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Estimation of bus dwell time using univariate time series models

机译:使用单变量时间序列模型估算总线停留时间

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A significant proportion of bus travel time is contributed by dwell time for passenger boarding and alighting. More accurate estimation of bus dwell time (BDT) can enhance efficiency and reliability of public transportation system. Regression and probabilistic models are commonly used in literatures where a set of independent variables are used to define the statistical relationship between BDT and its contributing factors. However, due to technical and monetary constraints, it is not always feasible to collect all the data required for the models to work. More importantly, the contributing factors may vary from one bus route to another. Time series based methods can be of great interest as they require only historical time series data, which can be collected using a facility known as automatic vehicle location (AVL) system. This paper assesses four different time series based methods namely random walk, exponential smoothing, moving average (MA), and autoregressive integrated moving average to model and estimate BDT based on AVL data collected from Auckland. The performances of the proposed methods are ranked based on three important factors namely prediction accuracy, simplicity, and robustness. The models showed promising results and performed differently for central business district (CBD) and nona??CBD bus stops. For CBD bus stops, MA model performed the best, whereas for nona??CBD bus stops, ARIMA model performed the best compared with other time series based models. Copyright ?? 2014 John Wiley & Sons, Ltd.
机译:公共汽车上车和下车的停留时间在公交旅行时间中占很大比例。更准确地估计公交车的停留时间(BDT)可以提高公共交通系统的效率和可靠性。回归和概率模型通常在文献中使用,其中使用一组自变量来定义BDT及其影响因素之间的统计关系。但是,由于技术和金钱的限制,收集模型运行所需的所有数据并不总是可行的。更重要的是,从一条公交路线到另一条公交路线的影响因素可能会有所不同。基于时间序列的方法可能非常受关注,因为它们仅需要历史时间序列数据,可以使用称为自动车辆定位(AVL)系统的设施进行收集。本文评估了四种基于时间序列的方法,即随机游走,指数平滑,移动平均值(MA)和自回归综合移动平均值,以基于从奥克兰收集的AVL数据对BDT进行建模和估计。所提出的方法的性能基于三个重要因素进行排名,即预测准确性,简单性和鲁棒性。这些模型显示出令人鼓舞的结果,并且在中央商务区(CBD)和nona ?? CBD公交车站的表现各不相同。与其他基于时间序列的模型相比,对于CBD公交车站,MA模型表现最好,而对于nona ?? CBD公交车站,ARIMA模型表现最好。版权?? 2014 John Wiley&Sons,Ltd.

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