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Modeling distributions of travel time variability for bus operations

机译:公交车行驶时间可变性的建模分布

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Bus travel time reliability performance influences service attractiveness, operating costs, and system efficiency. Better understanding of the distribution of travel time variability is a prerequisite for reliability analysis. A wide array of empirical studies has been conducted to model distribution of travel times in transport. However, depending on the data tested and approaches applied to examine the fitting performance, different conclusions have been reported. This paper aims to specify the most appropriate distribution model for the day-to-day travel time variability by using a novel evaluation approach and set of performance measures. Two important issues are explored using automatic vehicle location data collected on two typical bus routes over 6months in Brisbane, namely, data aggregation influences on travel time distribution and comprehensive evaluation of performance of distribution models. The decrease of temporal aggregation of travel times tends to increase the normality of distributions. The spatial aggregation of link travel times would break up the link multimodality distributions for a busway route, but unlike for a non-busway route. The Gaussian mixture models are evaluated as superior to its alternatives in terms of fitting accuracy, robustness, and explanatory power. The reported distribution model shows promise to fit travel times for other services with different operation environments considering its flexibility in fitting symmetric, asymmetric, and multi-modal distributions. The improved statistic fitting can support more effective service reliability analysis. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:公交车旅行时间的可靠性能影响服务吸引力,运营成本和系统效率。更好地了解行驶时间变异性的分布是进行可靠性分析的前提。已经进行了大量的经验研究来模拟运输时间的分布。但是,根据测试数据和检验装配性能的方法的不同,已报告了不同的结论。本文旨在通过一种新颖的评估方法和一套绩效指标,为日常出行时间的可变性指定最合适的分布模型。使用在布里斯班六个月以上的两条典型公交路线上收集的自动车辆位置数据,探索了两个重要问题,即数据汇总对行驶时间分布的影响以及分布模型性能的综合评估。旅行时间的时间聚集的减少趋向于增加分布的正态性。链路行驶时间的空间聚集将破坏公交专用道的链路多模态分布,但与非公交专用道不同。在拟合精度,鲁棒性和解释力方面,高斯混合模型的评估优于其替代方案。报告的分布模型显示了其有望适应其他具有不同操作环境的服务的旅行时间的考虑,因为它具有适应对称,不对称和多模式分布的灵活性。改进的统计拟合可以支持更有效的服务可靠性分析。版权所有(C)2015 John Wiley&Sons,Ltd.

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