Gearbox Fault Detection through PSO Exact Wavelet Analysis and SVM Classifier
Amir Hosein Zamanian, Abdolreza Ohadi

TL;DR
This paper introduces a PSO-optimized Exact Wavelet Analysis method for gearbox fault detection, improving feature extraction over traditional CWT and demonstrating high classification accuracy with SVM.
Contribution
It presents a novel PSO-based Exact Wavelet Analysis technique for gearbox fault detection, enhancing feature extraction and classification performance.
Findings
PSO Exact Wavelet outperforms CWT in feature extraction.
The method shows better speed than GA-based wavelet analysis.
SVM classifier achieves high accuracy in fault detection.
Abstract
Time-frequency methods for vibration-based gearbox faults detection have been considered the most efficient method. Among these methods, continuous wavelet transform (CWT) as one of the best time-frequency method has been used for both stationary and transitory signals. Some deficiencies of CWT are problem of overlapping and distortion ofsignals. In this condition, a large amount of redundant information exists so that it may cause false alarm or misinterpretation of the operator. In this paper a modified method called Exact Wavelet Analysis is used to minimize the effects of overlapping and distortion in case of gearbox faults. To implement exact wavelet analysis, Particle Swarm Optimization (PSO) algorithm has been used for this purpose. This method have been implemented for the acceleration signals from 2D acceleration sensor acquired by Advantech PCI-1710 card from a gearbox test…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Support Vector Machine
