基于公交的城市车辆网络公交出行数据标定

C. Celes, A. Boukerche, A. Loureiro
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引用次数: 8

摘要

除了作为主要的交通工具之一,随着传感和通信技术的出现,属于公共交通系统的公共汽车在城市中心获得了新的作用。它们已被应用为覆盖整个城市的强大的车辆网络,称为BUS-VANET。对于此类网络解决方案的设计和验证,节点的移动性信息至关重要。例如,来自公交车GPS轨迹的数据可以用来了解它们之间相遇的动态。这些知识可以应用于为不同的用户设计应用程序和服务,除了提供必要的信息来正确管理这个重要的公共交通解决方案之外。然而,现实世界的轨迹有一些不完美之处。特别是,GPS轨迹是异构的,异步的,并且通常包含低采样率。这些特征对在设计BUS-VANET解决方案时使用该数据集施加了一定的限制。在这项工作中,我们提出了一种基于轨迹历史信息和道路网络的混合校准轨迹的方法来克服这些问题。通过对实际数据的评估,我们证明了我们的方法在几个方面超过了最先进的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Calibrating Bus Mobility Data for Bus-based Urban Vehicular Networks
In addition to being one of the primary means of transport, with the advent of sensing and communication technologies, buses belonging to the public transport system have gained a new role in urban centers. They have been applied as a powerful vehicular network that covers an entire city, called BUS-VANET. For the design and validation of solutions for this type of network, the nodes' mobility information is essential. For instance, data from the buses' GPS trajectories can be used to understand the dynamics of encounters between them. This knowledge can be applied to design applications and services for different users, besides providing the necessary information to properly manage this important public transport solution. However, real-world trajectories have several imperfections. In particular, GPS trajectories are heterogeneous, asynchronous, and typically contain a low sample rate. These characteristics impose certain limitations on the use of this dataset in the design of solutions for a BUS-VANET. In this work, we propose a hybrid method of calibrating trajectories based on historical information of trajectories and a road network to overcome these problems. We showed that our method surpasses the state-of-the-art techniques in several perspectives through evaluation with realistic data.
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