Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD

There are abundant of fault information in rotating machinery vibration signal. On account of the nonlinearity and non-stationarity, the paper first does pre-process to the vibration signal using wavelet threshold denoising method and this method can bring a smooth signal. Then it decomposes the vib...

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Main Authors: Bo Ruirui, Zhang Ze
Format: Article
Language:English
Published: EDP Sciences 2016-01-01
Series:MATEC Web of Conferences
Subjects:
Online Access:http://dx.doi.org/10.1051/matecconf/20165410002
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author Bo Ruirui
Zhang Ze
author_facet Bo Ruirui
Zhang Ze
author_sort Bo Ruirui
collection DOAJ
description There are abundant of fault information in rotating machinery vibration signal. On account of the nonlinearity and non-stationarity, the paper first does pre-process to the vibration signal using wavelet threshold denoising method and this method can bring a smooth signal. Then it decomposes the vibration signal using local mean decomposition(LMD), which is effective to the vibration signal. The LMD decomposes the signal into many PFs as the frequency from high to low. These PFs are composed of the production of envelop signal and pure frequency modulated signal. Finally, it takes most use of the kurtosis which is sensitive to the fault impact. By calculating the kurtosis of PF, it can assess the distribution of fault impact signal in every frequency band, consequently distinguishing the operating state of bearing and recognizing the fault mode according to the growth of turtosis. The experiment of actual bearing vibration signal demonstrates that the methods this paper proposed can effectively diagnose the vibration fault and has good performance.
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spelling doaj.art-7c0ddb97791140218853cefec00da7722022-12-21T18:32:19ZengEDP SciencesMATEC Web of Conferences2261-236X2016-01-01541000210.1051/matecconf/20165410002matecconf_mimt2016_10002Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMDBo RuiruiZhang ZeThere are abundant of fault information in rotating machinery vibration signal. On account of the nonlinearity and non-stationarity, the paper first does pre-process to the vibration signal using wavelet threshold denoising method and this method can bring a smooth signal. Then it decomposes the vibration signal using local mean decomposition(LMD), which is effective to the vibration signal. The LMD decomposes the signal into many PFs as the frequency from high to low. These PFs are composed of the production of envelop signal and pure frequency modulated signal. Finally, it takes most use of the kurtosis which is sensitive to the fault impact. By calculating the kurtosis of PF, it can assess the distribution of fault impact signal in every frequency band, consequently distinguishing the operating state of bearing and recognizing the fault mode according to the growth of turtosis. The experiment of actual bearing vibration signal demonstrates that the methods this paper proposed can effectively diagnose the vibration fault and has good performance.http://dx.doi.org/10.1051/matecconf/20165410002lmdwavelet threshold methodkurtosisfault diagnosis
spellingShingle Bo Ruirui
Zhang Ze
Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD
MATEC Web of Conferences
lmd
wavelet threshold method
kurtosis
fault diagnosis
title Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD
title_full Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD
title_fullStr Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD
title_full_unstemmed Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD
title_short Rotating Machinery Vibration Signal Processing And Fault Diagnosis Based on LMD
title_sort rotating machinery vibration signal processing and fault diagnosis based on lmd
topic lmd
wavelet threshold method
kurtosis
fault diagnosis
url http://dx.doi.org/10.1051/matecconf/20165410002
work_keys_str_mv AT boruirui rotatingmachineryvibrationsignalprocessingandfaultdiagnosisbasedonlmd
AT zhangze rotatingmachineryvibrationsignalprocessingandfaultdiagnosisbasedonlmd