Modern vehicles, including autonomous vehicles and connected vehicles, have adopted an increasing variety of functionalities through connections and communications with other vehicles, smart devices, and infrastructures. However, the growing connectivity of the Internet of Vehicles (IoV) also increases the vulnerabilities to network attacks. To protect IoV systems against cyber threats, Intrusion Detection Systems (IDSs) that can identify malicious cyber-attacks have been developed using Machine Learning (ML) approaches. To accurately detect various types of attacks in IoV networks, we propose a novel ensemble IDS framework named Leader Class and Confidence Decision Ensemble (LCCDE). It is constructed by determining the best-performing ML model among three advanced ML algorithms (XGBoost, LightGBM, and CatBoost) for every class or type of attack. The class leader models with their prediction confidence values are then utilized to make accurate decisions regarding the detection of various types of cyber-attacks. Experiments on two public IoV security datasets (Car-Hacking and CICIDS2017 datasets) demonstrate the effectiveness of the proposed LCCDE for intrusion detection on both intra-vehicle and external networks.
翻译:现代车辆,包括自主车辆和相联车辆,通过与其他车辆、智能装置和基础设施的连接和通信,采用了越来越多的功能,然而,车辆互联网的日益连通性也增加了网络攻击的脆弱性。为了保护IOV系统免遭网络威胁,利用机器学习(ML)方法开发了能够识别恶意网络攻击的入侵探测系统(IDS)。为了准确检测IOV网络中各种类型的攻击,我们提议了一个名为 " 领导阶级和信任决定 " (LCCDE)的新颖的IDS联合框架。它通过确定三种先进的ML算法(XGBoost、LightGBM和CatBoost)中三种先进的ML算法(XGBost、LightGBM和CatBoost)的最佳ML模型来构建。然后利用带有预测信心值的班级领导模型来准确决定检测各种网络攻击。对两种公开的IOV安全数据集(Car-Hacking和CICIDES2017数据集)进行实验,以显示拟议的LCCDE对内和外部网络进行入侵的实效。