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Baseline Arterial Performance Evaluation and Signal System Management by Fusing High-Resolution Data from Traffic Signal Systems and Probe Vehicles

机译:通过融合交通信号系统和探测车的高分辨率数据进行基线动脉性能评估和信号系统管理

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The development of data-driven smart arterial systems that enables reduction in delays and increases the travel time reliability is a valuable tool for improving of arterial performance. Understanding the synergies and differences between speed data sets and traffic signal controller data is necessary for the efficient deployment of Intelligent Transportation Systems (ITS). It is not always feasible to fully instrument an intersection that provides data on optimal performance metrics. Therefore, it is necessary to establish a baseline performance metric for a given corridor to develop an ITS management plan. To that effect, this study conflated crowd-sourced anonymous probe vehicle data on vehicles trajectories and speeds with high-resolution traffic signal data sets. Interdependencies between the two datasets were examined and baseline corridor performance metrics were established. The analysis included an evaluation of the data sets for a 7.3-mile corridor in Burlington County, New Jersey (AADT ranging from 10,000-45,000). A GPS-equipped test vehicle was used to establish reliability of probe-vehicle data, which was then compared to near-term performance measures derived from high-resolution traffic signal data. Based on the analysis of approximately 1.7-million probe vehicle data points using visualization tools, the study demonstrated that the integration of multiple data sets provides a viable mechanism for the development of reliable, visually intuitive, arterial performance metrics. The study results also indicate that long term speed data from anonymous probe vehicle data could be used to evaluate traffic signal data to measure arterial performance measurement.
机译:数据驱动的智能动脉系统的开发能够减少延迟并提高行进时间的可靠性,这是改善动脉性能的重要工具。了解速度数据集和交通信号控制器数据之间的协同作用和差异对于有效部署智能交通系统(ITS)是必不可少的。全面检测提供最佳性能指标数据的路口并不总是可行的。因此,有必要为给定的走廊建立基线绩效指标,以制定ITS管理计划。为此,本研究将来自人群的匿名探测车辆数据与车辆轨迹和速度的数据与高分辨率交通信号数据集进行了融合。检查了两个数据集之间的相互依赖性,并建立了基准走廊性能指标。分析包括对新泽西州伯灵顿县7.3英里走廊的数据集进行评估(AADT介于10,000-45,000之间)。使用配备GPS的测试车辆来建立探测车辆数据的可靠性,然后将其与从高分辨率交通信号数据得出的近期性能指标进行比较。基于使用可视化工具对大约170万个探测车辆数据点的分析,该研究表明,多个数据集的集成为开发可靠的,视觉直观的动脉性能指标提供了可行的机制。研究结果还表明,来自匿名探测车数据的长期速度数据可用于评估交通信号数据,以测量动脉性能。

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