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Study on Space-Time Distribution Characteristics of Floating Car Data Based on Large Samples

机译:基于大样本的浮动车数据时空分布特征研究

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Floating Car Data has been used to evaluate traffic conditions in Real-time Transportation Information Systems. In these systems, taxis are often used as probe cars. Because of the randomicity of taxis when travelling in cities, it is necessary to analyze taxisȁ9; distribution characteristics in road networks. In this paper, two indexes named Detecting Intensity and Detecting Rate are designed to analyze the Space-Time Distribution Characteristics. 5,000 taxis in Hangzhou of China are selected as probe cars, and Floating Car Data are continuously collected from these taxis during a week. The conclusions show that Detecting Intensity and Detecting Rate can clearly demonstrate the Space-Time Distribution Characteristics in different time and road types. Urban express ways, arterial roads can usually be detected by probe cars with more dependability. Traffic conditions evaluated through FCD in peak hours on a day is probably more dependable than in off-peak hours. At the same time, the relationship between distribution characteristics and sample size are also analyzed, in order to help find a more reasonable probe car sample size for Real-time Transportation Information Systems.
机译:浮动汽车数据已用于评估实时交通信息系统中的交通状况。在这些系统中,出租车通常用作探测车。由于出租车在城市中行驶的随机性,有必要对出租车进行分析[9]。道路网络中的分布特征。本文设计了两个指标,分别为检测强度和检测率,以分析时空分布特征。选择了中国杭州的5,000辆出租车作为探测车,并在一周内不断从这些出租车收集浮动车数据。结论表明,检测强度和检测率可以清楚地显示出不同时间和道路类型的时空分布特征。城市快速路,干道通常可以由探测车以更高的可靠性来检测。通过FCD在一天的高峰时段评估的交通状况可能比非高峰时段更加可靠。同时,还分析了分布特征与样本量之间的关系,以帮助为实时交通信息系统找到更合理的探测车样本量。

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