A data-driven approach for quantifying the resilience of railway networks
Document Type
Journal Article
Publication Date
2024
Subject Area
place - europe, mode - rail, planning - methods
Keywords
Railways, Resilience, Bathtub model, Disruption management, Data-driven, ANOVA
Abstract
Disruptions occur frequently in railway networks, requiring timetable adjustments, while causing serious delays and cancellations. However, little is known about the performance dynamics during disruptions nor the extent to which the resilience curve applies in practice. This paper presents a data-driven quantification approach for an ex-post assessment of the resilience of railway networks. Using historical traffic realization data in the Netherlands, resilience curves are reconstructed using a new composite indicator, and quantified for a large set of single disruptions. The values of the resilience metrics are compared across disruptions of different causes using Welch’s ANOVA and the Games-Howell test. Additionally, representative resilience curves for each disruption cause are determined. Results show a significant heterogeneity in the shape of the resilience curves, even within disruptions of the same cause. The proposed approach represents a useful decision support tool for practitioners to assess disruptions dynamics and propose best measures to improve resilience.
Rights
Permission to publish the abstract has been given by Elsevier, copyright remains with them.
Recommended Citation
Knoester, M. J., Bešinović, N., Afghari, A. P., Goverde, R. M., & van Egmond, J. (2024). A data-driven approach for quantifying the resilience of railway networks. Transportation Research Part A: Policy and Practice, 179, 103913.
Comments
Transportation Research Part A Home Page:
http://www.sciencedirect.com/science/journal/09658564