续入侵检测。我们提出了一个深度神经网络(DNN)模型,该模型有效地将CAN流量分类为正常,拒绝服务(DoS),齿轮攻击(欺骗),RPM攻击(欺骗)和模糊攻击。DNN的架构旨在学习和适应车辆通信的动态特性,增强其检测网络入侵的能力。本研究涵盖了CAN总线架构、消息数据格式和相关安全漏洞的全面探索,为入侵检测提供了坚实的基础。我们的方法采用DNN模型的数学表示,提供对其训练过程的洞察。结果的可视化,如混淆矩阵、ROC-AUC曲线、T-SNE图和SHAP解释,提供了模型性能的整体视图,并为系统改进提供了有价值的见解。通过弥合机器智能和车辆安全之间的差距,这项研究有助于加强关键基础设施的持续努力,确保联网和自动驾驶汽车时代车辆网络的可靠性和可持续性。
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