基于停跳策略的城市地铁网络时刻表优化与同步

IF 2.6 Q3 TRANSPORTATION
Homa Motvallian Naeini, Yousef Shafahi, Mohammad SafariTaherkhani
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引用次数: 5

摘要

在地铁运营的交通网络中,跳站和时刻表同步是减少乘客总出行时间的两种有效策略。然而,大多数关于该主题的研究并没有同时考虑跳停策略和时间表同步。因此,本文提出了一种同时考虑两种策略的混合整数规划模型。该模型基于乘客智能卡数据,该数据涉及列车的容量,以最小化总乘客等待时间和车内时间,并在特定的研究范围内最大化成功到达目的地的乘客数量。由于列车、车站或研究范围的增加,问题的规模会呈指数级增长,因此寻求有效的方法来解决实际规模的问题是不可避免的。为此,提出了一种基于遗传算法的启发式算法来求解该模型。用GAMS (CPLEX)对一个假设的例子进行了求解,以评估模型和算法的性能。然后,将结果与遗传算法的结果进行比较。最后,以德黑兰轨道交通网络为例,对本文提出的模型和遗传算法方法进行了评估。结果表明,在高峰时段,该模型使每位乘客的出行时间平均减少约4.78%,使每位乘客的换乘等待时间平均减少约32.4%。最后,在考虑的研究范围内,使成功到达目的地的乘客数量最大化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing and synchronizing timetable in an urban subway network with stop-skip strategy

Stop-skipping and timetable synchronization are two effective strategies to reduce total passengers’ travel time in a transit network for subway operation. However, the majority of studies conducted on the topic do not consider stop-skipping strategy and timetable synchronization simultaneously. Thus, this article proposes a mixed-integer programming model considering both strategies simultaneously. The model is based on passenger smart-card data concerning the trains’ capacity to minimize total passengers’ waiting time and in-vehicle time and maximize the number of passengers who successfully reach their destination in a specific study horizon. Since increasing the number of trains, stations, or the study horizon, exponentially increases the size of the problem, seeking efficient methods to solve real-sized problems is inevitable. Therefore, a heuristic algorithm based on a genetic algorithm (GA) was developed to solve the model. A hypothetical example was solved with GAMS (CPLEX) in order to evaluate the performance of both the model and the used algorithm. Then, the results were compared with the results of GA. Finally, a large-scale, real-life case study based on Tehran rail transit network was used to evaluate the proposed models in this study and the genetic algorithm approach. The results indicated that the proposed model reduced each passenger’s travel time by approximately 4.78%, on average, and it also reduced each passenger’s transfer waiting time by approximately 32.4%, on average in a peak hour. Finally, it maximized the number of passengers who reached their destination successfully in the considered study horizon.

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来源期刊
CiteScore
7.10
自引率
8.10%
发文量
41
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