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Integrated Public Transport Timetable Synchronization and Vehicle Scheduling with Demand Assignment: A Bi-objective Bi-level Model Using Deficit Function Approach

机译:随需需求分配集成公共交通时间表同步和车辆调度:使用赤字功能方法的双目标双级模型

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In the operations planning process of public transport (PT), timetable synchronization is a useful strategy utilized to reduce transfer waiting time and improve service connectivity. However, most of the studies on PT timetable synchronization design have treated the problem independently of other operations planning activities, and have focused only on minimizing transfer waiting time. In addition, the impact of schedule changes on PT users' route/trip choice behavior has not been well investigated yet. This work develops a new bi-objective, bi-level integer programming model, taking into account the interests of PT users and operators in attaining optimization of PT timetable synchronization integrated with vehicle scheduling and considering user demand assignment. Based on the special structure characteristics of the model, a novel deficit function (DF)-based sequential search method combined with network flow and shifting vehicle departure time techniques is proposed to achieve a set of Pareto-efficient solutions. The graphical features of the DF can facilitate a decision-making process for PT schedulers for finding a desirable solution. Two numerical examples are illustrated to demonstrate the methodology developed.
机译:在公共交通工具(PT)的运营计划过程中,时间表同步是利用的有用策略来减少转移等待时间并提高服务连接。然而,大多数关于PT时刻表同步设计的研究已经独立于其他运营计划活动对待问题,并且仅集中在最小化转移等待时间。此外,时间表变化对PT用户的路线/旅行选择行为的影响尚未得到很好的调查。这项工作开发了一种新的双目标双层整数编程模型,考虑到PT用户和运营商在获得与车辆调度中集成的PT时间表同步的优化中的利益,并考虑用户需求分配。基于该模型的特殊结构特征,提出了一种新的缺陷功能(DF)的顺序搜索方法,与网络流和移位车辆出发时间技术相结合,实现了一组静态效率解决方案。 DF的图形特征可以促进用于寻找期望解决方案的PT调度器的决策过程。示出了两个数值例子以证明所开发的方法。

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