Railway Axle Early Fatigue Crack Detection through Condition Monitoring Techniques

Author:

Gomez María Jesús1ORCID,Castejon Cristina1ORCID,Corral Eduardo1ORCID,Cocconcelli Marco2ORCID

Affiliation:

1. Mechanical Engineering Department, Avenida de la Universidad 30, 28982 Madrid, Spain

2. Department of Sciences and Methods for Engineering, University of Modena and Reggio Emilia, Via G. Amendola 2, 42124 Reggio Emilia, Italy

Abstract

The detection of cracks in rotating machinery is an unresolved issue today. In this work, a methodology for condition monitoring of railway axles is presented, based on crack detection by means of the automatic selection of patterns from the vibration signal measurement. The time waveforms were processed using the Wavelet Packet Transform, and appropriate alarm values for diagnosis were calculated automatically using non-supervised learning techniques based on Change Point Analysis algorithms. The validation was performed using vibration signals obtained during fatigue tests of two identical railway axle specimens, one of which cracked during the test while the other did not. During the test in which the axle cracked, the results show trend changes in the energy of the vibration signal associated with theoretical defect frequencies, which were particularly evident in the direction of vibration that was parallel to the track. These results are contrasted with those obtained during the test in which the fatigue limit was not exceeded, and the test therefore ended with the axle intact, verifying that the effects that were related to the crack did not appear in this case. With the results obtained, an adjusted alarm value for a condition monitoring process was established.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference55 articles.

1. Crack Identification in Beams Using Wavelet Analysis;Douka;Int. J. Solids Struct.,2003

2. Akgun, M., Paez, T.L., and Ju, F.D. (1985, January 28–31). Transmissibility as a means to diagnose damage in structures. Proceedings of the 3rd International Modal Analysis Conference, New York, NY, USA.

3. Cracked shaft detection and diagnostics: A literature review;Sabnavis;Shock Vib. Dig.,2004

4. Guinchard, M., Cabon, M., Charrondière, C., Develle, K., Fessia, P., Lacny, L., Osborne, J., Scislo, L., and Wenninger, J. (2018, January 4). Investigation and Estimation of the LHC Magnet Vibrations Induced by HL-LHC Civil Engineering Activities. Proceedings of the 9th International Particle Accelerator Conference (IPAC’18), Vancouver, BC, Canada.

5. Guinchard, M., and Scislo, L. (2019, January 7–11). Source based measurements and monitoring of ground motion conditions during civil engineering works for high luminosity upgrade of the LHC. Proceedings of the 26th International Congress on Sound and Vibration, ICSV 2019, Montreal, QC, Canada.

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