Unveiling connectivity patterns of railway timetables through complex network theory and Infomap clustering
Unveiling connectivity patterns of railway timetables through complex network theory and Infomap clustering
This paper presents a novel approach to analysing railway timetable connectivity using complex network theory and the Infomap clustering algorithm. By transforming railway timetables into network representations, we examine the connectivity and efficiency of the Norwegian railway system for the timetables of the current 2024 year and for a future timetable of year 2033. We define and apply the Timetable Connectivity Index, a comprehensive measure that evaluates the overall connectivity based on the number of services, travel times, and the hierarchical structure of the network. The analysis is conducted across three distinct network spaces: Stops, Stations, and Changes, with both unweighted and weighted networks. Our results reveal key insights into how infrastructural developments, service frequencies, and travel time adjustments influence network connectivity. The findings provide valuable insights for railway planners and operators, aiming to improve the efficiency and reliability of train networks.
Fabio Lamanna、Michele Prisma、Giorgio Medeossi
Freelance Civil Engineer, Treviso, ItalyTrenolab, Gorizia, ItalyTrenolab, Gorizia, Italy
铁路运输工程
Fabio Lamanna,Michele Prisma,Giorgio Medeossi.Unveiling connectivity patterns of railway timetables through complex network theory and Infomap clustering[EB/OL].(2025-04-12)[2025-04-30].https://arxiv.org/abs/2504.09214.点此复制
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