Cooperative Merging Trajectory Optimization of Connected and Automated Vehicles in the Mixed Traffic: a Receding Horizon Control Approach

Haoji Liu, Guo-dong Yin, Weichao Zhuang, Rongcan Li
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引用次数: 1

Abstract

The Cooperative on-ramp merging control of the connected and automated vehicle (CAV) can effectively address problems of traffic congestion, excessive energy consumption, and even traffic accident in the on-ramp merging areas. However, the uncertain maneuver of human-driven vehicles (HDVs) in mixed traffic scenarios brings trouble in making merging control for CAVs. In this paper, we proposed a receding horizon on-ramp merging control strategy for CAVs to address the mixed traffic merging control problem. First, control constrained optimal control problems for CAVs corresponding to two control modes are formulated. The flexible merging control mode optimizes merging trajectory with flexible merging time and position, while the mandatory merging control mode gives a fixed merging position to prevent the on-ramp CAV from driving beyond the longitudinal boundary. All the formulated optimal control problems are solved by Pontryagin’s minimum principle. Then, a receding horizon switching control framework is employed, in which the uncertain maneuver of the HDV is regarded as disturbance, thus CAVs collect HDV states, choose proper control modes, and replan their own trajectories repeatedly. Simulation results show that the proposed on-ramp merging control strategy can make CAVs merge flexibly in different scenarios and has the potential in improving safety, optimization, and robustness for the mixed traffic on-ramp merging control.
混合交通中网联与自动驾驶车辆协同归并轨迹优化:一种后退地平线控制方法
网联自动驾驶汽车(CAV)的匝道合流协同控制可以有效解决匝道合流区域的交通拥堵、能耗过高甚至交通事故等问题。然而,混合交通场景下人驾驶汽车的不确定性给自动驾驶汽车的归并控制带来了困难。针对混合交通的合并控制问题,提出了一种自动驾驶汽车的后退地平线入匝道合并控制策略。首先,给出了两种控制模式对应的自动驾驶汽车的控制约束最优控制问题。柔性归并控制模式通过灵活的归并时间和位置来优化归并轨迹,而强制归并控制模式通过固定的归并位置来防止入匝道CAV行驶超出纵向边界。所提出的最优控制问题均由庞特里亚金最小原理求解。然后,采用后退水平切换控制框架,将HDV的不确定机动作为干扰,自动驾驶汽车收集HDV的状态,选择合适的控制模式,并反复重新规划自己的轨迹。仿真结果表明,所提出的入匝道合并控制策略能够使自动驾驶汽车在不同场景下灵活合并,具有提高混合交通入匝道合并控制安全性、优化性和鲁棒性的潜力。
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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