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Space-time routing in dedicated automated vehicle zones

机译:专用自动化车区中的时空路由

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With the fast development of automated vehicle (AV) technologies, scholars have proposed various innovative local traffic control schemes for more effective management of AV traffic, especially at intersections. However, due to computational intractability, the investigation of network-level AV control is still at the initial stage. This study proposes a space-time routing framework applicable in dedicated AV zones. To relieve the computational load, we establish a node-based conflict point network to model realistic road networks, and at each conflict point, we record the space-time occupations of AVs in continuous timelines. Then, based on the conflict point network, we develop two space-time muting algorithms for each AV once it enters the dedicated AV zone to minimize its trip travel time while maintaining the non-collision insurances; these two algorithms can trade-off between solution quality and computational load. Furthermore, to enhance the network throughput for handling heavy traffic, we develop a "platoon strategy" that forces AVs to pass through conflict points in platoons, and we adopt Deep Q-learning (DQN) to optimize the platoon sizes at different spots dynamically. Numerical tests show that both proposed algorithms perform well in that they can execute the routing tasks with very limited computational time, and the average vehicle delay approaches zero when the traffic is relatively mild. Meanwhile, compared with the FCFS policy and the optimization-based approach, the platoon strategy can greatly reduce the average vehicle delay under congested scenarios and give a better balance between the optimality and real-time performance.
机译:随着自动化车辆(AV)技术的快速发展,学者提出了各种创新的本地交通管制方案,以便更有效地管理AV流量,尤其是交叉路口。然而,由于计算难以解力,网络级AV控制的调查仍处于初始阶段。本研究提出了一种适用于专用AV区域的时空路由框架。为了减轻计算负荷,我们建立基于节点的冲突点网络以模型现实的道路网络,并且在每个冲突点,我们在连续时间表中记录了AV的时空占用。然后,基于冲突点网络,我们一旦进入专用AV区域,我们就会为每个AV开发两个时空静音算法,以尽量减少其跳闸行程时间,同时保持非碰撞保险;这两个算法可以在解决方案质量和计算负载之间进行折衷。此外,为了提高网络吞吐量来处理繁忙的交通,我们开发了一个“排策略”,强制推动压胶中的冲突点,我们采用深度Q学习(DQN),以动态地优化不同斑点的排尺寸。数值测试表明,两个提议的算法表现良好,因为它们可以执行具有非常有限的计算时间的路由任务,并且当流量相对温和时,平均车辆延迟接近零。同时,与FCFS政策和基于优化的方法相比,排策略可以大大降低拥挤情景下的平均车辆延迟,在最优性和实时性能之间提供更好的平衡。

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