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Main Authors: Bafandkar, Shayan, Shafahi, Yousef, Eslami, Alireza, Yazdiani, Alireza
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.14671
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author Bafandkar, Shayan
Shafahi, Yousef
Eslami, Alireza
Yazdiani, Alireza
author_facet Bafandkar, Shayan
Shafahi, Yousef
Eslami, Alireza
Yazdiani, Alireza
contents This study introduces a novel methodology for managing train network disruptions across the entire rail network, leveraging digital tools and methodologies. The approach involves two stages, taking into account possible and practical features such as allowing trains to occupy opposite tracks and considering infrastructure capacity for train stops. In the first stage, important nodes within the train network are identified, considering both a topological feature and passenger demand. Subsequently, the network is aggregated based on these important nodes, employing a digital approach to reduce problem complexity. In the second stage, we develop an Integer Programming model for train rescheduling. We then solve this model using the CPLEX solver to evaluate its efficiency. The first case study applies this methodology to the Iranian railway, which is known as a sparse rail network. The results show minimal deviation from the initial train timetable due to the low frequency of trips in each block. Although the approach successfully addresses the train rescheduling problem for various disruption scenarios on the Iranian railway, the excessive computational time required by the optimization model prompts us to make adjustments. Finally, the second case study demonstrates the implementation of the adjusted model in a busy test network. This adaptation significantly reduces computational time by up to 88%. It can be effectively utilized for disruption management in busy networks, where trains need to receive a secondary timetable promptly when facing disruptions.
format Preprint
id arxiv_https___arxiv_org_abs_2411_14671
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Digitalizing Railway Operations: An Optimization-Based Train Rescheduling Model for Urban and Interurban Disrupted Networks
Bafandkar, Shayan
Shafahi, Yousef
Eslami, Alireza
Yazdiani, Alireza
Optimization and Control
This study introduces a novel methodology for managing train network disruptions across the entire rail network, leveraging digital tools and methodologies. The approach involves two stages, taking into account possible and practical features such as allowing trains to occupy opposite tracks and considering infrastructure capacity for train stops. In the first stage, important nodes within the train network are identified, considering both a topological feature and passenger demand. Subsequently, the network is aggregated based on these important nodes, employing a digital approach to reduce problem complexity. In the second stage, we develop an Integer Programming model for train rescheduling. We then solve this model using the CPLEX solver to evaluate its efficiency. The first case study applies this methodology to the Iranian railway, which is known as a sparse rail network. The results show minimal deviation from the initial train timetable due to the low frequency of trips in each block. Although the approach successfully addresses the train rescheduling problem for various disruption scenarios on the Iranian railway, the excessive computational time required by the optimization model prompts us to make adjustments. Finally, the second case study demonstrates the implementation of the adjusted model in a busy test network. This adaptation significantly reduces computational time by up to 88%. It can be effectively utilized for disruption management in busy networks, where trains need to receive a secondary timetable promptly when facing disruptions.
title Digitalizing Railway Operations: An Optimization-Based Train Rescheduling Model for Urban and Interurban Disrupted Networks
topic Optimization and Control
url https://arxiv.org/abs/2411.14671