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Short long term forecasting of multimodal transport passenger flows with machine learning methods

机译:基于机器学习方法的多式联运客流的短期和长期预测

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Estimating and forecasting travel demand is one of the major applications for smart card data analysis. Forecasting can be useful in order to plan both services and trips. Depending on the considered time horizon, prediction can output average travel demand in the long term while short-term forecasting can be useful in order to match transport supply to real-time demand. This paper investigates the problem of passenger flow forecasting in multimodal transport and considers train stations and bus and tram stops. The aim is to be able to predict the number of passengers entering each station or boarding at each stop. Both long- and short-term forecasting models are developed using machine learning models such as Random Forests (RF), Long-Short Term Memory (LSTM) neural networks as well as calendar models. Forecasting is performed either for the next year (in the case of long-term models) or for the next 15 minutes for train stations and tram stops and within the next 30 minutes for buses, which could be helpful for both passengers and operators. The experiments are carried out on a real 2 year smart card dataset provided by the Transport organization authority of Ile-de-France. We focus on 145 stations and stops located in the district of La Defense, which is a well-known major business district in Paris Metropolitan Area. Our results have proved the effectiveness of the forecasting approaches using the available data and machine learning models.
机译:估计和预测旅行需求是智能卡数据分析的主要应用之一。为了计划服务和行程,预测可能会很有用。根据所考虑的时间范围,预测可以输出长期的平均旅行需求,而短期预测则可以使运输供应与实时需求匹配。本文研究了多式联运中的客流预测问题,并考虑了火车站以及公交车站和有轨电车站。目的是能够预测进入每个车站或在每个车站登机的乘客数量。长期和短期预测模型都是使用机器学习模型开发的,例如随机森林(RF),长期短期记忆(LSTM)神经网络以及日历模型。预测将在明年(对于长期机型)或火车站和有轨电车站的下一个15分钟,以及公交车的下一个30分钟内进行,这可能对乘客和运营商都有帮助。实验是在法兰西岛交通组织当局提供的真实2年智能卡数据集上进行的。我们专注于位于拉德芳斯区的145个车站和车站,拉德芳斯区是巴黎大都会区著名的主要商业区。我们的结果证明了使用可用数据和机器学习模型进行预测的有效性。

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