Sakaguchi Yuta, Bakibillah A S M, Kamal Md Abdus Samad, Yamada Kou
Graduate School of Science and Technology, Gunma University, Kiryu 376-8515, Japan.
Department of Systems and Control Engineering, School of Engineering, Tokyo Institute of Technology, Tokyo 152-8552, Japan.
Sensors (Basel). 2023 Jan 5;23(2):611. doi: 10.3390/s23020611.
Uncoordinated driving behavior is one of the main reasons for bottlenecks on freeways. This paper presents a novel cyber-physical framework for optimal coordination of connected and automated vehicles (CAVs) on multi-lane freeways. We consider that all vehicles are connected to a cloud-based computing framework, where a traffic coordination system optimizes the target trajectories of individual vehicles for smooth and safe lane changing or merging. In the proposed framework, the vehicles are coordinated into groups or platoons, and their trajectories are successively optimized in a receding horizon control (RHC) approach. Optimization of the traffic coordination system aims to provide sufficient gaps when a lane change is necessary while minimizing the speed deviation and acceleration of all vehicles. The coordination information is then provided to individual vehicles equipped with local controllers, and each vehicle decides its control acceleration to follow the target trajectories while ensuring a safe distance. Our proposed method guarantees fast optimization and can be used in real-time. The proposed coordination system was evaluated using microscopic traffic simulations and benchmarked with the traditional driving (human-based) system. The results show significant improvement in fuel economy, average velocity, and travel time for various traffic volumes.
不协调的驾驶行为是高速公路拥堵的主要原因之一。本文提出了一种新颖的信息物理框架,用于多车道高速公路上联网自动驾驶车辆(CAV)的最优协调。我们认为所有车辆都连接到基于云的计算框架,在该框架中,交通协调系统优化单个车辆的目标轨迹,以实现平稳、安全的变道或合并。在所提出的框架中,车辆被协调成组或队列,并且它们的轨迹在滚动时域控制(RHC)方法中被相继优化。交通协调系统的优化旨在在必要变道时提供足够的间距,同时最小化所有车辆的速度偏差和加速度。然后将协调信息提供给配备本地控制器的各个车辆,并且每个车辆决定其控制加速度以遵循目标轨迹,同时确保安全距离。我们提出的方法保证了快速优化并且可以实时使用。所提出的协调系统通过微观交通模拟进行了评估,并与传统驾驶(基于人类)系统进行了基准测试。结果表明,在各种交通流量下,燃油经济性、平均速度和行驶时间都有显著改善。