A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing

Rolling bearing is one of the most crucial components in rotating machinery and due to their critical role, it is of great importance to monitor their operation conditions. However, due to the background noise in acquired signals, it is not always possible to identify probable faults. Therefore, sig...

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Main Authors: Jun Ma, Jiande Wu, Xiaodong Wang
Format: Article
Language:English
Published: SAGE Publishing 2018-12-01
Series:Journal of Low Frequency Noise, Vibration and Active Control
Online Access:https://doi.org/10.1177/1461348418765973
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spelling doaj-3793f327add94a7dae260febbd4abe562020-11-25T03:03:22ZengSAGE PublishingJournal of Low Frequency Noise, Vibration and Active Control1461-34842048-40462018-12-013710.1177/1461348418765973A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearingJun MaJiande WuXiaodong WangRolling bearing is one of the most crucial components in rotating machinery and due to their critical role, it is of great importance to monitor their operation conditions. However, due to the background noise in acquired signals, it is not always possible to identify probable faults. Therefore, signal denoising preprocessing has become an essential part of condition monitoring and fault diagnosis. In the present study, a hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing is proposed. First, as a denoising preprocessing method, singular value difference spectrum denoising is applied to reduce the noise of the bearing vibration signal and improve the signal-to-noise ratio. Then, local mean decomposition method is used to decompose the denoised signals into several product functions. And product functions corresponding to the fault feature are selected according to the correlation coefficient criterion. Finally, Teager energy spectrum is analyzed by applying the Teager energy operator to the constructed amplitude modulation component. The proposed method is successfully applied to analyze the vibration signals collected from an experimental motive rolling bearing and rolling bearing of the self-made rotor experimental platform. The experimental results demonstrate that the proposed singular value difference spectrum denoising and local mean decomposition method can achieve fairly or slightly better performance than the normal local mean decomposition-Teager energy operator method, fast kurtogram, and the wavelet denoising and local mean decomposition method.https://doi.org/10.1177/1461348418765973
collection DOAJ
language English
format Article
sources DOAJ
author Jun Ma
Jiande Wu
Xiaodong Wang
spellingShingle Jun Ma
Jiande Wu
Xiaodong Wang
A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
Journal of Low Frequency Noise, Vibration and Active Control
author_facet Jun Ma
Jiande Wu
Xiaodong Wang
author_sort Jun Ma
title A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
title_short A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
title_full A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
title_fullStr A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
title_full_unstemmed A hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
title_sort hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing
publisher SAGE Publishing
series Journal of Low Frequency Noise, Vibration and Active Control
issn 1461-3484
2048-4046
publishDate 2018-12-01
description Rolling bearing is one of the most crucial components in rotating machinery and due to their critical role, it is of great importance to monitor their operation conditions. However, due to the background noise in acquired signals, it is not always possible to identify probable faults. Therefore, signal denoising preprocessing has become an essential part of condition monitoring and fault diagnosis. In the present study, a hybrid fault diagnosis method based on singular value difference spectrum denoising and local mean decomposition for rolling bearing is proposed. First, as a denoising preprocessing method, singular value difference spectrum denoising is applied to reduce the noise of the bearing vibration signal and improve the signal-to-noise ratio. Then, local mean decomposition method is used to decompose the denoised signals into several product functions. And product functions corresponding to the fault feature are selected according to the correlation coefficient criterion. Finally, Teager energy spectrum is analyzed by applying the Teager energy operator to the constructed amplitude modulation component. The proposed method is successfully applied to analyze the vibration signals collected from an experimental motive rolling bearing and rolling bearing of the self-made rotor experimental platform. The experimental results demonstrate that the proposed singular value difference spectrum denoising and local mean decomposition method can achieve fairly or slightly better performance than the normal local mean decomposition-Teager energy operator method, fast kurtogram, and the wavelet denoising and local mean decomposition method.
url https://doi.org/10.1177/1461348418765973
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