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Robust optimization of train timetable and energy efficiency in urban rail transit: A two-stage approach

机译:城市轨道交通中火车时间表和能效的鲁棒优化:两阶段方法

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摘要

With the rapid development of urban rail transit systems in large cities, the travel demand of urban rail transit has increased and the total energy consumption has risen sharply. These situations will result in a huge operating cost, especially the energy consuming. In urban rail transit operations, some uncertain or stochastic factors frequently occur, which will lead to trains deviating from the schedule train timetable. Therefore, it is of great significance to study the optimal strategy to reduce the energy consumption and enhance the flexibility. Providing a robust train timetable is able to reduce operating costs and improve service quality. This paper proposes a two-stage robust optimization model for finding an optimal train timetable to save energy-efficient and reduce passenger waiting time. In the stage-one model, the objective is to reduce passenger waiting time, and the decision variable is the train departure time interval. In the stage-two model, the objective is to minimize the total energy consumption of all trains, and the decision variable is the train departure and arrival time at each station. Due to the complexity of the mathematical model, this paper proposed a nested heuristic genetic algorithm to solve it. An adaptive generation operator and a nested chromosome set generation strategy are included to solve the two-stage robust optimization model. The proposed model and algorithm is then validated by the practical data of Beijing Subway Yizhuang line. The proposed approach can be potentially applied to metro operation optimization of urban rail transit system.
机译:随着城市轨道交通系统在大城市的快速发展,城市轨道交通的旅行需求增加,总能源消耗急剧上升。这些情况将导致巨大的运营成本,特别是能源消耗。在城市轨道交通运营中,经常发生一些不确定或随机因素,这将导致列车偏离了日程列车时间表。因此,研究最佳策略,以降低能量消耗并增强灵活性是具有重要意义。提供强大的列车时间表能够降低运营成本并提高服务质量。本文提出了一种两级鲁棒优化模型,用于寻找最佳列车时间表,以节省节能,减少乘客等候时间。在一级模型中,目标是减少乘客等候时间,决策变量是火车出发时间间隔。在阶段 - 两个模型中,目的是最大限度地减少所有列车的总能耗,决策变量是每个站的火车出发和到达时间。由于数学模型的复杂性,本文提出了一种嵌套启发式遗传算法来解决它。包括自适应生成操作员和嵌套染色体集生成策略来解决两级鲁棒优化模型。然后由北京地铁宜庄线的实际数据验证了所提出的模型和算法。建议的方法可能潜在地应用于城市轨道交通系统的地铁运营优化。

著录项

  • 来源
    《Computers & Industrial Engineering》 |2020年第8期|106594.1-106594.17|共17页
  • 作者单位

    State Key Laboratory of Rail Traffic Control and Safety Beijing Jiaotong University Beijing China;

    State Key Laboratory of Rail Traffic Control and Safety Beijing Jiaotong University Beijing China;

    State Key Laboratory of Rail Traffic Control and Safety Beijing Jiaotong University Beijing China;

    State Key Laboratory of Rail Traffic Control and Safety Beijing Jiaotong University Beijing China;

    State Key Laboratory of Rail Traffic Control and Safety Beijing Jiaotong University Beijing China;

    School of Information Beijing Wuzi University Beijing 101149 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Robust optimization; Train timetable optimization; Energy saving strategy; Genetic algorithm;

    机译:鲁棒优化;火车时间表优化;节能策略;遗传算法;

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