Model-Based Condition Monitoring of Railway Switches and Crossings
Doktorsavhandling, 2024

Railway switches and crossings, often known as S&C or turnouts, enable trains to change track. This operating feature comes at a cost because S&C have rail discontinuities which cause a significant contribution to the dynamic loading and higher degradation rates compared to ordinary plain line track. These higher rates of deterioration present a promising opportunity for implementing condition monitoring systems that have the potential to enhance maintenance decision-making and surpassing the capabilities of periodic inspections conducted by measurement cars or track engineers. This thesis is therefore focused on developing novel processing tools to increase the amount of condition information that can be extracted from sleeper mounted accelerometers using advanced multibody simulation (MBS) models.
The developed condition monitoring framework provides a robust model-based identification of railway ballast support conditions, wheel–rail impact forces, and crossing rail geometrical irregularities, as well as closed form condition indicators computed directly from measurement signals. The presented analysis algorithms demonstrate resilience in handling extensive datasets, with the total acceleration database used for this thesis consisting of around three years of remote field recordings for eight crossing panels.
An essential signal processing technique presented in this thesis is an innovative method for reconstructing sleeper displacement. It relies on integrating acceleration in the frequency domain and using band-pass-based functions for detrending baseline distortion. Using these track displacements, an approach is demonstrated for independently observing the sleeper support conditions and the geometry of the crossing rail from a single measurement source by separating measured displacement into dynamic and quasi-static domains based on two distinctly determined track response wavelength domains.
The MBS investigations carried out in this thesis demonstrate a robust link between the condition of the crossing rail geometry, the contact force between the wheel and rail, and the proposed condition indicators that have been established based on the dynamic track responses. The MBS
models serve as a basis for developing a procedure based on the Green's Kernel Function Method (GKFM) for an inverse identification of vertical wheel–rail contact forces and crossing rail geometry from measured sleeper accelerations. Additionally, this thesis demonstrates the possibility of determining ballast stiffness properties without prior knowledge of the crossing geometry, thus actually enabling the use of GKFM for inverse identification of wheel–rail contact force and crossing rail geometrical irregularity in a crossing panel equipped with a single sleeper mounted accelerometer.
In addition to measured sleeper accelerations, the geometry of the running surface of six crossings have been measured in situ using a laser scanner. These geometries have, together with measured wheel profiles, been implemented in the MBS models to account for a range of operating conditions.

MBS

wheel–rail contact forces

condition monitoring

inverse force identification

crossing rail geometry

GKFM

condition indicators

Green's Kernel Function Method

embedded sleeper accelerometer

Switches & crossings

multi-body simulations

displacement reconstruction

Green’s functions

S&C

Lecture Hall HB2, Hörsalsvägen 8, Campus Johannberg, Chalmers
Opponent: Professor Luis Baeza, Technical University of Valencia

Författare

Marko Milosevic

Chalmers, Mekanik och maritima vetenskaper, Dynamik

On tailored signal processing tools for operational condition monitoring of railway switches and crossings

Proceedings of ISMA 2020 - International Conference on Noise and Vibration Engineering and USD 2020 - International Conference on Uncertainty in Structural Dynamics,; (2020)p. 2639-2653

Paper i proceeding

Reconstruction of sleeper displacements from measured accelerations for model-based condition monitoring of railway crossing panels

Mechanical Systems and Signal Processing,; Vol. 192(2023)

Artikel i vetenskaplig tidskrift

Demonstration of a Digital Twin Framework for Model-Based Operational Condition Monitoring of Crossing Panels

Lecture Notes in Mechanical Engineering,; (2022)p. 95-105

Paper i proceeding

Model-Based Remote Health Monitoring of Ballast Conditions in Railway Crossing Panels

Lecture Notes in Civil Engineering,; Vol. 253 LNCE(2023)p. 502-512

Paper i proceeding

Marko D.G. Milošević, Björn A. Pålsson, Arne Nissen, Jens C.O. Nielsen, and Håkan Johansson, Inverse wheel–rail contact force and crossing irregularity identification from measured sleeper accelerations – A model-based Green’s function approach, submitted for publication in Journal of Sound and Vibration, 2024, 34 pages

Railway transportation is a very energy-efficient form of vehicle transportation with low environmental impact, thus investments in it is a step towards a more sustainable society. One particularly vulnerable part of a railway network is called switches & crossings (S&C, turnouts). The S&C switch trains from one track to another and this operation comes at a cost since S&C features load-inducing rail discontinuities that cause much larger deterioration rates compared to regular plain line tracks. These high deterioration rates of S&C are the reason why railway infrastructure managers spend from tens to hundreds of millions of Euros annually on their maintenance, and there are hundreds of thousands of S&C only in European railway networks.
This thesis shows that with the use of a single remote accelerometer permanently installed in the track, Fourier transform for signal processing, Timoshenko beam theory and Winkler foundation for a mechanical model, and second and third Newton law for multi-body forces interaction, it is possible to extract S&C condition information.
The thesis findings provide a promising opportunity for developing condition monitoring systems that have the potential to enhance maintenance decision-making, surpassing the capabilities of periodic manual inspections which is current practice for S&C condition monitoring.

In2Track-2 (CHARMEC EU19)

Trafikverket, 2018-11-01 -- 2021-10-31.

Europeiska kommissionen (EU) (EC/H2020/826255), 2018-11-01 -- 2021-10-31.

Ämneskategorier

Infrastrukturteknik

Tillförlitlighets- och kvalitetsteknik

Farkostteknik

ISBN

978-91-8103-036-5

Utgivare

Chalmers

Lecture Hall HB2, Hörsalsvägen 8, Campus Johannberg, Chalmers

Online

Opponent: Professor Luis Baeza, Technical University of Valencia

Mer information

Senast uppdaterat

2024-05-08