The use of autonomous vehicles (AVs) is a promising technology in Intelligent Transportation Systems (ITSs) to improve safety and driving efficiency. Vehicle-to-everything (V2X) technology enables communication among vehicles and other infrastructures. However, AVs and Internet of Vehicles (IoV) are vulnerable to different types of cyber-attacks such as denial of service, spoofing, and sniffing attacks. In this paper, an intelligent intrusion detection system (IDS) is proposed based on tree-structure machine learning models. The results from the implementation of the proposed intrusion detection system on standard data sets indicate that the system has the ability to identify various cyber-attacks in the AV networks. Furthermore, the proposed ensemble learning and feature selection approaches enable the proposed system to achieve high detection rate and low computational cost simultaneously.
翻译:机动车辆的使用是智能运输系统(ITS)中提高安全和驾驶效率的一个有希望的技术,车辆对一切的技术使车辆和其他基础设施之间能够进行通信,然而,机动车辆和车辆互联网很容易受到不同类型的网络攻击,如拒绝服务、打喷雾和嗅探攻击;本文件提议以树结构机器学习模型为基础,建立智能入侵探测系统(IDS);在标准数据集中实施拟议的入侵探测系统的结果表明,该系统有能力查明AV网络中的各种网络攻击;此外,拟议的共同学习和特征选择方法使拟议的系统能够同时达到高探测率和低计算成本。