Roadrunner+: An Autonomous Intersection Management Cooperating with Connected Autonomous Vehicles and Pedestrians with Spillback Considered

Michael I.-C. Wang, Charles H.-P. Wen, H. J. Chao
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引用次数: 6

Abstract

The recent emergence of Connected Autonomous Vehicles (CAVs) enables the Autonomous Intersection Management (AIM) system, replacing traffic signals and human driving operations for improved safety and road efficiency. When CAVs approach an intersection, AIM schedules their intersection usage in a collision-free manner while minimizing their waiting times. In practice, however, there are pedestrian road-crossing requests and spillback problems, a blockage caused by the congestion of the downstream intersection when the traffic load exceeds the road capacity. As a result, collisions occur when CAVs ignore pedestrians or are forced to the congested road. In this article, we present a cooperative AIM system, named Roadrunner+ , which simultaneously considers CAVs, pedestrians, and upstream/downstream intersections for spillback handling, collision avoidance, and efficient CAV controls. The performance of Roadrunner+ is evaluated with the SUMO microscopic simulator. Our experimental results show that Roadrunner+ has 15.16% higher throughput than other AIM systems and 102.53% higher throughput than traditional traffic signals. Roadrunner+ also reduces 75.62% traveling delay compared to other AIM systems. Moreover, the results show that CAVs in Roadrunner+ save up to 7.64% in fuel consumption, and all the collisions caused by spillback are prevented in Roadrunner+.
Roadrunner+:考虑溢出效应的自动驾驶车辆和行人的自动交叉口管理
最近出现的互联自动驾驶汽车(cav)使自动路口管理(AIM)系统取代了交通信号和人工驾驶操作,提高了安全性和道路效率。当自动驾驶汽车接近十字路口时,AIM以无碰撞的方式安排他们的十字路口使用,同时最大限度地减少他们的等待时间。然而,在实践中,存在行人过路请求和溢出问题,即当交通负荷超过道路容量时,下游十字路口拥堵造成的堵塞。因此,当自动驾驶汽车忽视行人或被迫在拥挤的道路上行驶时,就会发生碰撞。在这篇文章中,我们提出了一个名为Roadrunner+的协同AIM系统,该系统同时考虑了自动驾驶汽车、行人和上下游交叉路口的溢出处理、碰撞避免和有效的自动驾驶汽车控制。利用SUMO显微模拟器对Roadrunner+的性能进行了评估。实验结果表明,Roadrunner+的吞吐量比其他AIM系统高15.16%,比传统交通信号的吞吐量高102.53%。与其他AIM系统相比,Roadrunner+还减少了75.62%的旅行延误。结果表明,在Roadrunner+中,自动驾驶汽车可节省7.64%的燃油消耗,并且完全避免了由溢出引起的碰撞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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