Damage Identification of Turnout Rail through a Covariance-Based Condition Index and Quantitative Pattern Analysis

Author:

Wang Jun-Fang1ORCID,Lin Jian-Fu2,Xie Yan-Long1

Affiliation:

1. National Key Laboratory of Green and Long-life Road Engineering in Extreme Environment, College of Civil and Transportation Engineering, Shenzhen University, Shenzhen 518060, China

2. Center of Safety Monitoring of Engineering Structures, Shenzhen Academy of Disaster Prevention and Reduction, China Earthquake Administration, Shenzhen 518003, China

Abstract

Subjected to complex loadings from the wheel–rail interaction, turnout rail is prone to crack damage. This paper aims to develop a condition evaluation method for crack-alike damage detection of in-service turnout rail. A covariance-based structural condition index (CI) is firstly constructed by fusing the time-frequency components of responses, generating a series of patterns governed by the interrelationships between column members in the CI matrix. The damage-sensitive interrelationships latent in CI are then modeled using Bayesian regression and historical data, and baseline patterns are built with predictions of the models and new inputs. The deviations between the baseline patterns and the actual patterns of the newly observed CI members are quantitatively assessed. To synthetically consider the individual assessment results, a technique is developed to combine the individual assessment results into one synthetic result by designing a group of suitable weights taking into consideration both probabilistic confidence and reference model error. If the deviations are within a tolerable range, no damage is flagged; otherwise, damage existence and severity are reported. A case study is conducted, in which monitoring data from the database of a railway turnout are applied to build the CI matrix and examine the damage identification performance of this method. Good agreement between actual conditions and assessment results is found in different testing scenarios in the case study, demonstrating the effectiveness of the proposed method.

Funder

National Natural Science Foundation of China

Guangdong Major Talent Program

Shenzhen Science and Technology Program

Shenzhen Sustainable Development Science and Technology Project

China Earthquake Administration’s Science for Earthquake Resilience Project

Shenzhen Key Laboratory of Structure Safety and Health Monitoring of Marine Infrastructures

Publisher

MDPI AG

Subject

Computer Science Applications,Geotechnical Engineering and Engineering Geology,General Materials Science,Building and Construction,Civil and Structural Engineering

Reference49 articles.

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2. Identification of appropriate risk analysis techniques for railway turnout systems;Dindar;J. Risk Res.,2016

3. Pombo, J., and Jing, G. (2018). GeoMEast 2017: Recent Developments in Railway Track and Transportation Engineering, Proceedings of the International Congress and Exhibition “Sustainable Civil Infrastructures: Innovative Infrastructure Geotechnology”, Sharm El–Sheikh, Egypt, 11–15 November 2017, Springer.

4. Analysis of causes of major train derailment and their effect on accident rates;Liu;Transp. Res. Rec.,2012

5. (2009). Track Safety Standards. Standard No. 49 CFR Part 213.

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