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首页> 外文期刊>Journal of Intelligent Transportation Systems >A queue length estimation and prediction model for long freeway off-ramps
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A queue length estimation and prediction model for long freeway off-ramps

机译:长高速公路越斜坡的队列长度估计与预测模型

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摘要

Real-time queue length estimation and prediction provides useful information for proactively managing transportation networks. Queue spillback from off-ramps onto main lanes of freeways is one of the traffic issues caused by vehicular queues that can be efficiently managed using dynamic queue information. In this paper, a case-based reasoning algorithm combined with a Kalman filter is developed to provide real-time queue length estimations and predictions on freeway off-ramps. The estimations are based on occupancy readings from three loop detectors installed on a ramp. The proposed method is examined using a micro-simulation model of an off-ramp with a length of 650 meters and a traffic signal downstream of the ramp. The simulation results show an accuracy of +/- 3.15 vehicles in the queue in 60-second time intervals. In addition, a rigorous sensitivity analysis is conducted to examine the performance of the algorithm under various demand loading scenarios, time intervals, number of detectors used, and errors in prior estimations. The results show that the model performs well in terms of estimating and predicting the length of long queues on freeway off-ramps at various congestion levels. The outcomes of this study can be utilized to activate dynamic, responsive, and proactive queue management and traffic control measures.
机译:实时队列长度估计和预测提供了用于积极管理运输网络的有用信息。从越来越高速公路的偏离坡道的队列溢出是由车辆队列引起的流量问题之一,可以使用动态队列信息有效地管理。在本文中,开发了一种基于壳体的推理算法与卡尔曼滤波器结合的基于克拉曼滤波器,以提供实时队列长度估计和高速公路越斜坡的预测。估计基于安装在斜坡上的三个环路探测器的占用读数。使用长度斜坡的微型仿真模型检查所提出的方法,长度为650米,坡道下游的交通信号。仿真结果在60秒的时间间隔中显示队列中+/- 3.15车辆的精度。此外,进行严格的敏感性分析,以检查在各种需求加载方案,时间间隔,使用的检测器数量下的算法的性能以及先前估计中的错误。结果表明,该模型在估计和预测各种拥塞水平的高速公路越斜坡上的长队列长度方面表现良好。本研究的结果可用于激活动态,响应性和主动队列管理和流量控制措施。

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