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Estimation of Link Travel Time Distribution With Limited Traffic Detectors

机译:估计有限交通检测器的链路行程时间分布

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Motivated by the network tomography, in this paper, we present a novel methodology to estimate link travel time distributions (TTDs) using end-to-end (E2E) measurements detected by the limited traffic detectors at or near the road intersections. As it is not necessary to monitor the traffic in each link, the proposed estimator can be readily implemented in real life. The technical contributions of this paper are as follows: First, we employ the kernel density estimator (KDE) to model link travel times instead of parametric models, e.g., Gaussian distribution. It is able to capture the dynamic of link travel times that vary with the change of road conditions. The model parameters are estimated with the proposed C-shortest path algorithm, K-means-based algorithm, as well as expectation maximization (EM) algorithm. Second, to reduce the complexity of parameter estimation, we further propose a Q-opt and an X-means-based algorithm. Finally, we validate our proposed method using a dataset consisting of 3.0e + 07 GPS trajectories collected by the taxicabs in Xi'an, China. With the metrics of Kullback Leibler and Kolmogorov-Smirnov test, the experimental results show that the link TTDs obtained from our proposed model are in excellent agreement with the empirical distributions, provided that similar to 70% of the intersections are equipped with traffic detectors.
机译:在该文献中,通过网络断层扫描,我们提出了一种新的方法来使用由道路交叉口或附近的有限交通检测器检测到的端到端(E2E)测量来估计链路行进时间分布(TTD)。由于没有必要监控每个链路中的流量,所提出的估计器可以在现实生活中容易地实现。本文的技术贡献如下:首先,我们采用内核密度估计器(KDE)来模拟链路行程时间,而不是参数模型,例如高斯分布。它能够捕捉随着道路状况的变化而变化的环节行驶时间的动态。使用所提出的C-Shirest路径算法,K均值算法以及期望最大化(EM)算法来估计模型参数。其次,为了降低参数估计的复杂性,我们进一步提出了一种Q-opt和基于X型X均值的算法。最后,我们使用由中国西安特拉比卡队收集的3.0E + 07 GPS轨迹组成的数据集来验证我们的建议方法。通过Kullback Leibler和Kolmogorov-Smirnov测试的指标,实验结果表明,从我们所提出的模型中获得的链路TTD与经验分布非常一致,提供类似于70%的交叉点配备交通探测器。

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