Since the traffic administration at road intersections determines the capacity bottleneck of modern transportation systems, intelligent cooperative coordination for connected autonomous vehicles (CAVs) has shown to be an effective solution. In this paper, we try to formulate a Bi-Level CAV intersection coordination framework, where coordinators from High and Low levels are tightly coupled. In the High-Level coordinator where vehicles from multiple roads are involved, we take various metrics including throughput, safety, fairness and comfort into consideration. Motivated by the time consuming space-time resource allocation framework in [1], we try to give a low complexity solution by transforming the complicated original problem into a sequential linear programming one. Based on the "feasible tunnels" (FT) generated from the High-Level coordinator, we then propose a rapid gradient-based trajectory optimization strategy in the Low-Level planner, to effectively avoid collisions beyond High-level considerations, such as the pedestrian or bicycles. Simulation results and laboratory experiments show that our proposed method outperforms existing strategies. Moreover, the most impressive advantage is that the proposed strategy can plan vehicle trajectory in milliseconds, which is promising in realworld deployments. A detailed description include the coordination framework and experiment demo could be found at the supplement materials, or online at https://youtu.be/MuhjhKfNIOg.
翻译:由于公路十字路口的交通管理决定了现代运输系统的能力瓶颈,连接的自治车辆(CAVs)的智能合作协调已证明是一个有效的解决办法。在本文件中,我们试图制定一个双级CAV交叉协调框架,使来自高低级别的协调员密切配合。在涉及多条道路的车辆的高级协调员中,我们采用各种衡量标准,包括吞吐、安全、公平和舒适。受[1]时间耗时的时间-时间资源分配框架的驱使,我们试图通过将复杂的原问题转变为一个顺序直线规划方案,来提供一个低复杂性的解决方案。根据高级别协调员产生的“可行隧道”(FT),我们然后在低级别规划员中提出快速的基于梯度的轨道优化战略,以有效避免高层次考虑以外的碰撞,如行车或自行车。模拟结果和实验室实验表明,我们提出的方法优于现有战略。此外,最令人印象深刻的优势是,拟议的战略可以在毫秒内规划车辆轨迹,这是现实世界部署材料中充满希望的。ALA/MSUA 详细描述和A/O的在线试验框架。在现实部署中可以包括A/ADUD/MSU/A中发现的框架。