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Freeway Traffic Speed Estimation of Mixed Traffic Using Data from Connected and Autonomous Vehicles with a Low Penetration Rate

机译:使用具有低穿透率的连接和自治车辆的数据使用数据的高速公路交通速度估算混合流量

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Connected and autonomous vehicles (CAVs) are on the way to the field application. In the beginning stage, there will be a mixed traffic flow, containing the regular human-driven vehicles and CAVs with a low penetration rate. Recently, the discussion about the impact of a small proportion of CAVs in the mixed traffic is controversial. This paper investigated the possibility of applying the limited data from these lowly penetrated CAVs to estimate the average freeway link speeds based on the Kalman filtering (KF) method. First, this paper established a VISSIM-based microsimulation model to mimic the mixed traffic with different CAV penetration rates. The characteristics of this mixed traffic were then discussed based on the simulation data, including the sample size distribution, data-missing rate, speed difference, and fundamental diagram. Accordingly, the traditional KF-based method was introduced and modified to adapt data from CAVs. Finally, the evaluations of the estimation accuracy and the sensitive analysis of the proposed method were conducted. The results revealed the possibility and applicability of link speed estimation using data from a small proportion of CAVs.
机译:连接和自主车辆(CAV)正在进行现场应用。在开始阶段,将存在混合的交通流量,其中包含具有低穿透速率的常规人的驱动车辆和脉冲。最近,关于少量比例脉冲在混合交通中的影响是有争议的。本文调查了将有限数据应用于这些低穿越脉冲的可能性,以估计基于卡尔曼滤波(KF)方法的平均高速公路链路速度。首先,本文建立了基于VISSIM的微仿模型,以模拟混合流量与不同的脉冲速率。然后基于模拟数据讨论这种混合流量的特征,包括采样大小分布,数据缺失率,速度差和基础图。因此,引入和修改了传统的基于KF的方法以适应来自CAV的数据。最后,进行了估计精度和提出方法的敏感分析的评价。结果揭示了链路速度估计的可能性和适用性,使用来自一小部分脉冲的数据。

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