6533b82bfe1ef96bd128d662

RESEARCH PRODUCT

Digital signal processing for rail monitoring by means of ultrasonic guided waves

I BartoliM CamarataS CocciaP RizzoMarcello Cammarata

subject

Discrete wavelet transformSignal processingEngineeringGuided wave testingbusiness.industryMechanical EngineeringMetals and AlloysWaveletRail inspection Discrete Wavelet Transform Damage Index Laser Ultrasonics Air-coupled Ultrasonic Sensors.Mechanics of MaterialsRobustness (computer science)Rail inspectionMaterials ChemistryElectronic engineeringUltrasonic sensorSettore ICAR/08 - Scienza Delle CostruzionibusinessTelecommunicationsDigital signal processing

description

Recent train accidents have reaffirmed the need for developing rail defect detection systems that are more effective than those used today. One of the recent developments in rail inspection is the use of ultrasonic guided waves (UGWs) and non-contact probing techniques to target transverse-type defects. Besides the obvious advantages of non-contact probing, that include robustness and a potential for large inspection speed, such a system can theoretically detect transverse defects under horizontal shelling or head checks. This paper demonstrates the effectiveness of digital signal processing to enhance the damage detection sensitivity of the non-contact system. The method proposed here combines the advantages of UGW inspection with the outcomes of the Discrete Wavelet Transform (DWT) that is used for extracting robust defect-sensitive features. In particular, the DWT is exploited to de-noise the ultrasonic signals in real-time and generate a set of relevant wavelet coefficients to construct a uni-dimensional damage index. The general framework proposed in this paper is applied to the detection of crack-like and internal defects in a railroad track mock-up built at UCSD. The proposed signal analysis approach is general and is applicable to many other structural monitoring applications using UGWs as the main defect diagnosis tool.

https://doi.org/10.1784/insi.2007.49.6.327