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Main Authors: Stratil-Sauer, Nikolaus, Breyer, Nils
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.17479
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author Stratil-Sauer, Nikolaus
Breyer, Nils
author_facet Stratil-Sauer, Nikolaus
Breyer, Nils
contents Reliability plays a key role in the experience of a rail traveler. The reliability of journeys involving transfers is affected by the reliability of the transfers and the consequences of missing a transfer, as well as the possible delay of the train used to reach the destination. In this paper, we propose a flexible method to model the reliability of train journeys with any number of transfers. The method combines a transfer reliability model based on gradient boosting responsible for predicting the reliability of transfers between trains and a delay model based on probabilistic Bayesian regression, which is used to model train arrival delays. The models are trained on delay data from four Swedish train stations and evaluated on delay data from another two stations, in order to evaluate the generalization performance of the models. We show that the probabilistic delay model, which models train delays following a mixture distribution with two lognormal components, allows to much more realistically model the distribution of actual train delays compared to a standard lognormal model. Finally, we show how these models can be used together to sample the arrival delay at the final destination of the entire journey. The results indicate that the method accurately predicts the reliability for nine out of ten tested journeys. The method could be used to improve journey planners by providing reliability information to travelers. Further applications include timetable planning and transport modeling.
format Preprint
id arxiv_https___arxiv_org_abs_2504_17479
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Probabilistic modeling of delays for train journeys with transfers
Stratil-Sauer, Nikolaus
Breyer, Nils
Applications
Reliability plays a key role in the experience of a rail traveler. The reliability of journeys involving transfers is affected by the reliability of the transfers and the consequences of missing a transfer, as well as the possible delay of the train used to reach the destination. In this paper, we propose a flexible method to model the reliability of train journeys with any number of transfers. The method combines a transfer reliability model based on gradient boosting responsible for predicting the reliability of transfers between trains and a delay model based on probabilistic Bayesian regression, which is used to model train arrival delays. The models are trained on delay data from four Swedish train stations and evaluated on delay data from another two stations, in order to evaluate the generalization performance of the models. We show that the probabilistic delay model, which models train delays following a mixture distribution with two lognormal components, allows to much more realistically model the distribution of actual train delays compared to a standard lognormal model. Finally, we show how these models can be used together to sample the arrival delay at the final destination of the entire journey. The results indicate that the method accurately predicts the reliability for nine out of ten tested journeys. The method could be used to improve journey planners by providing reliability information to travelers. Further applications include timetable planning and transport modeling.
title Probabilistic modeling of delays for train journeys with transfers
topic Applications
url https://arxiv.org/abs/2504.17479