Reliability of Probe Speed Data for Detecting Congestion Trends

Y. Adu-Gyamfi, Anuj Sharma, Skylar Knickerbocker, N. Hawkins, Michael Jackson
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引用次数: 13

Abstract

This paper presents a framework for evaluating the reliability of probe-sourced traffic speed data for congestion detection and general infrastructure performance assessment. The methodology outlined employs pattern recognition and time-series analysis to accurately quantify the similarity and dissimilarities between probe-sourced and benchmarked local sensor data. First, an adaptive and multiscale pattern recognition algorithm called Empirical Mode Decomposition (EMD) is used to define short, medium and long-term trends for the probe-sourced and infrastructure mounted local sensor datasets. The reliability of the probe data is then estimated based on the similarity or synchrony between corresponding trends. The synchrony between long-term trends are used as a measure of accuracy for general performance assessment, whereas short and medium term trends are used for testing the accuracy of congestion detection with probe-sourced data. Using one-month of high-resolution speed data, the authors were able to use probe data to detect on average 74% and 63% of the short-term events (events lasting for at most 30 minutes), 95% and 68% of the medium-term events (events lasting between 1 and 3 hours) on freeways and non - freeways respectively. Significant latencies do however exist between both datasets. On non - freeways, the benchmarked data detected events, on average, 12 minutes earlier than the probe data. On freeways, the latency between the datasets was reduced to 8 minutes. The resulting framework can serve as a guide for state DOTs when outsourcing or supplementing traffic data collection to probe-based services.
用于检测拥塞趋势的探针速度数据的可靠性
本文提出了一个框架,用于评估用于拥堵检测和一般基础设施性能评估的探针源交通速度数据的可靠性。概述的方法采用模式识别和时间序列分析来准确量化探针源和基准本地传感器数据之间的相似性和差异性。首先,使用一种称为经验模式分解(EMD)的自适应多尺度模式识别算法来定义探针来源和基础设施安装的本地传感器数据集的短期、中期和长期趋势。然后根据相应趋势之间的相似性或同步性来估计探测数据的可靠性。长期趋势之间的同步性用于一般性能评估的准确性度量,而短期和中期趋势用于使用探针源数据测试拥塞检测的准确性。使用一个月的高分辨率速度数据,作者能够使用探针数据分别在高速公路和非高速公路上检测平均74%和63%的短期事件(事件持续时间最多为30分钟),95%和68%的中期事件(事件持续时间为1至3小时)。然而,两个数据集之间确实存在明显的延迟。在非高速公路上,基准数据平均比探测数据早12分钟检测到事件。在高速公路上,数据集之间的延迟减少到8分钟。当将流量数据收集外包或补充到基于探测的服务时,得到的框架可以作为州DOTs的指南。
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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