Driving Safety Monitoring and Warning for Connected and Automated Vehicles via Edge Computing
Cheng Chang, Kunpeng Zhang, Jiawei Zhang, Shen Li, Li Li
Abstract
In this paper, we systematically study how to use edge computing to monitor the movements of multiple connected and automated vehicles (CAV) and warn of potential accidents (e.g., lane departures, collisions). Compared to conventional approaches that only use the sensing data of individual vehicles, cooperative vehicle infrastructure systems directly collect the movement data of vehicles via vehicle-to-everything (V2X) communications and thus easily calculate the risk of every vehicle synthetically. We propose a fast algorithm and the corresponding data structure model to calculate collision risks based on the timely received data. We also discuss the data accuracy and transmission delay requirements to guarantee the driving safety of CAVs. Testing results show the effectiveness of the proposed approach.