Title of article :
Using Wavelet Support Vector Machine for Fault Diagnosis of Gearboxes
Author/Authors :
Heidari, Mohammad Department of Mechanical Engineering - Aligudarz Branch - Islamic Azad University, Aligudarz
Abstract :
Identifying fault categories, especially for compound faults, is a challenging task in mechanical fault
diagnosis. For this task, this paper proposes a novel intelligent method based on wavelet packet transform
(WPT) and multiple classifier fusion. An unexpected damage on the gearbox may break the whole
transmission line down. It is therefore crucial for engineers and researchers to monitor the health condition
of the gearbox in a timely manner to eliminate the impending faults. However, useful fault detection
information is often submerged in heavy background noise. The non-stationary vibration signals were
analyzed to reveal the operation state of the gearbox. The proposed method is applied to the fault diagnosis
of gears and bearings in the gearbox. The diagnosis results show that the proposed method is able to reliably
identify the different fault categories which include both single fault and compound faults, which has a better
classification performance compared to any one of the individual classifiers. The vibration dataset is used
from a test rig in Shahrekord University and a gearbox from Sepahan Cement. Eventually, the gearbox faults
are classified using these statistical features as input to WSVM.
Keywords :
gearbox , fault diagnosis , wavelet , support vector machine
Journal title :
Astroparticle Physics