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Trajectory planning for connected and automated vehicles at isolated signalized intersections under mixed traffic environment

机译:混合交通环境下隔离信号交叉口的连接和自动化车辆的轨迹规划

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Trajectory planning for connected and automated vehicles (CAVs) has the potential to improve operational efficiency and vehicle fuel economy in traffic systems. Despite abundant studies in this research area, most of them only consider trajectory planning in the longitudinal dimension or assume the fully CAV environment. This study proposes an approach to the decentralized planning of CAV trajectories at an isolated signalized intersection under the mixed traffic environment, which consists of connected and human-driven vehicles (CHVs) and CAVs. A bi-level optimization model is formulated based on discrete time to optimize both the longitudinal and lateral trajectories of a single CAV given signal timings and the trajectory information of surrounding vehicles. The upper-level model optimizes lateral lane-changing strategies. The lowerlevel model optimizes longitudinal acceleration profiles based on the lane-changing strategies from the upper-level model. Minimization of vehicle delay, fuel consumption, and lane-changing costs are considered in the objective functions. A Lane-Changing Strategy Tree (LCST) and a Parallel Monte-Carlo Tree Search (PMCTS) algorithm are designed to solve the bi-level optimization model. CAV trajectories are planned one by one according to their distance to the stop bar. A rolling horizon scheme is applied for the dynamic implementation of the proposed model with time-varying traffic conditions. Numerical studies validate the advantages of the proposed trajectory planning model compared with the benchmark cases without CAV trajectory planning. The average fuel consumption and lane-changing numbers of CAVs can be reduced noticeably, especially with high traffic demand. The delay of CAVs is reduced by similar to 2 s on average, which is limited due to the fixed signal timing plans. The trajectory planning of CAVs also reduces the delay and the fuel consumption of CHVs and the mixed traffic, especially with high penetration rates of CAVs. The sensitivity analysis shows that the control zone length of 200 m is sufficient to ensure the satisfactory performance of the proposed model.
机译:连接和自动化车辆(CAVS)的轨迹规划有可能提高交通系统的运营效率和车辆燃料经济性。尽管该研究领域的研究有丰富,但它们中的大多数只考虑在纵向尺寸或假设完全腔室环境中的轨迹规划。本研究提出了一种方法,该方法在混合交通环境下隔离信号交叉口的腔轨迹的分散规划,包括连接和人力驱动的车辆(CHV)和CAVE。基于离散时间配制了双级优化模型,以优化单个CAV给定信号时序的纵向和横向轨迹和周围车辆的轨迹信息。上层模型优化了横向车道变化的策略。 LowerLevel模型基于来自上级模型的车道变化策略优化纵向加速度曲线。在客观函数中考虑最小化车辆延迟,燃料消耗和车道变化的成本。更改车道更改策略树(LCST)和并行蒙特卡罗树搜索(PMCTS)算法旨在解决双级优化模型。根据距离挡块的距离逐个划分腔轨迹。滚动地平线方案应用于具有时变交通状况的提出模型的动态实现。数值研究验证了所提出的轨迹规划模型的优势与没有CAV轨迹规划的基准情况。可以显着降低平均燃料消耗和距离变化的脉冲数,特别是具有高的交通需求。由于固定的信号定时计划,脉冲的延迟减少到2秒,这是受限制的。 CAVE的轨迹规划还降低了CHV和混合交通的延迟和燃料消耗,特别是脉冲的高渗透率。灵敏度分析表明,200米的控制区长度足以确保所提出的模型的令人满意的性能。

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