Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction

Aiming at fault diagnosis problems caused by complex machinery parts, serious background noises and the application limitations of traditional blind signal processing algorithm to the mechanical acoustic signal processing, a failure acoustic diagnosis based on reference signal frequency domain semi-...

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Main Authors: Zeguang YI, Nan PAN, Feng LIU
Format: Article
Language:zho
Published: Hebei University of Science and Technology 2015-08-01
Series:Journal of Hebei University of Science and Technology
Subjects:
Online Access:http://xuebao.hebust.edu.cn/hbkjdx/ch/reader/create_pdf.aspx?file_no=b201504003&flag=1&journal_
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spelling doaj-c17d9ac1540e4529b3bb329ccc55a4192020-11-24T21:14:34ZzhoHebei University of Science and TechnologyJournal of Hebei University of Science and Technology1008-15422015-08-0136435135810.7535/hbkd.2015yx04003b201504003Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extractionZeguang YI0Nan PAN1Feng LIU2Faculty of Mechanical & Electrical Engineering, Kunming University of Science and Technology, Kunming, Yunnan 650500, ChinaFaculty of Mechanical & Electrical Engineering, Kunming University of Science and Technology, Kunming, Yunnan 650500, ChinaFaculty of Mechanical & Electrical Engineering, Kunming University of Science and Technology, Kunming, Yunnan 650500, ChinaAiming at fault diagnosis problems caused by complex machinery parts, serious background noises and the application limitations of traditional blind signal processing algorithm to the mechanical acoustic signal processing, a failure acoustic diagnosis based on reference signal frequency domain semi-blind extraction is proposed. Key technologies are introduced: Based on frequency-domain blind deconvolution algorithm, the artificial fish swarm algorithm which is good for global optimization is used to construct improved multi-scale morphological filters which is applicable to mechanical failure in order to weaken the background noises; combining the structural parameters of parts to build a reference signal, complex components blind separation is carried out on the signals after noise reduction paragraph by paragraph by reference signal unit semi-blind extraction algorithm; then the improved KL-distance of complex independent components is employed as distance measure to resolve the permutation, and finally the mechanical fault characteristic signals are extracted and separated. The actual acoustic diagnosis of rolling bearing fault in sound field environment results proves the effectiveness of this algorithm.http://xuebao.hebust.edu.cn/hbkjdx/ch/reader/create_pdf.aspx?file_no=b201504003&flag=1&journal_algorithm theoryreference signal constraintsfrequency-domain semi-blind extractionartificial fish swarm algorithmacoustic diagnosis
collection DOAJ
language zho
format Article
sources DOAJ
author Zeguang YI
Nan PAN
Feng LIU
spellingShingle Zeguang YI
Nan PAN
Feng LIU
Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
Journal of Hebei University of Science and Technology
algorithm theory
reference signal constraints
frequency-domain semi-blind extraction
artificial fish swarm algorithm
acoustic diagnosis
author_facet Zeguang YI
Nan PAN
Feng LIU
author_sort Zeguang YI
title Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
title_short Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
title_full Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
title_fullStr Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
title_full_unstemmed Acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
title_sort acoustic diagnosis of mechanical fault feature based on reference signal frequency domain semi-blind extraction
publisher Hebei University of Science and Technology
series Journal of Hebei University of Science and Technology
issn 1008-1542
publishDate 2015-08-01
description Aiming at fault diagnosis problems caused by complex machinery parts, serious background noises and the application limitations of traditional blind signal processing algorithm to the mechanical acoustic signal processing, a failure acoustic diagnosis based on reference signal frequency domain semi-blind extraction is proposed. Key technologies are introduced: Based on frequency-domain blind deconvolution algorithm, the artificial fish swarm algorithm which is good for global optimization is used to construct improved multi-scale morphological filters which is applicable to mechanical failure in order to weaken the background noises; combining the structural parameters of parts to build a reference signal, complex components blind separation is carried out on the signals after noise reduction paragraph by paragraph by reference signal unit semi-blind extraction algorithm; then the improved KL-distance of complex independent components is employed as distance measure to resolve the permutation, and finally the mechanical fault characteristic signals are extracted and separated. The actual acoustic diagnosis of rolling bearing fault in sound field environment results proves the effectiveness of this algorithm.
topic algorithm theory
reference signal constraints
frequency-domain semi-blind extraction
artificial fish swarm algorithm
acoustic diagnosis
url http://xuebao.hebust.edu.cn/hbkjdx/ch/reader/create_pdf.aspx?file_no=b201504003&flag=1&journal_
work_keys_str_mv AT zeguangyi acousticdiagnosisofmechanicalfaultfeaturebasedonreferencesignalfrequencydomainsemiblindextraction
AT nanpan acousticdiagnosisofmechanicalfaultfeaturebasedonreferencesignalfrequencydomainsemiblindextraction
AT fengliu acousticdiagnosisofmechanicalfaultfeaturebasedonreferencesignalfrequencydomainsemiblindextraction
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