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Estimating dynamic roadway travel times using automatic vehicle identification data for low sampling rates

机译:使用自动车辆识别数据估算低采样率的动态道路行驶时间

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摘要

The paper describes a low-pass adaptive filtering algorithm for predicting average roadway travel times using automatic vehicle identification (AVI) data. The algorithm is unique in three aspects. First, it is designed to handle both stable (constant mean) and unstable (varying mean) traffic conditions. Second, the algorithm can be successfully applied for low levels of market penetration (less than 1%). Third, the algorithm works for both freeway and signalized arterial roadways. The proposed algorithm utilizes a robust data-filtering procedure that identifies valid data within a dynamically varying validity window. The size of the validity window varies as a function of the number of observations within the current sampling interval, the number of observations in the previous intervals, and the number of consecutive observations outside the validity window. Applications of the algorithm to two AVI datasets from San Antonio, one from a freeway link and the other from an arterial link, demonstrate the ability of the proposed algorithm to efficiently track typical variations in average link travel times while suppressing high frequency noise signals.
机译:本文介绍了一种通过自动车辆识别(AVI)数据预测平均行车时间的低通自适应滤波算法。该算法在三个方面具有独特性。首先,它旨在处理稳定(均值)和不稳定(均值)交通状况。其次,该算法可以成功地应用于低水平的市场渗透率(小于1%)。第三,该算法适用于高速公路和信号干道。所提出的算法利用了一种健壮的数据过滤程序,该程序可以在动态变化的有效性窗口内识别有效数据。有效性窗口的大小随当前采样间隔内的观察次数,先前间隔中的观察数以及有效性窗口外的连续观察数而变化。该算法在来自圣安东尼奥市的两个AVI数据集上的应用,其中一个来自高速公路,另一个来自干线,证明了该算法能够有效地跟踪平均链路传播时间的典型变化,同时抑制了高频噪声信号。

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