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A hidden Markov model for the estimation of correlated queues in probe vehicle environments

机译:用于估算探针环境中相关队列的隐马尔可夫模型

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摘要

Queue length estimation is critical for traffic signal control and performance measures. With the development of connected vehicle technologies and the popularization of ride-hailing services, probe vehicle data are now being collected on a large scale. Some studies have shown that queue lengths can be estimated using only probe vehicle data. The relevant literature usually assumes the queue lengths in different traffic signal cycles are independent and identically distributed or treats the queues independently. However, in the real world, the queue lengths in different cycles might be correlated. For instance, when there exists an overflow queue, the queue length in the following cycle is correlated with the queue length in the previous cycle. In fact, the correlation of different cycles can provide additional information and thus improve the queue length estimation accuracy. In this paper, we model such queueing processes in probe vehicle environments using a hidden Markov model (HMM), where the queue length in each cycle is a hidden state, and the observed pattern of probe vehicles is an observation. Based on the HMM, we propose two novel cycle-by-cycle queue length estimation methods. In the case where the parameters of the HMM are unknown, we also provide an algorithm that can estimate the parameters from historical probe vehicle data. Validation results show that the proposed cycle-by-cycle queue length estimation methods outperform the existing methods, and the parameter learning algorithm can estimate the parameters adequately.
机译:队列长度估计对于交通信号控制和性能措施至关重要。随着连接的车辆技术和乘车服务的普及,现在正在大规模收集探测车辆数据。一些研究表明,只能使用探针车辆数据估计队列长度。相关文献通常假设不同流量信号周期中的队列长度是独立的,并且独立地分发或处理队列。但是,在现实世界中,不同循环中的队列长度可能会相关。例如,当存在溢出队列时,以下循环中的队列长度与先前循环中的队列长度相关。实际上,不同循环的相关性可以提供附加信息,从而提高队列长度估计精度。在本文中,我们使用隐藏的马尔可夫模型(HMM)模型在探针车辆环境中进行这种排队过程,其中每个循环中的队列长度是隐藏状态,并且观察到的探针车辆的图案是观察。基于嗯,我们提出了两种逐个循环队列长度估计方法。在HMM的参数未知的情况下,我们还提供了一种可以从历史探测车辆数据估计参数的算法。验证结果表明,所提出的周期循环队列长度估计方法优于现有方法,参数学习算法可以充分估计参数。

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