Dealing with disruptions in railway track inspection using risk-based machine learning

Sakdirat Kaewunruen, Mohd Haniff Bin Osman

Research output: Contribution to journalArticlepeer-review

44 Downloads (Pure)

Abstract

Unplanned track inspections can be a direct consequence of any disruption to the operation of on-board track geometry monitoring activities. A novel response strategy to enhance the value of the information for supplementary track measurements is thus established to construct a data generation model. In this model, artificial (synthetic) data is assigned on each measurement point along the affected track segment over a short period of time. To effectively generate artificial track measurement data, this study proposes a NARX (nonlinear autoregressive with exogenous variables) model, which incorporates short-range memory dependencies in the dependent variable and integrates interdependent effects from external factors. Nonlinearities in the proposed model have been determined using an artificial neural network that allowed fast computation of a mapping function in line with the needs of effective disruption management. The risk of over fitting the data generation model, which reflected its generalisation ability, has been effectively managed through risk aversion concept. For the model evaluation, the deviation of track longitudinal level has been taken as a case study, predicted using its degradation rate and track alignment and gauge as exogenous variables. Simulation results on two datasets that are statistically different showed that the data generation model for disrupted track measurements is reliable, accurate, and easy-to-use. This novel model is an essential breakthrough in railway track integrity prediction and resilient operation management.
Original languageEnglish
Article number2141
Number of pages11
JournalScientific Reports
Volume13
Issue number1
DOIs
Publication statusPublished - 7 Feb 2023

Fingerprint

Dive into the research topics of 'Dealing with disruptions in railway track inspection using risk-based machine learning'. Together they form a unique fingerprint.

Cite this