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首页> 外文期刊>Journal of advanced transportation >A multia??objective subway timetable optimization approach with minimum passenger time and energy consumption
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A multia??objective subway timetable optimization approach with minimum passenger time and energy consumption

机译:具有最少乘客时间和能源消耗的多目标地铁时刻表优化方法

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摘要

Considering the service quality and energy efficiency, this paper develops a multia??objective timetable optimization approach for subway system. First, we analyze the variation on the passenger flow at stations, and propose the concept of passenger waiting time. Second, we develop a speeda??profilea??generation approach to search for the energya??efficient speed profile under the condition of a given section trip time. Then we formulate a multia??objective timetable optimization model to minimize the passenger time and energy consumption by controlling section trip time and station dwell time, in which passenger time includes both waiting time and traveling time. We respectively employ the ideala??point compromise approach, linearly weighted compromise approach and fuzzy linear programming approach to find the suboptimal solution, via performing a genetic algorithm. With the operation data from Beijing Yizhuang and 4a??Daxing subway lines of China, we conduct extensive case studies to demonstrate the effectiveness of our model. The results show that the passenger waiting time and energy consumption can be reduced during both peak and offa??peak hours. The proposed model and algorithm can be developed to a decision support system for dispatchers to schedule trains in the real world. Copyright ?? 2015 John Wiley & Sons, Ltd.
机译:考虑到服务质量和能效,本文提出了一种地铁系统多目标时刻表优化方法。首先,我们分析了车站客流的变化,提出了旅客候车时间的概念。其次,我们开发了一种速度谱图生成方法,以在给定的断路时间的条件下搜索能量效率谱图。然后,我们建立了一个多目标时间表优化模型,通过控制路段旅行时间和车站停留时间来最大限度地减少乘客时间和能源消耗,其中乘客时间包括等待时间和旅行时间。通过执行遗传算法,我们分别采用了理想点折衷法,线性加权折衷法和模糊线性规划法来寻找次优解。根据北京亦庄和中国4a ??大兴地铁线路的运行数据,我们进行了广泛的案例研究,以证明我们的模型的有效性。结果表明,在高峰时段和非高峰时段都可以减少乘客的等待时间和能耗。可以将提出的模型和算法开发为决策支持系统,以供调度员在现实世界中调度火车。版权?? 2015年John Wiley&Sons,Ltd.

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