ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN

Using ultrasonic non-destructive testing technology,when detecting the surface crack of the shaft,the micro crack echo signal is often covered by various noises,which causes the crack to be unrecognizable and positioned. In order to solve this problem,in this paper,a general cross-validation thresho...

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Main Authors: XIAO ChangMing, XIAO Han, YI CanCan
Format: Article
Language:zho
Published: Editorial Office of Journal of Mechanical Strength 2020-01-01
Series:Jixie qiangdu
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Online Access:http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2020.03.003
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author XIAO ChangMing
XIAO Han
YI CanCan
author_facet XIAO ChangMing
XIAO Han
YI CanCan
author_sort XIAO ChangMing
collection DOAJ
description Using ultrasonic non-destructive testing technology,when detecting the surface crack of the shaft,the micro crack echo signal is often covered by various noises,which causes the crack to be unrecognizable and positioned. In order to solve this problem,in this paper,a general cross-validation thresholding in synchrosqueezing wavelet domain approach is proposed to analyze the ultrasonic echo signals,and the characteristics of the crack echo signals are extracted from the time-frequency domain and localized. Based on synchrosqueezing transformation,the paper uses the general cross-validation method to estimate the threshold level of noise reduction,and does not depend on any prior knowledge. Specifically,by adding a preprocessing step based on kurtosis measurement and a post-processing step based on adaptive hard threshold processing,the efficiency of the threshold processing and the noise reduction effect in the time-frequency domain are improved,thereby realizing a useful distinction between noise and characteristic signals. Finally,the method is applied to the feature recognition of microcrack ultrasonic echo signals,and compared with the results of continuous wavelet transform. The results show that the method can identify the crack more accurately and extract the time point of crack occurrence,and then determine the specific location of the micro crack.
format Article
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institution Kabale University
issn 1001-9669
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publishDate 2020-01-01
publisher Editorial Office of Journal of Mechanical Strength
record_format Article
series Jixie qiangdu
spelling doaj-art-1a846702354045d0a8c92e8fbe96b6912025-01-15T02:27:48ZzhoEditorial Office of Journal of Mechanical StrengthJixie qiangdu1001-96692020-01-014252352830607850ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAINXIAO ChangMingXIAO HanYI CanCanUsing ultrasonic non-destructive testing technology,when detecting the surface crack of the shaft,the micro crack echo signal is often covered by various noises,which causes the crack to be unrecognizable and positioned. In order to solve this problem,in this paper,a general cross-validation thresholding in synchrosqueezing wavelet domain approach is proposed to analyze the ultrasonic echo signals,and the characteristics of the crack echo signals are extracted from the time-frequency domain and localized. Based on synchrosqueezing transformation,the paper uses the general cross-validation method to estimate the threshold level of noise reduction,and does not depend on any prior knowledge. Specifically,by adding a preprocessing step based on kurtosis measurement and a post-processing step based on adaptive hard threshold processing,the efficiency of the threshold processing and the noise reduction effect in the time-frequency domain are improved,thereby realizing a useful distinction between noise and characteristic signals. Finally,the method is applied to the feature recognition of microcrack ultrasonic echo signals,and compared with the results of continuous wavelet transform. The results show that the method can identify the crack more accurately and extract the time point of crack occurrence,and then determine the specific location of the micro crack.http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2020.03.003Ultrasonic testingSynchrosqueezing wavelet transformGeneral cross-validation thresholding(GCV)Echo signalFeature extraction
spellingShingle XIAO ChangMing
XIAO Han
YI CanCan
ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN
Jixie qiangdu
Ultrasonic testing
Synchrosqueezing wavelet transform
General cross-validation thresholding(GCV)
Echo signal
Feature extraction
title ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN
title_full ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN
title_fullStr ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN
title_full_unstemmed ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN
title_short ULTRASONIC SIGNAL FEATURE EXTRACTION METHOD BASED ON GENERAL CROSS-VALIDATION THRESHOLDING IN SYNCHROSQUEEZING WAVELET DOMAIN
title_sort ultrasonic signal feature extraction method based on general cross validation thresholding in synchrosqueezing wavelet domain
topic Ultrasonic testing
Synchrosqueezing wavelet transform
General cross-validation thresholding(GCV)
Echo signal
Feature extraction
url http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2020.03.003
work_keys_str_mv AT xiaochangming ultrasonicsignalfeatureextractionmethodbasedongeneralcrossvalidationthresholdinginsynchrosqueezingwaveletdomain
AT xiaohan ultrasonicsignalfeatureextractionmethodbasedongeneralcrossvalidationthresholdinginsynchrosqueezingwaveletdomain
AT yicancan ultrasonicsignalfeatureextractionmethodbasedongeneralcrossvalidationthresholdinginsynchrosqueezingwaveletdomain