A Preliminary Estimation of Analysis Methods of Vibration Signals at Fault Diagnosis in Ball Bearings
نویسندگان
چکیده
In this paper a preliminary estimation of the most common analysis methods of the vibration signals of a ball bearing is tried. The tested methods are the typical statistic analysis method, the Fourier transform, the frequencies spectrum analysis and the Wavelet method. Further testing under variable and/or radial loads is under investigation by the present research team before a final conclusion can be made.
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