Train timetable and stopping plan generation based on cross-line passenger flow in high-speed railway network

Yuqiang Wang
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Abstract

Considering the real scenario in China, in order to decrease passenger transfer, cross-line trains are scheduled extensively for the large number of cross-line passenger flow. Therefore, in this paper, we propose a more practical approach aiming to schedule more trains within a limit time horizon by both main-line train and cross-line train scheduling optimization (train timetable and stopping plan optimization). We find that the train scheduling and passenger assignment problems are multi-commodity flow problems. The trains (as the users) share the railway capacities (as the resource) in a high-speed railway network, and the passengers (as the users) share the train carrying capacities (as the resource). Thus, based on this, we formulate two space–time networks—train and passenger space–time networks—to present the train operation and the passenger flow, respectively. In addition, we regard train disturbances in different directions as different train headways at cross-line stations to optimize train scheduling practically. Sequentially, a mixed-integer linear programing model with headway and coupling constraints is formulated. To solve the model efficiently for a large-scale application, we decompose the problem into two space–time path-searching sub-problems based on the passenger and train space–time networks by the Lagrangian relaxation and alternating direction method of multipliers decomposition methods. Finally, we adopt the Taiyuan–Dezhou and Zhengzhou–Beijing high-speed railway networks in a practical experiment, and an experiment without cross-line operation is designed to test the effect of cross-line operation. The results show the proposed approach can obtain a no-conflict timetable and all the passenger demand can be satisfied, meanwhile, the capacity can improve 20.7% when the cross-line operation is not considered.
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基于高速铁路网跨线客流的列车时刻表和停车计划生成
考虑到中国的实际情况,为了减少旅客换乘,跨线列车在大量跨线客流中被大量调度。因此,本文提出了一种更为实用的方法,旨在通过干线列车和跨线列车的调度优化(列车时刻表和停车计划优化),在有限的时间范围内安排更多的列车。我们发现,列车调度和乘客分配问题是多商品流问题。在高速铁路网中,列车(作为用户)共享铁路能力(作为资源),乘客(作为用户)共享列车运载能力(作为资源)。因此,在此基础上,我们建立了两个时空网络--列车时空网络和乘客时空网络--来分别呈现列车运行和客流情况。此外,我们将不同方向的列车干扰视为跨线车站的不同列车班次,以切实优化列车调度。我们依次建立了一个带有车头和耦合约束的混合整数线性规划模型。为了在大规模应用中高效求解该模型,我们通过拉格朗日松弛法和交替方向乘法分解法,将问题分解为基于乘客和列车时空网络的两个时空路径搜索子问题。最后,我们采用太原-德州和郑州-北京高速铁路网进行了实际实验,并设计了一个不跨线运行的实验来检验跨线运行的效果。结果表明,所提出的方法可以得到无冲突时刻表,并能满足所有客流需求,同时,在不考虑跨线运行的情况下,运能可提高 20.7%。
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