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Evaluating stochastic train process time distribution models on the basis of empirical detection data

机译:在经验检测数据的基础上评估随机列车处理时间分布模型

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This paper evaluates several commonly applied probability distribution models for stochastic train process times based on empirical data recorded in a Dutch railway station, The Hague Holland Spoor. An initial guess of model parameters is obtained by the Maximum Likelihood Estimator (MLE). An iterative procedure is then followed, in which large delays are omitted one by one and the distribution parameters are estimated correspondingly using the MLE method. The parameter estimation is improved by minimizing the Kolmogorov-Smirnov (K-S) statistic where of course the empirical distribution is still based on the complete data set. A local search is finally performed in the neighbourhood of the improved model parameters to further optimize the estimation. To evaluate the distribution models, we compare the K-S statistic among the fitted distributions with optimized parameters using the one-sample K-S goodness-of-fit test at a commonly adopted significance level of α = 0.05. It has been found that the log-normal distribution can be generally considered as the best approximate model among the candidate distributions for both the arrival times of trains at the platform and at the approach signal of the station. The Weibull distribution can generally be considered as the best approximate distribution model for non-negative arrival delays, departure delays and the free dwell times of late arriving trains. The shape parameter of the fitted distribution is generally smaller than 1.0 in the first two cases, whereas it is always larger than 1.0 in the last case. These distribution evaluation results for train process times can be used for accurately predicting the propagation of train delays and supporting timetable design and rescheduling particularly in case of lack of empirical data.
机译:本文评估了基于荷兰荷兰站记录的经验数据,评估了几个用于随机列车过程时间的常用概率分布模型,海牙荷兰·霍尔和荷兰堡。通过最大似然估计器(MLE)获得模型参数的初始猜测。然后遵循迭代过程,其中一个接一个地省略了大延迟并且相应地使用MLE方法估计分布参数。通过最小化Kolmogorov-Smirnov(K-S)统计来提高参数估计,当然当然仍然基于完整的数据集。最终在改进的模型参数附近执行本地搜索,以进一步优化估计。为了评估分配模型,我们将拟合分布的K-S统计数据与优化参数进行了优化的参数,使用了α= 0.05的常用显着性水平的α= 0.05的一个样本K-S的拟合测试。已经发现,对数正态分布通常可以被认为是候选分布中的最佳近似模型,用于平台的列车的到达时间和站的接近信号。 Weibull分布通常可以被视为非负抵达延迟,出发延迟和迟到的火车的自由停留时间的最佳近似分布模型。在前两种情况下,安装分布的形状参数通常小于1.0,而在最后一个情况下,它总是大于1.0。列车过程时间的分发评估结果可用于准确地预测列车延迟和支持时间表设计和重新安排的传播,特别是在缺乏经验数据的情况下。

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