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Macroscopic Traffic States Estimation Based on Vehicle-to-Infrastructure (V2I) Connected Vehicle Data

机译:基于车辆到基础设施(V2I)连接的车辆数据的宏观交通状态估计

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The rapid development of connected vehicle technology provides a promising platform for traffic monitoring and traffic data collection. In the connected vehicle environment, the vehicles equipped with wireless communication devices can transmit vehicle safety messages to other connected vehicles and the Roadside Unit (RSU). The trajectory information in the safety message may provide potential usage for macroscopic traffic states estimation in the urban street network. Over the last few years, the applications of a macroscopic traffic states model, the Macroscopic Fundamental Diagram (MFD) has attracted increased attention. However, the detection of MFD remains a challenging task. This paper explores a potential method of measuring the macroscopic traffic states in terms of MFD based on Vehicle-to-Infrastructure (V2I) connected vehicle data. The methodology of generating MFDs is conducted and the potential characteristics of the macroscopic traffic states are explored. A simulation testbed based on real-world Sioux Falls network is established in VISSM. The wireless data transmissions between connected vehicles and RSUs are simulated by the Discrete Event Network Simulator (NS-3 Simulation). The simulation results illustrate the feasibility of monitoring macroscopic traffic states with the proposed method. The macroscopic traffic states under different radio signal loss models are compared, and the results indicate a significant influence of the wireless characteristics of radio propagation model on the observed traffic states. However, the observed MFD still retain key characteristics such as hysteresis loop direction, traffic breakdown and congestion recovery time.
机译:连接的车辆技术的快速发展为交通监控和交通数据收集提供了一个有希望的平台。在连接的车辆环境中,配备有无线通信设备的车辆可以将车辆安全消息传送到其他连接的车辆和路边单元(RSU)。安全消息中的轨迹信息可以提供城市街道网络中的宏镜路交通状态估计的潜在用法。在过去的几年中,宏观交通态模型的应用,宏观基础图(MFD)引起了更多的关注。然而,MFD的检测仍然是一个具有挑战性的任务。本文探讨了基于车辆到基础设施(V2I)连接的车辆数据的MFD测量宏观交通状态的潜在方法。进行了生成MFD的方法,并探讨了宏观交通状态的潜在特征。基于现实世界SIOUX瀑布网络的仿真试验平台建立了VISSM。通过离散事件网络模拟器(NS-3仿真)模拟连接的车辆和RSU之间的无线数据传输。仿真结果说明了通过提出的方法监测宏观交通状态的可行性。比较了在不同的无线电信号丢失模型下的宏交通状态,结果表明无线电传播模型对观察到的交通状态的无线特性的显着影响。然而,观察到的MFD仍然保持诸如滞后回路方向,交通衰退和拥塞恢复时间的关键特征。

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