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Spatio-temporal traffic queue detection for uninterrupted flows

机译:时空流量队列检测,不中断流

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摘要

When traffic flow exceeds capacity because of demand fluctuations, crashes, work zones, and special events, a traffic queue is formed on a highway. Traffic queues cause potentially hazardous situations at the end of the queue where drivers unexpectedly face slowed or stopped traffic while approaching at high speed. Therefore, detecting a queue is vital for protecting it. This study presents a real-time spatio-temporal traffic queue detection algorithm that builds on traffic flow fundamentals combined with a statistical pattern recognition procedure. Using flow-density data, traffic flow phase is classified as either congested or uncongested flow in a probabilistic manner, based on Gaussian mixture models for each location in such a way that detects the traffic phase transitions. The proposed detection algorithm was applied to detect traffic queues using traffic detector data from Interstate 40 in Knoxville, Tennessee. The detection results show that the algorithm detects queues successfully by accounting for varying queueing conditions and different queue types. In addition, the proposed algorithm performed better than speed threshold methods in the literature. (C) 2019 Elsevier Ltd. All rights reserved.
机译:当由于需求波动,交通事故,工作区域和特殊事件而导致交通流量超过容量时,会在高速公路上形成交通队列。交通队列在队列末尾会导致潜在的危险情况,在这种情况下,驾驶员在高速驶入时意外地面临减速或停止的交通。因此,检测队列对于保护它至关重要。这项研究提出了一种实时时空交通队列检测算法,该算法基于交通流基本原理并结合了统计模式识别程序。使用流量密度数据,可以基于每个位置的高斯混合模型,以检测交通阶段转换的方式,以概率的方式将交通阶段划分为拥堵或未拥堵流。所提出的检测算法被用于使用田纳西州诺克斯维尔40号州际公路的交通检测器数据检测交通队列。检测结果表明,该算法通过考虑不同的排队条件和不同的队列类型,成功检测到队列。另外,所提出的算法在性能上优于速度阈值方法。 (C)2019 Elsevier Ltd.保留所有权利。

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