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Urban Link Travel Time Estimation Based on Low Frequency Probe Vehicle Data

机译:基于低频探头车辆数据的城市链路旅行时间估计

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摘要

To improve the accuracy and robustness of urban link travel time estimation with limited resources, this research developed a methodology to estimate the urban link travel time using low frequency GPS probe vehicle data. First, focusing on the case without reporting points for the GPS probe vehicle on the target link in the current estimation time window, a virtual report point creation model based on the K-Nearest Neighbour Rule was proposed.Then an improved back propagation neural network model was used to estimate the link travel time. The proposed method was applied to a case study based on an arterial road in Changchun, China: comparisons with the traditional artificial neural network method and the spatiotemporal moving average method revealed that the proposed method offered a higher estimation accuracy and better robustness.
机译:为了提高资源有限的城市链路旅行时间估计的准确性和稳健性,本研究开发了一种使用低频GPS探测车辆数据来估算城市链路旅行时间的方法。 首先,在当前估计时间窗口中的目标链路上的GPS探针车辆上的报告点上专注于基于K-最近邻居规则的虚拟报告点创建模型。该改进的后传播神经网络模型 用于估计链接行程时间。 该提出的方法应用于中国长春动脉道的案例研究:与传统人工神经网络方法的比较和时空移动平均方法揭示了该方法提供了更高的估计精度和更好的鲁棒性。

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