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Cooperative Intersection with Misperception in Partially Connected and Automated Traffic

机译:具有部分连接和自动交通的误解的合作交叉

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摘要

The emerging connected and automated vehicle (CAV) has the potential to improve traffic efficiency and safety. With the cooperation between vehicles and intersection, CAVs can adjust speed and form platoons to pass the intersection faster. However, perceptual errors may occur due to external conditions of vehicle sensors. Meanwhile, CAVs and conventional vehicles will coexist in the near future and imprecise perception needs to be tolerated in exchange for mobility. In this paper, we present a simulation model to capture the effect of vehicle perceptual error and time headway to the traffic performance at cooperative intersection, where the intelligent driver model (IDM) is extended by the Ornstein–Uhlenbeck process to describe the perceptual error dynamically. Then, we introduce the longitudinal control model to determine vehicle dynamics and role switching to form platoons and reduce frequent deceleration. Furthermore, to realize accurate perception and improve safety, we propose a data fusion scheme in which the Differential Global Positioning system (DGPS) data interpolates sensor data by the Kalman filter. Finally, a comprehensive study is presented on how the perceptual error and time headway affect crash, energy consumption as well as congestion at cooperative intersections in partially connected and automated traffic. The simulation results show the trade-off between the traffic efficiency and safety for which the number of accidents is reduced with larger vehicle intervals, but excessive time headway may result in low traffic efficiency and energy conversion. In addition, compared with an on-board sensor independently perception scheme, our proposed data fusion scheme improves the overall traffic flow, congestion time, and passenger comfort as well as energy efficiency under various CAV penetration rates.
机译:新兴连接和自动化车辆(CAV)有可能提高交通效率和安全性。随着车辆与交叉路口之间的合作,CAMS可以调整速度并形成凝块以使交叉点更快地通过。然而,由于车辆传感器的外部条件,可能发生感知误差。与此同时,骑士和常规车辆将在不久的将来共存,需要宽容以换取移动性的不精确观念。在本文中,我们提出了一种模拟模型,捕获车辆感知误差和时间前往在合作交叉路口的流量性能的效果,其中智能驱动程序模型(IDM)由Ornstein-Uhlenbeck进程延伸,以动态描述感知误差。然后,我们介绍了纵向控制模型,以确定车辆动态和角色切换以形成粘盘并减少频繁减速。此外,为了实现准确的感知和改善安全性,我们提出了一种数据融合方案,其中差分全球定位系统(DGPS)数据由卡尔曼滤波器内插传感器数据。最后,提出了一种综合研究,了解了感性误差和时间入路如何影响崩溃,能耗以及在部分连接和自动流量的合作交叉处的拥堵。仿真结果表明,随着车辆间隔的较大事故数量减少的交通效率和安全之间的权衡,但是出现过度的流量效率和能量转换。此外,与板载传感器相比独立的感知方案,我们所提出的数据融合方案可以提高整体交通流量,拥塞时间和乘客舒适度以及各种脉冲速率下的能效。

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