Antoni, J., Bonnardot, F., Raad, A., & El Badaoui M (2004) Cyclostationary modelling of rotating machine vibration signals. Mech Syst Signal Proc 18(6):1285–314.
Antoni, J. (2007). Cyclic spectral analysis of rolling-element bearing signals: facts and fictions. Sound Vib 304:497–529.
Antoni, J. (2009). Cyclostationarity by examples. Mech Syst Signal Proc 23:987–1036.
Boulenger, A, Pachaud, C. et al (1998). Vibratory diagnosis in maintenance préventive. ISBN 2100041053, Dunod, Paris, pp 239-295
Detecting Mixed Gear Faults Using Scalar and Cyclostationary Indicators in an Industrial Settin
In this paper, an innovative approach is presented to enhance gear fault diagnosis using the cyclostationarity method. The first part of this study focuses on simulating gear signals under various conditions, allowing exploration of signal characteristics in vibration measurements. Spectral analyses and statistical calculations are performed to extract both classical and cyclostationary indicators. In the second part, the cyclostationarity method is applied to signals recorded at the gearbox bearings, clearly revealing the presence of faults. The results from these experiments demonstrate that cyclostationarity indicators can be leveraged to improve the prediction of signal roughness during the production process. This approach thus opens up new possibilities to enhance the reliability of vibration measurements and refine gear fault diagnosis.
Antoni, J., Bonnardot, F., Raad, A., & El Badaoui M (2004) Cyclostationary modelling of rotating machine vibration signals. Mech Syst Signal Proc 18(6):1285–314.
Antoni, J. (2007). Cyclic spectral analysis of rolling-element bearing signals: facts and fictions. Sound Vib 304:497–529.
Antoni, J. (2009). Cyclostationarity by examples. Mech Syst Signal Proc 23:987–1036.
Boulenger, A, Pachaud, C. et al (1998). Vibratory diagnosis in maintenance préventive. ISBN 2100041053, Dunod, Paris, pp 239-295
There are 4 citations in total.
Details
Primary Language
English
Subjects
Environmental and Sustainable Processes
Journal Section
Articles
Authors
Kebabsa Tarek
Algeria
Niou Slımane
National Higher School of Technology and EngineeringAlgeria
Tarek, K., Slımane, N., & Mrabtı, A. (2023). Detecting Mixed Gear Faults Using Scalar and Cyclostationary Indicators in an Industrial Settin. The Eurasia Proceedings of Science Technology Engineering and Mathematics, 26, 797-809. https://doi.org/10.55549/epstem.1412692