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Estimating congestion zones and travel time indexes based on the floating car data

机译:基于浮动汽车数据估算拥堵区域和旅行时间索引

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Efficiently predicting traffic congestion benefits various traffic stakeholders, from regular commuters and logistic operators to urban planners and responsible authorities. This study aims to give a high-quality estimation of traffic conditions from a large historical Floating Car Data (FCD) with two main goals: (i) estimation of congestion zones on a large road network, and (ii) estimation of travel times within congestion zones in the form of the time-varying Travel Time Indexes (TTIs). On the micro level, the traffic conditions, in the form of speed profiles were mapped to links in the road network. On the macro level, the observed area was divided into a fine-grained grid and represented as an image where each pixel indicated congestion intensity. Spatio-temporal characteristics of congestion zones were determined by morphological closing operation and Monte Carlo simulation coupled with temporal clustering. As a case study, the road network in Croatia was selected with spatio-temporal analysis differentiating between the summer season and the rest of the year season. To validate the proposed approach, three comparisons were conducted: (i) comparison to real routes' travel times driven in a controlled manner, (ii) comparison to historical trajectory dataset, and (iii) comparison to the state-of-the-art method. Compared to the real measured travel times, using zone's time-varying TTIs for travel time estimation resulted in the mean relative percentage error of 4.13%, with a minor difference to travel times estimated on the micro level, and a significant improvement compared to the current Croatian industrial navigation. The results support the feasibility of estimating congestion zones and time-varying TTIs on a large road network from FCD, with the application in urban planning and time-dependent routing operations due to: significant reduction in the data volume without notable quality loss, and meaningful reduction in the pre-processing computation time.
机译:有效地预测交通拥堵使各种交通利益相关者从常规通勤者和后勤运营商到城市规划者和负责任当局中获益。本研究旨在提供具有两个主要目标的大型历史浮动汽车数据(FCD)的高质量估算:(i)大型道路网络上拥堵区域的估计,(ii)在内部旅行时间估算以时变行程指数(TTI)形式的拥塞区域。在微观水平上,流量条件以速度配置文件的形式被映射到道路网络中的链接。在宏观上,观察区域被分成细粒栅格,并表示为每个像素指示拥塞强度的图像。通过与时间聚类相结合的形态学闭合操作和蒙特卡罗模拟来确定拥塞区域的时空特征。作为一个案例研究,克罗地亚的道路网络被选中了时空分析区分了夏季与今年剩余时间之间的差异。为了验证所提出的方法,进行了三个比较:(i)与受控方式驱动的真实路线的旅行时间比较,(ii)与历史轨迹数据集的比较,(iii)与最先进的历史轨迹数据集方法。与实际测量的旅行时间相比,使用区域的时变TTI对旅行时间估计产生的平均相对百分比误差为4.13%,与微水位估计的旅行时间有很小差异,与电流相比具有显着改进克罗地亚工业导航。结果支持从FCD估算拥塞区域和时变TTI的可行性,并且在城市规划和时间依赖路由操作中的应用:数据量显着降低,没有明显的质量损失,并且有意义减少预处理计算时间。

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