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Rail defect diagnosis using wavelet packet decomposition

One of the basic tasks in railway maintenance is inspection of the rail in order to detect defects. Rail defects have different properties and are divided into various categories with regard to the type and position of defects on the rail. This paper presents an approach for the detection of defects...

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Published in:IEEE transactions on industry applications 2003-09, Vol.39 (5), p.1454-1461
Main Authors: Toliyat, H.A., Abbaszadeh, K., Rahimian, M.M., Olson, L.E.
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Language:English
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cited_by cdi_FETCH-LOGICAL-c380t-2d57ec96fb75a2d83a73d3faf15e43cdbcaeb839a96fed72855eb1f4268744793
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container_title IEEE transactions on industry applications
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creator Toliyat, H.A.
Abbaszadeh, K.
Rahimian, M.M.
Olson, L.E.
description One of the basic tasks in railway maintenance is inspection of the rail in order to detect defects. Rail defects have different properties and are divided into various categories with regard to the type and position of defects on the rail. This paper presents an approach for the detection of defects in rail based on wavelet transformation. Multiresolution signal decomposition based on wavelet transform or wavelet packet provides a set of decomposed signals at distinct frequency bands, which contains independent dynamic information due to the orthogonality of wavelet functions. Wavelet transform and wavelet packet in tandem with various signal processing methods, such as autoregressive spectrum, energy monitoring, fractal dimension, etc., can produce desirable results for condition monitoring and fault diagnosis. Defect detection is based on decomposition of the signal acquired by means of magnetic coil and Hall sensors from the railroad rail, and then applying wavelet coefficients to the extracted signals. Comparing these extracted coefficients provides an indication of the healthy rail from defective rail. Experimental results are presented for healthy rail and some of the more common defects. Deviation of wavelet coefficients in the healthy rail case from the case with defects shows that it is possible to classify healthy rails from defective ones.
doi_str_mv 10.1109/TIA.2003.816474
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subjects Categories
Condition monitoring
Decomposition
Defects
Deviation
Energy resolution
Fault diagnosis
Frequency
Inspection
Rail transportation
Railroads
Rails
Signal processing
Signal resolution
Studies
Wavelet
Wavelet coefficients
Wavelet packets
Wavelet transforms
title Rail defect diagnosis using wavelet packet decomposition
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