论文标题
相关的大规模交通速度估算的稀疏感应:一种laplacian增强的低级张量kriging方法
Correlating sparse sensing for large-scale traffic speed estimation: A Laplacian-enhanced low-rank tensor kriging approach
论文作者
论文摘要
交通速度对于表征道路网络的流动性至关重要。许多运输应用程序都依赖于它,例如实时导航,动态路线计划和拥堵管理。传感和通信技术的快速进步使交通速度检测比以往任何时候都更加容易。但是,由于静态传感器的稀疏部署或移动传感器的渗透率较低,检测到的速度不完整,并且远离网络范围的使用远。此外,由于各种原因,传感器容易出现错误或缺少数据,这些传感器的速度可能会变得高度嘈杂。这些缺点要求有效的技术从不完整的数据中恢复可靠的估计。在这项工作中,我们首先将这个问题确定为时空的克里格问题,并提出了拉普拉斯增强的低率张量完成(LETC)框架,该框架具有低级别和多维交通相关性,以在有限的观察结果下进行大规模交通速度。具体而言,仔细选择并同时选择了三种类型的速度相关性,包括时间连续性,时间周期性和空间接近度,并通过三种不同形式的图形laplacian,命名为时间图傅立叶变换,广义的时间一致性正则化和扩散图正规化。然后,我们通过几种有效的数字技术设计有效的解决方案算法,以扩展提出的模型到网络范围的KRIGING。通过对两个公开的百万级交通速度数据集进行实验,我们最终得出结论,并发现我们提出的LETC即使在低观测率下也达到了最先进的Kriging性能,而与基线方法相比,同时节省了超过一半的计算时间。还提供了一些对网络级别的时空交通数据建模和Kriging的见解。
Traffic speed is central to characterizing the fluidity of the road network. Many transportation applications rely on it, such as real-time navigation, dynamic route planning, and congestion management. Rapid advances in sensing and communication techniques make traffic speed detection easier than ever. However, due to sparse deployment of static sensors or low penetration of mobile sensors, speeds detected are incomplete and far from network-wide use. In addition, sensors are prone to error or missing data due to various kinds of reasons, speeds from these sensors can become highly noisy. These drawbacks call for effective techniques to recover credible estimates from the incomplete data. In this work, we first identify the issue as a spatiotemporal kriging problem and propose a Laplacian enhanced low-rank tensor completion (LETC) framework featuring both lowrankness and multi-dimensional correlations for large-scale traffic speed kriging under limited observations. To be specific, three types of speed correlation including temporal continuity, temporal periodicity, and spatial proximity are carefully chosen and simultaneously modeled by three different forms of graph Laplacian, named temporal graph Fourier transform, generalized temporal consistency regularization, and diffusion graph regularization. We then design an efficient solution algorithm via several effective numeric techniques to scale up the proposed model to network-wide kriging. By performing experiments on two public million-level traffic speed datasets, we finally draw the conclusion and find our proposed LETC achieves the state-of-the-art kriging performance even under low observation rates, while at the same time saving more than half computing time compared with baseline methods. Some insights into spatiotemporal traffic data modeling and kriging at the network level are provided as well.