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Single bus line timetable optimization with big data: A case study in Beijing

机译:单总线线路时间表优化大数据:北京案例研究

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Bus lines are suffering from serious decline in passenger volume due to the rapid development of urban rail transit and shared transport, and big data intelligence may help them change the status quo. However, the tremendous amount of travel data collected in recent years have not got effectively utilization. In order to improve passenger volume for bus lines, this paper devotes to develop a data-driven bus timetable to substitute the existing experience-based bus timetable, which is now widely used by bus lines. Driven by the bus GPS data and IC card data, a timetable optimization model with time-dependent passenger demand and travel time among stops is proposed. The objective of maximizing passenger volume is based on a new preference-based passenger selection model. The working hours constraint is initially formulated, and the headway constraint and departure time constraints are also taken into account. For handling the step functions in both objective and constraints, we introduce a set of 0-1 variables to transform the proposed model into an integer linear programming. A model contraction approach is provided for solving the medium-scale problems and a two-stage solution method is proposed for the large-scale problems. The proposed model and methodology are tested on a real-world bus line in Beijing. The results show that it is able to produce a satisfactory timetable that outperforms the previously used experience-based one in terms of raising the average passenger volume by 8.2%. (C) 2020 Published by Elsevier Inc.
机译:由于城市轨道交通和共享运输的快速发展,公交线路遭受乘客体积严重下降,大数据智能可能有助于他们改变现状。然而,近年来收集的大量旅行数据没有得到有效利用。为了改善总线的乘客量,本文致力于开发数据驱动的总线时间表,以替代现有的基于经验的总线时间表,现在广泛地使用了总线。提出了由总线GPS数据和IC卡数据的驱动,提出了具有时间依赖乘客需求和停止之间的旅行时间的时间表优化模型。最大化乘客量的目标是基于新的偏好的乘客选择模型。最初制定了工作时间约束,并且还考虑了入路约束和出发时间约束。为了处理目标和约束中的步骤功能,我们介绍了一组0-1变量,以将所提出的模型转换为整数线性编程。提供了一种用于解决中型问题的模型收缩方法,提出了一种用于大规模问题的两级解决方法。拟议的模型和方法在北京的真实巴士线上进行了测试。结果表明,它能够产生令人满意的时间表,以优于先前使用的经验,以将平均乘客量提高8.2%。 (c)由elsevier公司发布的2020年

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