Development of a Length-Based Cell-State Framework Toward the Re-Creation of Large-Scale Dense Congestion Patterns

Brian M. Staes, Haizhong Wang, R. Bertini
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Abstract

This paper presents the results and novel findings of generating a simplified version of the prevailing traffic features that existed during a major evacuation. Leveraging the underlying framework provided by the widely used cell transmission model, the desire is to reconstruct the unique characteristics of large congestion patterns that propagate under dense traffic states, where limited attempts at scaling this base model have occurred. The length-based cell-state framework presented can reproduce large spatiotemporal congestion patterns that exist, specifically from large-scale evacuations. To further simplify, the framework considers traffic state heuristics which are calibrated through oblique cumulative count and occupancy curves. As a result of this preprocessing technique, an artifact was found from the use of the cumulative curves under the lens of Newell’s two-phase traffic flow theory where three unique, separate queued regimes were identified within the fundamental diagrams. The methodology re-created a unique large-scale congestion pattern that existed during a past regional evacuation event, Hurricane Irma, the subject of this paper. To test this methodology, a large-scale congested period was analyzed, both with probe vehicle trajectory data and stationary radar detector data. Results demonstrate that traffic re-creation into state-based contours was able to be verified near a 90% level of confidence even at large spatiotemporal extents.
开发基于长度的单元状态框架,实现大规模密集拥堵模式的重现
本文介绍了在大疏散过程中生成简化版主要交通特征的结果和新发现。利用广泛使用的小区传输模型提供的基础框架,本文希望重构密集交通状态下传播的大型拥堵模式的独特特征,在此基础模型上进行的扩展尝试非常有限。本文提出的基于长度的小区状态框架可以重现现有的大时空拥堵模式,特别是大规模疏散时的拥堵模式。为了进一步简化,该框架考虑了交通状态启发法,通过斜累积计数和占用率曲线进行校准。由于采用了这种预处理技术,在纽厄尔两阶段交通流理论的视角下使用累积曲线时发现了一个假象,即在基本图中发现了三种独特、独立的排队状态。该方法重新创建了一个独特的大范围拥堵模式,该模式存在于过去的区域疏散事件--飓风艾尔玛(本文的主题)期间。为测试该方法,利用探测车辆轨迹数据和固定雷达探测器数据分析了大规模拥堵时段。结果表明,即使在大的时空范围内,基于状态轮廓的交通再创造也能以接近 90% 的置信度得到验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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