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Abstract:
Aiming at the characteristics of dense noise sources, cross noise frequency, and non-linearity and non-stationarity of the acoustic signal inside the plunger motor, an improved wavelet packet threshold denoising combined with ensemble empirical modal analysis and Hilbert transform is proposed as the feature signal extraction method. By collecting vibration signals of both fault free and faulty motors under normal operation, constructing a wavelet packet secondary decomposition structure and thresholding to analyze and denoise the collected signals, and then using an improved signal processing method to obtain the true characteristic signal frequency of the plunger motorThe novelty of this study lies in the integration of advanced signal processing techniques to enhance fault detection accuracy by effectively handling noise and extracting characteristic frequencies in complex operational environments. Experimental validation shows that the proposed method effectively enhances the feature extraction of plunger motors, providing a reliable basis for fault diagnosis. © The Author(s) 2025.
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Source :
Noise and Vibration Worldwide
ISSN: 0957-4565
Year: 2025
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