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联网车辆作为信号交叉口实时排队长度的移动传感器

Connected Vehicle as a Mobile Sensor for Real Time Queue Length at Signalized Intersections.

作者信息

Gao Kai, Han Farong, Dong Pingping, Xiong Naixue, Du Ronghua

机构信息

College of Automotive and Mechanical Engineering, Changsha University of Science & Technology, Changsha 410114, China.

Hunan Key Laboratory of Smart Roadway and Cooperative Vehicle-Infrastructure Systems, Changsha 410114, China.

出版信息

Sensors (Basel). 2019 May 2;19(9):2059. doi: 10.3390/s19092059.

Abstract

With the development of intelligent transportation system (ITS) and vehicle to X (V2X), the connected vehicle is capable of sensing a great deal of useful traffic information, such as queue length at intersections. Aiming to solve the problem of existing models' complexity and information redundancy, this paper proposes a queue length sensing model based on V2X technology, which consists of two sub-models based on shockwave sensing and back propagation (BP) neural network sensing. First, the model obtains state information of the connected vehicles and analyzes the formation process of the queue, and then it calculates the velocity of the shockwave to predict the queue length of the subsequent unconnected vehicles. Then, the neural network is trained with historical connected vehicle data, and a sub-model based on the BP neural network is established to predict the real-time queue length. Finally, the final queue length at the intersection is determined by combining the sub-models by variable weight. Simulation results show that the sensing accuracy of the combined model is proportional to the penetration rate of connected vehicles, and sensing of queue length can be achieved even in low penetration rate environments. In mixed traffic environments of connected vehicles and unconnected vehicles, the queuing length sensing model proposed in this paper has higher performance than the probability distribution (PD) model when the penetration rate is low, and it has an almost equivalent performance with higher penetration rate while the penetration rate is not needed. The proposed sensing model is more applicable for mixed traffic scenarios with much looser conditions.

摘要

随着智能交通系统(ITS)和车对X(V2X)技术的发展,联网车辆能够感知大量有用的交通信息,如交叉路口的排队长度。针对现有模型复杂且信息冗余的问题,本文提出一种基于V2X技术的排队长度感知模型,该模型由基于冲击波感知和反向传播(BP)神经网络感知的两个子模型组成。首先,该模型获取联网车辆的状态信息并分析排队的形成过程,然后计算冲击波速度以预测后续未联网车辆的排队长度。接着,利用历史联网车辆数据训练神经网络,建立基于BP神经网络的子模型来预测实时排队长度。最后,通过可变权重组合子模型确定交叉路口的最终排队长度。仿真结果表明,组合模型的感知精度与联网车辆的渗透率成正比,即使在低渗透率环境下也能实现排队长度的感知。在联网车辆和未联网车辆的混合交通环境中,本文提出的排队长度感知模型在低渗透率时比概率分布(PD)模型具有更高的性能,在高渗透率时性能几乎相当且无需考虑渗透率。所提出的感知模型更适用于条件宽松得多的混合交通场景。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ede/6538986/3604e426deb8/sensors-19-02059-g001.jpg

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