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首页> 外文期刊>Journal of Intelligent Transportation Systems >Spatial-temporal traffic congestion identification and correlation extraction using floating car data
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Spatial-temporal traffic congestion identification and correlation extraction using floating car data

机译:使用浮动汽车数据的空间时间流量拥塞识别和相关提取

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摘要

Traffic congestion induces significant economic loss each year, and identifying traffic congestion patterns is necessary for better traffic control and management. Floating car data (FCD) provides a cost-effective alternative for assessing traffic status and detecting congestion on a large scale. Recently, a new speed performance index (SPI) has been proposed to evaluate traffic status considering both traffic flow speeds and road speed limits. This research proposes a new categorization criterion to define traffic conditions as five levels based on SPI values, and applies the proposed criterion in a case study to investigate traffic status and detect traffic congestion patterns on urban freeways based on FCD analysis. The research results reveal a clear understanding regarding urban freeway traffic status and congestion spatial and temporal distribution. With more comprehensive FCD from larger spatial and temporal domains, continued research could focus on travel speed prediction, travel time estimation, prediction, and reliability analysis at both the road segment and network levels.
机译:交通拥堵每年均突出显着的经济损失,并识别交通拥堵模式对于更好的交通管制和管理是必要的。浮动车数据(FCD)提供了一种经济高效的替代方案,用于评估交通状况和大规模的拥堵。最近,已经提出了一种新的速度性能指数(SPI)来评估考虑交通流量速度和道路速度限制的交通状态。本研究提出了新的分类标准,以基于SPI值将交通状况定义为五个级别,并在案例研究中应用提出的标准,以研究基于FCD分析的交通状态和检测城市高速公路上的交通拥堵模式。研究结果揭示了有关城市高速公路交通地位和拥堵空间和时间分布的明确了解。通过较大的空间和时间域更全面的FCD,持续的研究可以专注于道路和网络水平的旅行速度预测,旅行时间估计,预测和可靠性分析。

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