网联自动驾驶车辆高效归并机动的柔性策略

N. Chen, M. Wang, T. Alkim, B. Arem
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引用次数: 6

摘要

对于自动驾驶汽车来说,合并是一项具有挑战性的任务。本文提出了一种网联自动驾驶汽车在保证与主干线车辆安全交互的同时,有效引导匝道车辆归并的策略。采用点质量运动学模型来描述车辆的二维运动,并采用后退水平控制来生成相互作用车辆的最优轨迹。该策略确定了合并车辆的最优合并时刻和所有参与车辆的加速度,以最大限度地减少与前车速度的偏差、与优选车间距的偏差、加速度和合并时间。该策略建立在预先确定的车辆通过冲突区域的顺序上,但不像以前的研究假设的那样局限于固定的合并点。从某种意义上说,它类似于人类的行为,即匝道车辆在接近加速车道终点时将接受更小的间隙。仿真结果验证了该策略的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Flexible Strategy for Efficient Merging Maneuvers of Connected Automated Vehicles
Merging is a challenging task for automated vehicles. This paper proposes a strategy for connected automated vehicles (CAVs) to guide merging on-ramp vehicles efficiently while ensuring safe interactions with the mainline vehicles. Point-mass kinematic models are used to describe 2-D vehicle motion and receding horizon control is used to generate optimal trajectories of interacting vehicles. The strategy determines the optimal merging time instant for merging vehicles and acceleration of all involved vehicles to minimize deviation from the preceding vehicles' speed, deviation from preferred inter-vehicle gaps, accelerations, and the time spent merging. The strategy builds on a pre-determined order of vehicles passing the conflict zone but is not restricted to fixed merging points as previous research assumes. It resembles human-like behavior in the sense that on-ramp vehicles will accept smaller gaps when approaching the end of the acceleration lane. The performance of the strategy is demonstrated in simulations.
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