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Network-wide prediction of public transportation ridership using spatio-temporal link-level information

机译:使用时空链接级信息在全网范围内预测公共交通出行

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Public transportation is a key element to vivid city life. Understanding the dynamics and driving forces of public transportation ridership can be a very rewarding task. It is, however, a highly complex construct. In this research, we focus on a spatial viewpoint, which has seen little attention: the link level. It represents the trip of a vehicle between directly connected stations. Additionally, we put emphasis on the impact of exogenous events. In order to assess their spatio-temporal influences, a temporal resolution of 30 min complements the spatial link level. Ridership data for trams and buses is provided by Stadtwerke Miinchen (SWM), which is the operator of the public transportation network in Munich, Germany, including 82 bus and 17 tram lines. About 30% of trams and 50% of buses are equipped with automatic passenger counting sensors, which capture boarding and alighting at each individual station. The equipped vehicles are strategically placed by SWM to obtain a meaningful view on the whole system. The raw sensor data is cleaned and sanitized. The data we are using spans a 4-year period (2014-2017). Following a pre-processing step, similar to 59.79% of the data is considered, which equates to similar to 97 million observations. There are 693 tram links and 2944 bus links, which makes 3637 links in total. We distinguish the analysis in ridership prediction and inference. For prediction, we specify one model functional form and build this model for each link, using 5-fold cross-validation to avoid overfitting. We employ decision trees, combining them with bagging and boosting. We then perform inference, i.e. attempt to understand the relationship between the variables that emerged in the predictive models. Ridership is assessed for each link separately and visualized together in order to construct network views and maps. Conclusions are drawn, and recommendations for future research are formulated.
机译:公共交通是生动活泼的城市生活的关键要素。了解公共交通出行的动态和驱动力可能是一项非常有意义的任务。但是,它是一个高度复杂的结构。在这项研究中,我们关注于一个空间观点,该观点很少受到关注:链接级别。它表示直接连接的站点之间的车辆行程。另外,我们强调外源事件的影响。为了评估其时空影响,30分钟的时间分辨率可补充空间链接级别。 Stadtwerke Miinchen(SWM)提供了电车和公共汽车的乘车数据,该公司是德国慕尼黑的公共交通网络运营商,包括82条公共汽车和17条电车线路。大约30%的有轨电车和50%的公共汽车配备了自动乘客计数传感器,这些传感器可以记录每个车站的上下车情况。 SWM从战略上布置了配备好的车辆,以获取整个系统的有意义的视图。原始传感器数据已清洗和消毒。我们使用的数据跨度为4年(2014年至2017年)。经过预处理后,将考虑相似数据的59.79%,相当于相似的9700万个观测值。有693条电车线路和2944条公交车线路,共3637条线路。我们在乘客量预测和推理中区分分析。为了进行预测,我们指定一种模型功能形式,并使用5倍交叉验证来避免过度拟合,从而为每个链接构建此模型。我们采用决策树,将其与装袋和提振相结合。然后,我们进行推断,即尝试理解预测模型中出现的变量之间的关系。单独评估每个链接的乘客资格并一起可视化,以构建网络视图和地图。得出结论,并提出对未来研究的建议。

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