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Bus travel time prediction using a time-space discretization approach

机译:使用时空离散化方法的公交车行驶时间预测

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The accuracy of travel time information given to passengers plays a key role in the success of any Advanced Public Transportation Systems (APTS) application. In order to improve the accuracy of such applications, one should carefully develop a prediction method. A majority of the available prediction methods considered the variation in travel time either spatially or temporally. The present study developed a prediction method that considers both temporal and spatial variations in travel time. The conservation of vehicles equation in terms of flow and density was first re-written in terms of speed in the form of a partial differential equation using traffic stream models. Then, the developed speed based equation was discretized using the Godunov scheme and used in the prediction scheme that was based on the Kalman filter. From the results, it was found that the proposed method was able to perform better than historical average, regression, and ANN methods and the methods that considered either temporal or spatial variations alone. Finally, a formulation was developed to check the effect of side roads on prediction accuracy and it was found that the additional requirement in terms of location based data did not result in an appreciable change in the prediction accuracy. This clearly demonstrated that the proposed approach based on using vehicle tracking data is good enough for the considered application of bus travel time prediction. (C) 2017 Elsevier Ltd. All rights reserved.
机译:提供给乘客的旅行时间信息的准确性在任何高级公共交通系统(APTS)应用的成功中都起着关键作用。为了提高此类应用程序的准确性,应仔细开发一种预测方法。大多数可用的预测方法都考虑了旅行时间在空间或时间上的变化。本研究开发了一种预测方法,该方法考虑了旅行时间的时空变化。首先使用交通流模型以偏微分方程的形式根据速度和密度重写车辆方程的守恒性。然后,使用Godunov方案离散化所开发的基于速度的方程,并将其用于基于卡尔曼滤波器的预测方案中。从结果中发现,所提出的方法能够比历史平均,回归和ANN方法以及仅考虑时间或空间变化的方法表现更好。最后,开发了一种检查支路对预测准确性的影响的公式,发现基于位置数据的附加要求不会导致预测准确性的明显变化。这清楚地表明,基于使用车辆跟踪数据的建议方法对于考虑的公交车行驶时间预测的应用已经足够好。 (C)2017 Elsevier Ltd.保留所有权利。

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