A Review of NDT Methods for Wheel Burn Detection on Rails
Abstract
:1. Introduction
1.1. The Characteristics and Causes of Wheel Burn
1.2. The Mechanism of Formation and Crack Extension of the White Etching Layer
2. Electromagnetic Testing
2.1. Magnetic Flux Leakage Testing
2.2. Magnetic Barkhausen Noise Testing
2.3. Eddy Current Testing
3. Acoustic Emission Testing
4. Visual Inspection
4.1. Infrared Thermography Inspection
4.2. Automatic Visual Testing
- The RSIS system developed by ENSCO in the United States uses the line scanning imaging method to collect and record continuous high-resolution track surface images from moving vehicles, and can successfully identify spalling, cracks, squats, wheel burns, etc.;
- The V-CUBE rail vision inspection system developed by the MERMEC Company in Italy can obtain images and inspection data of up to 50 types of defects of rail surfaces, fasteners, sleepers, and ballast beds at a speed of 200 km/h;
- The RailCheck system developed by the bvSys Company in Germany uses an industrial linear scanning camera and high-powered LED light to inspect rail surfaces, fasteners, sleepers, turnouts, and other structures at a speed of 200 km/h.
5. Axle Box Acceleration Measurement
6. Summary and Perspective
- Initially, the wheel burns appear as an elliptical or strip-shaped white etching layer with or without deformation on the running surface of the rails. In the latter stages of development, they may cause cracks, spalling, etc. Three main mechanisms of WEL formation have been proposed by scholars: Thermal-induced, plastic deformation-induced, and thermomechanical-induced mechanisms. The thermomechanical-deformation-induced mechanism is the most likely;
- Four main types of rail defect detection methods can be used to achieve wheel burn detection. They are electromagnetic, acoustic, visual, and axle box acceleration detection methods. Among them, magnetic flux leakage testing, magnetic Barkhausen noise testing, and eddy current testing can identify wheel burn at an early stage according to the different magnetic permeability and conductivity caused by the white etching layer. Acoustic emission testing takes advantage of the brittleness of the white etching layer to identify wheel burn at an early stage. Infrared thermography testing utilizes the difference in thermal diffusivity between WEL and the rail matrix to identify wheel burn at an early stage. When the WEL is developed, these methods can also detect near-surface cracks, but more research is needed for the fast detection and automatic identification of wheel burn. Automatic visual testing is not able to see through rails; white etching layer, surface cracks, spalling, indentation can be identified, but the depth of rail defects cannot be measured. Axle box acceleration measurement can detect severe wheel burn with plastic deformation and spalling developed from wheel burn.
- Improve the accuracy of individual inspection methods. Enhance the accuracy, repeatability, and speed of existing detection methods for wheel burn. For instance, research can focus on improving the sensitivity, resolution, and inspection speed of electromagnetic and visual testing techniques for wheel burn detection; research can also focus on improving the sensitivity of acoustic emission testing techniques for wheel burn monitoring.
- Integrate multiple inspection methods. Combine different non-destructive testing techniques to enhance the accuracy of detecting various types of wheel burn. For example, integrating electromagnetic testing, visual testing, and axle box acceleration measurement can provide a more detailed assessment of wheel burn at different stages and can be mutually verified by each other. Acoustic emission testing can be used to monitor the long-term development of wheel burn.
- Conduct theoretical research and experimental validation: Utilize finite element analysis and other methods to study the formation mechanism and crack extension of wheel burns. Further theoretical research and experimental validation are needed to gain a deeper understanding of these processes.
- Conduct wheel burn identification and classification research: Utilize statistical approaches and neural network methods to achieve automatic identification and classification of wheel burn. Multi-source data fusion analysis is worth studying to increase the detectability rate of wheel burn.
- Address challenges in implementing NDT techniques on railways: Overcome challenges associated with implementing NDT techniques in the railway industry, such as the requirement for specialized equipment and trained personnel. Collaboration among researchers, industry professionals, and regulatory bodies is necessary to develop standardized procedures for NDT testing on railways.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Zhang, Y.; Liu, X.; Xiong, L.; Chen, Z.; Wei, J. A Review of NDT Methods for Wheel Burn Detection on Rails. Sensors 2023, 23, 5240. https://doi.org/10.3390/s23115240
Zhang Y, Liu X, Xiong L, Chen Z, Wei J. A Review of NDT Methods for Wheel Burn Detection on Rails. Sensors. 2023; 23(11):5240. https://doi.org/10.3390/s23115240
Chicago/Turabian StyleZhang, Yanbo, Xiubo Liu, Longhui Xiong, Zhuo Chen, and Jianmei Wei. 2023. "A Review of NDT Methods for Wheel Burn Detection on Rails" Sensors 23, no. 11: 5240. https://doi.org/10.3390/s23115240
APA StyleZhang, Y., Liu, X., Xiong, L., Chen, Z., & Wei, J. (2023). A Review of NDT Methods for Wheel Burn Detection on Rails. Sensors, 23(11), 5240. https://doi.org/10.3390/s23115240