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Queue Length Estimation Using Connected Vehicle Technology for Adaptive Signal Control

机译:基于互联车辆技术的自适应信号控制队列长度估计

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摘要

This paper presents a mathematical model for real-time queue estimation using connected vehicle (CV) technology from wireless sensor networks. The objective is to estimate the queue length for queue-based adaptive signal control. The proposed model can be applied without signal timing, traffic volume, or queue characteristics as basic inputs. The model is also developed so that it can work with both fixed-time signals and actuated signals. Furthermore, a discrete wavelet transform (DWT) is applied to the queue estimation algorithm in this paper for the first time. The purpose of the DWT is to enhance the proposed queue estimation to be more accurate and consistent regardless of the randomness in the penetration ratio. Experimental results are provided to validate the proposed model in both pretimed control and actuated control with a microscopic simulator, i.e., VISSIM. The results indicate that the proposed algorithm is able to estimate the queue length from VISSIM in the test case with pretimed signal control reasonably well. The results in actuated control cases, which have not been studied previously, showed that the proposed algorithm remains as accurate as the pretimed control cases. The accuracy of the proposed queue estimation algorithm is obtained without relying on basic inputs that other models typically require but are often impractical to obtain. Therefore, it is expected that the proposed queue estimation model is applicable for adaptive signal control using CV technology in practice.
机译:本文提出了一种使用无线传感器网络中的连接车辆(CV)技术进行实时队列估计的数学模型。目的是估计用于基于队列的自适应信号控制的队列长度。所提出的模型可以在没有信号定时,业务量或队列特性作为基本输入的情况下应用。还开发了该模型,使其可以同时使用固定时间信号和激活信号。此外,本文将离散小波变换(DWT)首次应用于队列估计算法。 DWT的目的是将建议的队列估计增强为更准确和一致的,而与渗透率的随机性无关。提供了实验结果,以在预定时控制和采用微观模拟器即VISSIM的驱动控制中验证所提出的模型。结果表明,该算法能够很好地估计具有预定时信号控制的测试案例中的VISSIM队列长度。之前未进行过研究的驱动控制案例的结果表明,所提出的算法与预控制案例一样准确。在不依赖其他模型通常需要但通常不切实际的基本输入的情况下,即可获得所提出的队列估计算法的准确性。因此,期望所提出的队列估计模型在实践中可适用于使用CV技术的自适应信号控制。

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