A Novel Machine Learning-Based Trust Management Against Multiple Misbehaviors for Connected and Automated Vehicles
Qian Xu, Lei Zhang, X. P. Qin, Yixuan Zhou
Abstract
Connected and Automated Vehicles (CAVs) are exposed to various threats in the dynamic, open and multi-domain network. Applying machine learning-based trust management for CAVs becomes imperative to capture complex features and adapt to dynamic situations. To deal with multiple misbehaviors and real traffic scenarios challenges, a trust management method for CAVs is proposed with data fusion, trust factor computation and two-tier trust prediction. First of all, three types of features on CAVs are analyzed, including spatio-temporal logic features, behavioral features and traffic flow features. Then, data fusion methods that combine beacon messages with map and detector data are proposed to enhance trust-related data. A multi-dimensional trust factor computation approach is then introduced using statistical methods. Finally, per-minute and multi-minute machine learning-based trust prediction methods are performed at the node level using the computed trust labels from each beacon. The results showed the effectiveness and real-time capability of the data fusion process, as well as the completeness of the trust factor computation. The trust prediction results showed both high performance at the per-minute level with models like XGBoost and further improved performance at the multi-minute level with deep learning models.