International Journal of Computational Intelligence Systems (Dec 2011)

A Novel Description Method for Track Irregularity Evolution

  • Peng Xu,
  • Rengkui Liu,
  • Futian Wang,
  • Quanxin Sun,
  • Hualiang Teng

DOI
https://doi.org/10.2991/ijcis.2011.4.6.29
Journal volume & issue
Vol. 4, no. 6

Abstract

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Track Irregularity has a significant influence on the safety of train operation. Due to the fact that the extremely large number of factors affect track irregularity it is challenging to find a concise yet effective mathematical method to describe the evolution of track irregularity. In this paper, inspection data generated by GJ-4 track inspection cars from Jinan Railway Bureau in China were analyzed to identify the characteristics of track irregularity changes common to different mileage points. Based on these characteristics, a multi-stage linear fitting model to describe the pattern of track irregularity evolution over time was developed. The availability of new inspection data will make the model revise itself. In this sense, the model is a machine learning model. Finally, inspection data from the Beijing-Shanghai Railway Line (Jing-Hu Line) were used to verify the model.

Keywords