Deep Reinforcement Learning in Lane Merge Coordination for Connected Vehicles
This addresses traffic efficiency and safety for connected vehicles, but appears incremental as it applies existing DRL methods to a specific domain.
The paper tackles lane merge coordination for connected vehicles using a centralized system with deep reinforcement learning to predict trajectory recommendations, achieving adaptability in an unseen real-world merging scenario with performance comparisons against KPIs.
In this paper, a framework for lane merge coordination is presented utilising a centralised system, for connected vehicles. The delivery of trajectory recommendations to the connected vehicles on the road is based on a Traffic Orchestrator and a Data Fusion as the main components. Deep Reinforcement Learning and data analysis is used to predict trajectory recommendations for connected vehicles, taking into account unconnected vehicles for those suggestions. The results highlight the adaptability of the Traffic Orchestrator, when employing Dueling Deep Q-Network in an unseen real world merging scenario. A performance comparison of different reinforcement learning models and evaluation against Key Performance Indicator (KPI) are also presented.