Network-Wide Public Transport Occupancy Prediction Framework With Multiple Line Interactions

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Open Journal of Intelligent Transportation Systems Pub Date : 2023-11-09 DOI:10.1109/OJITS.2023.3331447
Federico Gallo;Nicola Sacco;Francesco Corman
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Abstract

This paper addresses the problem of predicting the occupancy of urban public transport vehicles with a network-wide framework where the effects of the interactions between multiple lines are jointly considered. In particular, we propose and compare several occupancy predictors, each of them differing in the amount of information used and in the prediction model adopted. We consider two prediction models: a behavioral model that assumes an explicit relation between some observed variables and the occupancy, and a machine learning model based on the LightGBM algorithm. We evaluate the proposed network-wide prediction framework on two real-world case studies related to the public transport network of the Swiss city of Zurich. The results show that predicting the occupancy for a target line while simultaneously considering the other lines in the network allows significant improvements in the accuracy of the predictions, especially in the corridors served by different interacting lines. The described methodology could be used by public transport agencies to improve the accuracy of the crowding information provided to passengers and to increase the attractiveness of public transport systems.
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基于多线路交互的全网络公共交通占用预测框架
本文在综合考虑多线路相互作用影响的网络框架下,研究了城市公共交通车辆占用率的预测问题。特别地,我们提出并比较了几个入住率预测器,每个入住率预测器在使用的信息量和采用的预测模型上都有所不同。我们考虑了两种预测模型:一种是行为模型,该模型假设一些观察变量与入住率之间存在显式关系,另一种是基于LightGBM算法的机器学习模型。我们在两个与瑞士苏黎世市公共交通网络相关的现实案例研究中评估了拟议的全网预测框架。结果表明,在同时考虑路网中其他线路的情况下预测目标线路的占用率可以显著提高预测的准确性,特别是在不同相互作用线路服务的走廊中。公共交通机构可以使用所描述的方法来提高向乘客提供的拥挤信息的准确性,并增加公共交通系统的吸引力。
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