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SAINT: Self-Adaptive Interactive Navigation Tool for Cloud-Based Vehicular Traffic Optimization

机译:SAINT:自适应交互式导航工具,用于基于云的车辆交通优化

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摘要

This paper proposes a self-adaptive interactive navigation tool (SAINT), which is tailored for cloud-based vehicular traffic optimization in road networks. The legacy navigation systems make vehicles navigate toward their destination less effectively with individually optimal navigation paths rather than network-wide optimal navigation paths, particularly during rush hours. To the best of our knowledge, SAINT is the first attempt to investigate a self-adaptive interactive navigation approach through the interaction between vehicles and vehicular cloud. The vehicles report their navigation experiences and travel paths to the vehicular cloud so that the vehicular cloud can know real-time road traffic conditions and vehicle trajectories for better navigation guidance for other vehicles. With these traffic conditions and vehicle trajectories, the vehicular cloud uses a mathematical model to calculate road segment congestion estimation for global traffic optimization. This model provides each vehicle with a navigation path that has minimum traffic congestion in the target road network. Using the simulation with a realistic road network, it is shown that our SAINT outperforms the legacy navigation scheme, which is based on Dijkstra's algorithm with a real-time road traffic snapshot. On a road map of Manhattan in New York City, our SAINT can significantly reduce the travel delay during rush hours by 19%.
机译:本文提出了一种自适应交互式导航工具(SAINT),该工具专门针对道路网络中基于云的车辆交通优化而设计。传统的导航系统使车辆使用单独的最佳导航路径而不是网络范围内的最佳导航路径,尤其是在高峰时段,无法有效地朝目的地行驶。就我们所知,SAINT是首次尝试通过车辆与车辆云之间的交互来研究自适应交互式导航方法。车辆将其导航经历和行进路线报告给车辆云,以便车辆云可以了解实时道路交通状况和车辆轨迹,从而为其他车辆提供更好的导航指导。在这些交通状况和车辆轨迹的情况下,车辆云使用数学模型来计算路段拥堵估计,以进行全局交通优化。该模型为每辆车提供了一条导航路径,该路径在目标道路网络中的交通拥堵程度最小。通过在真实道路网络上的仿真,可以看出我们的SAINT优于传统的导航方案,后者是基于Dijkstra算法并具有实时道路交通快照的算法。在纽约市曼哈顿的路线图上,我们的SAINT可以将高峰时间的旅行延迟大大减少19%。

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