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Early Detection of a Traffic Flow Breakdown in the Freeway Based on Dynamical Network Markers

机译:早期检测基于动态网络标记的高速公路交通流量故障

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摘要

This paper presents a novel model-free method based on the dynamical network markers (DNM) to detect the traffic flow breakdown at an early transition stage in the context of the freeway connected with an on-ramp under a connected vehicle environment. In this method, the vehicle states are frequently observed at several cells or segments on each lane. By processing the observed data, the standard deviations and the correlation coefficients among the cells are analyzed to determine the dominant cells, the ones that are mostly influenced during the transition. Finally, the standard deviations and absolute values of the correlation coefficients of the dominant cells are combined to form a scalar warning signal, which provides a very strong indication when the traffic is at the critical state. The proposed method is evaluated through simulation on freeway traffic, whose flows are disturbed by the on-ramp merging vehicles.
机译:本文提出了一种基于动态网络标记(DNM)的新型无模型方法,以在与连接的车辆环境下与斜坡连接的高速公路的上下文中检测在早期过渡阶段的交通流量击穿。在该方法中,在每个车道上的几个小区或区段中经常观察到车辆状态。通过处理观察到的数据,分析了细胞中的标准偏差和相关系数以确定显性细胞,在过渡期间主要受影响的细胞。最后,组合主导小区的相关系数的标准偏差和绝对值,以形成标量警告信号,当流量处于临界状态时提供非常强的指示。所提出的方法是通过对高速公路交通的模拟来评估的,其流动由On-Ramp合并车辆受到干扰。

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