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Artificial Neural Networks for Forecasting Passenger Flows on Metro Lines

机译:预测地铁线路乘客流动的人工神经网络

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Forecasting user flows on transportation networks is a fundamental task for Intelligent Transport Systems (ITSs). Indeed, most control and management strategies on transportation systems are based on the knowledge of user flows. For implementing ITS strategies, the forecast of user flows on some network links obtained as a function of user flows on other links (for instance, where data are available in real time with sensors) may provide a significant contribution. In this paper, we propose the use of Artificial Neural Networks (ANNs) for forecasting metro onboard passenger flows as a function of passenger counts at station turnstiles. We assume that metro station turnstiles record the number of passengers entering by means of an automatic counting system and that these data are available every few minutes (temporal aggregation); the objective is to estimate onboard passengers on each track section of the line (i.e., between two successive stations) as a function of turnstile data collected in the previous periods. The choice of the period length may depend on service schedules. Artificial Neural Networks are trained by using simulation data obtained with a dynamic loading procedure of the rail line. The proposed approach is tested on a real-scale case: Line 1 of the Naples metro system (Italy). Numerical results show that the proposed approach is able to forecast the flows on metro sections with satisfactory precision.
机译:预测用户流运输网络是智能传输系统(ITS)的基本任务。事实上,运输系统上的大多数控制和管理策略都是基于用户流的知识。为了实施其策略,在作为用户流在其他链路上的函数中获得的一些网络链路上的用户流程(例如,其中数据与传感器实时可用)可以提供显着的贡献。在本文中,我们建议使用人工神经网络(ANNS)来预测地铁乘客流量的乘客计数在驻车旋转器。我们假设地铁车站旋转器记录通过自动计数系统进入的乘客数量,并且每隔几分钟(时间聚合)都可以使用这些数据;目的是估算线路(即,在两个连续站之间的每个轨道部分上的乘客,作为上一段中收集的旋转数据的函数。期间长度的选择可能取决于服务时间表。通过使用轨道线的动态加载过程获得的模拟数据训练人工神经网络。建议的方法在实际情况下进行测试:那不勒斯地铁系统的第1行(意大利)。数值结果表明,该方法能够以满意的精度预测地铁部分的流动。

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