A segmental evaluation model for determining residual rail service life based on a discrete-state conditional probabilistic method

Author:

Bai Wenfei1,Sun Quanxin2,Wang Futian1,Liu Rengkui1,An Ru1

Affiliation:

1. State Key Laboratory of Rail Traffic Control and Safety, Beijing Jiaotong University, Beijing, China

2. MOE Key Laboratory for Urban Transportation Complex Systems Theory and Technology, Beijing Jiaotong University, Beijing, China

Abstract

Because steel rail is one of the most fundamental components of railway operations, the accurate estimation of residual rail service life is of great significance in ensuring the safe operation of railways. In addition, maintenance expenses must be minimized in a manner that allows limited railroad resources to be optimally allotted. In this study, the typical types of continuous rail segments on a rail line are classified into non-sharply curved rail segments and sharply curved rail segments. Using these classifications, a model for estimating the residual service lives of rail segments using a discrete-state conditional probability method is proposed based on an analysis of rail deterioration characteristics. The model considers several heterogeneous factors to determine their influence on the deterioration process and is shown to be capable of estimating the residual service lives of rail segments. Finally, the model is validated through a case study of the Beijing Metro, using inspection records of rail defects in conjunction with heterogeneous factor data to predict the service life of the rail, which is then compared with its actual service life. The model is found to show good agreement with the rail inspection and maintenance records of the Beijing Metro, indicating its appropriateness for use by railroad management in allocating future rail maintenance resources.

Funder

State Key Laboratory of Rail Traffic Control and Safety of Beijing Jiaotong University

National Natural Science Foundation of China

Publisher

SAGE Publications

Subject

Safety, Risk, Reliability and Quality

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1. A rail service life prediction model based on BP neural network;Seventh International Conference on Traffic Engineering and Transportation System (ICTETS 2023);2024-02-20

2. Heterogeneity‐oriented ensemble learning for rail monitoring based on vehicle‐body vibration;Computer-Aided Civil and Infrastructure Engineering;2023-12-28

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5. Prediction of rail defect development using parametric bootstrapping modified Weibull equations;Proceedings of the Institution of Mechanical Engineers, Part F: Journal of Rail and Rapid Transit;2021-05-29

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