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Joint optimization of vehicle trajectories and intersection controllers with connected automated vehicles: Combined dynamic programming and shooting heuristic approach

机译:与连接的自动车辆共同优化车辆轨迹和交叉路口控制器:结合动态规划和射击启发式方法

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Connected and automated vehicle (CAV) technologies offer promising solutions to challenges that face today's transportation systems. Vehicular trajectory control and intersection controller optimization based on CAV technologies are two approaches that have significant potential to mitigate congestion, lessen the risk of crashes, reduce fuel consumption, and decrease emissions at intersections. These two approaches should be integrated into a single process such that both aspects can be optimized simultaneously to achieve maximum benefits. This paper proposes an efficient DP-SH (dynamic programming with shooting heuristic as a subroutine) algorithm for the integrated optimization problem that can simultaneously optimize the trajectories of CAVs and intersection controllers (i.e., signal timing and phasing of traffic signals), and develops a two-step approach (DP-SH and trajectory optimization) to effectively obtain near-optimal intersection and trajectory control plans. Also, the proposed DP-SH algorithm can also consider mixed traffic stream scenarios with different levels of CAV market penetration. Numerical experiments are conducted, and the results prove the efficiency and sound performance of the proposed optimization framework. The proposed DP-SH algorithm, compared to the adaptive signal control, can reduce the average travel time by up to 35.72% and save the consumption by up to 31.5%. In mixed traffic scenarios, system performance improves with increasing market penetration rates. Even with low levels of penetration, there are significant benefits in fuel consumption savings. The computational efficiency, as evidenced in the case studies, indicates the applicability of DP-SH for real-time implementation.
机译:联网和自动车辆(CAV)技术为解决当今运输系统面临的挑战提供了有希望的解决方案。基于CAV技术的车辆轨迹控制和交叉路口控制器优化是两种在缓解拥堵,降低撞车风险,减少燃油消耗和减少交叉路口排放方面具有巨大潜力的方法。这两种方法应该集成到单个过程中,以便可以同时优化两个方面以实现最大的收益。针对综合优化问题,本文提出了一种高效的DP-SH(以射击启发式为子程序的动态规划)算法,该算法可以同时优化CAV和交叉路口控制器的轨迹(即交通信号的定时和定相),并开发出一种两步法(DP-SH和轨迹优化)有效地获得了接近最优的相交和轨迹控制计划。同样,提出的DP-SH算法还可以考虑具有不同CAV市场渗透水平的混合交通流场景。进行了数值实验,结果证明了所提优化框架的有效性和良好的性能。与自适应信号控制相比,所提出的DP-SH算法可将平均行驶时间减少多达35.72%,并节省多达31.5%的功耗。在混合流量情况下,系统性能会随着市场渗透率的提高而提高。即使渗透率很低,节省燃油也有显着的好处。如案例研究所示,计算效率表明了DP-SH在实时实施中的适用性。

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