论文标题

多行驶高速公路合并区域中连接和自动驾驶汽车的流级协调

Flow-level Coordination of Connected and Autonomous Vehicles in Multilane Freeway Ramp Merging Areas

论文作者

Zhu, Jie, Tasic, Ivana, Qu, Xiaobo

论文摘要

由于频繁合并,编织和改变车道的行为引起的严重干扰,坡道合并区域被视为高速公路网络的典型瓶颈。连接和自动驾驶汽车(CAVS)受益于其实时沟通和精确运动控制的能力,拥有通过增强合作来促进坡道合并运营的机会。现有的CAV合作策略主要是为单车道高速公路设计的,尽管在现实世界中,多层配置更为普遍。在本文中,我们提出了一种流量级CAV协调策略,以促进多行高速公路中的合并操作。该协调综合了主流车道之间的车道变化规则,积极创造大的合并间隙以及坡道车辆的排量,以增强交通流量稳定性和效率的好处。该策略是在优化框架下制定的,其中最佳控制计划是根据实时交通条件确定的。可调模型参数对生产的控制计划的影响将进行详细讨论。在微模拟环境中证明了所提出的多弹性策略的效率。结果表明,协调可以大大提高整体坡道合并效率,并防止经常发生的交通拥堵,尤其是在较高的交通量条件下。

On-ramp merging areas are deemed to be typical bottlenecks for freeway networks due to the intensive disturbances induced by the frequent merging, weaving, and lane-changing behaviors. The Connected and Autonomous Vehicles (CAVs), benefited from their capabilities of real-time communication and precise motion control, hold an opportunity to promote ramp merging operation through enhanced cooperation. The existing CAV cooperation strategies are mainly designed for single-lane freeways, although multilane configurations are more prevailing in the real-world. In this paper, we present a flow-level CAV coordination strategy to facilitate merging operation in multilane freeways. The coordination integrates lane-change rules between mainstream lanes, proactive creation of large merging gaps, and platooning of ramp vehicles for enhanced benefits in traffic flow stability and efficiency. The strategy is formulated under an optimization framework, where the optimal control plan is determined based on real-time traffic conditions. The impacts of tunable model parameters on the produced control plan are discussed in detail. The efficiency of the proposed multilane strategy is demonstrated in a micro-simulation environment. The results show that the coordination can substantially improve the overall ramp merging efficiency and prevent recurrent traffic congestions, especially under high traffic volume conditions.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源