Squat Detection of Railway Switches and Crossings Using Wavelets and Isolation Forest

Sensors (Basel). 2022 Aug 24;22(17):6357. doi: 10.3390/s22176357.

Abstract

Railway switches and crossings (S&Cs) are critical, high-value assets in railway networks. A single failure of such an asset could result in severe network disturbance and considerable economical losses. Squats are common rail surface defects of S&Cs and need to be detected and estimated at an early stage to minimise maintenance costs and increase the reliability of S&Cs. For practicality, installation of wired or wireless sensors along the S&C may not be reliable due to the risk of damages of power and signal cables or sensors. To cope with these issues, this study presents a method for collecting and processing vibration data from an accelerometer installed at the point machine to extract features related to the squat defects of the S&C. An unsupervised anomaly-detection method using the isolation forest algorithm is applied to generate anomaly scores from the features. Important features are ranked and selected. This paper describes the procedure of parameter tuning and presents the achieved anomaly scores. The results show that the proposed method is effective and that the generated anomaly scores indicate the health status of an S&C regarding squat defects.

Keywords: anomaly detection; anomaly score; point machine; railway switch and crossing; squat; unsupervised machine learning; vibration.

MeSH terms

  • Algorithms
  • Forests
  • Railroads*
  • Reproducibility of Results
  • Vibration

Grants and funding

This research received no external funding.