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Exploiting probe data to estimate the queue profile in urban networks

机译:利用探测数据来估算城市网络中的队列配置文件

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Queues at signalized intersections are one of the main causes of traffic delays and urban traffic state variability. Hence, a method to estimate queue characteristics provides a better understanding of urban traffic dynamics and a performance measurement of signalized arterials. In order to capture the evolution of queues, we aim at leveraging the collective effect of spatially and temporally dispersed probe data to identify the formation and dissipation of queues in the time-space plane. The queue profile characterizes the evolution of both queue front and back, which consequently can be separated in a two-step estimation process resulting to the queue profile polygon. The evolution of queue front, in the time-space diagram, based on the kinematic traffic shockwave theory is modeled as a line with the known slope of queue-discharging shockwave and estimated with a constrained optimization and a technique known as support vector machine. The evolution of back of queue is more challenging and modeled as a piecewise linear function where slope of segments is between the queue-discharging shockwave and zero. In the proposed method, the input data consists of position and velocity of probe vehicles. The queue profile estimation method does not require any explicit information of signal settings and arrival distribution. The proposed method is tested with various penetration rates and sampling intervals of probe data, which reveals promising results once compared to a uniform arrival queue profile estimation procedure. The proposed method could be beneficial for spillback identification, vehicle trajectory construction, and fuel consumption and emission estimation.
机译:信号交叉口的队列是交通延误和城市交通状态变异性的主要原因之一。因此,估计队列特征的方法可以更好地理解城市交通动态和信号化动脉的性能测量。为了捕获队列的演变,我们的目的是利用空间和时间分散的探针数据的集体效应来识别时空平面中排队的形成和耗散。队列档案表征了队列前后和背部的演变,从而可以在两步估计过程中分开,从而产生队列配置文件多边形。基于运动交通冲击波理论的时空前方的队列前沿的演变被建模为具有已知队列放电冲击波的已知斜率的线,并用受约束的优化和称为支持向量机的技术估计。队列后面的演变更具挑战性,并且作为分段线性函数建模的,其中段的斜率在队列放电冲击波和零之间。在该方法中,输入数据包括探针车辆的位置和速度。队列配置文件估计方法不需要任何明确的信号设置和到达分布的信息。通过各种穿透速率和探测数据的采样间隔测试所提出的方法,其揭示了与均匀到达队列简档估计程序相比的有前途的结果。该方法可能有利于溢出识别,车辆轨迹结构和燃料消耗和排放估计。

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