As a strategy to reduce travel delay and enhance energy efficiency, platooning of connected and autonomous vehicles (CAVs) at non-signalized intersections has become increasingly popular in academia. However, few studies have attempted to model the relation between the optimal platoon size and the traffic conditions around the intersection. To this end, this study proposes an adaptive platoon based autonomous intersection control model powered by deep reinforcement learning (DRL) technique. The model framework has following two levels: the first level adopts a First Come First Serve (FCFS) reservation based policy integrated with a nonconflicting lane selection mechanism to determine vehicles' passing priority; and the second level applies a deep Q-network algorithm to identify the optimal platoon size based on the real-time traffic condition of an intersection. When being tested on a traffic micro-simulator, our proposed model exhibits superior performances on travel efficiency and fuel conservation as compared to the state-of-the-art methods.
翻译:作为一项减少旅行延误和提高能效的战略,在非标志性十字路口排队使用连接和自主车辆(CAVs)在学术界越来越受欢迎,然而,很少有研究试图模拟最佳排规模与十字路口周围交通条件之间的关系,为此,本研究报告提议采用基于适应性排的自主交叉控制模式,通过深层强化学习(DRL)技术来推动。示范框架分为两个层次:第一层采用基于第一站(FCFS)的保留政策,该政策与非冲突性车道选择机制相结合,以确定车辆的过路优先;第二层采用深层次的Q网络算法,根据交叉路口的实时交通状况确定最佳排规模。在对交通微型模拟器进行测试时,我们提议的模式展示了与最新方法相比,在旅行效率和节油方面优异性业绩。