APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR

For the end effect of ensemble empirical mode decomposition( EEMD),considering the disadvantages that the extreme extension only uses the value near the endpoints and the support vector regression( SVR) extension based on data points takes much time,a new SVR extension method based on extreme points...

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Main Authors: CHAI Kai, ZHANG MeiJun, HUANG Jie, XU Wei
Format: Article
Language:zho
Published: Editorial Office of Journal of Mechanical Strength 2015-01-01
Series:Jixie qiangdu
Subjects:
Online Access:http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2015.06.033
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author CHAI Kai
ZHANG MeiJun
HUANG Jie
XU Wei
author_facet CHAI Kai
ZHANG MeiJun
HUANG Jie
XU Wei
author_sort CHAI Kai
collection DOAJ
description For the end effect of ensemble empirical mode decomposition( EEMD),considering the disadvantages that the extreme extension only uses the value near the endpoints and the support vector regression( SVR) extension based on data points takes much time,a new SVR extension method based on extreme points is proposed by the combination of extreme extension and SVR extension. Firstly,extreme points near the endpoints are used as the SVR training samples to extend extreme value.Secondly,the average difference between the original signal time scales of the adjacent extreme points is used to control the shape of these extended extreme points. Finally,these points are interpolated to the required data points by Hermite. The method refers to the variation of signal endpoints,meanwhile,considers the information inside extreme points of the entire data sequence.Simulation and experimental short signal results show that SVR extension method based on extreme points not only can improve the accuracy and reliability of the EEMD decomposition,depress end effect effectively and solve the decomposition distortion caused by end effect,but also sharply reduce the number of SVR extension data points,distinctly shorten the time of SVR extension and increase the practicability of the method.
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institution Kabale University
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spelling doaj-art-a5ae5a22260948ca89b5e632cbad141c2025-01-15T02:37:43ZzhoEditorial Office of Journal of Mechanical StrengthJixie qiangdu1001-96692015-01-01371017102230593525APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVRCHAI KaiZHANG MeiJunHUANG JieXU WeiFor the end effect of ensemble empirical mode decomposition( EEMD),considering the disadvantages that the extreme extension only uses the value near the endpoints and the support vector regression( SVR) extension based on data points takes much time,a new SVR extension method based on extreme points is proposed by the combination of extreme extension and SVR extension. Firstly,extreme points near the endpoints are used as the SVR training samples to extend extreme value.Secondly,the average difference between the original signal time scales of the adjacent extreme points is used to control the shape of these extended extreme points. Finally,these points are interpolated to the required data points by Hermite. The method refers to the variation of signal endpoints,meanwhile,considers the information inside extreme points of the entire data sequence.Simulation and experimental short signal results show that SVR extension method based on extreme points not only can improve the accuracy and reliability of the EEMD decomposition,depress end effect effectively and solve the decomposition distortion caused by end effect,but also sharply reduce the number of SVR extension data points,distinctly shorten the time of SVR extension and increase the practicability of the method.http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2015.06.033Signal extensionEnsemble empirical mode decompositionEnd effectSupport vector regressionHermit interpolation
spellingShingle CHAI Kai
ZHANG MeiJun
HUANG Jie
XU Wei
APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR
Jixie qiangdu
Signal extension
Ensemble empirical mode decomposition
End effect
Support vector regression
Hermit interpolation
title APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR
title_full APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR
title_fullStr APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR
title_full_unstemmed APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR
title_short APPROACH TO DEPRESS THE BOUNDARY EFFECT IN EEMD ANALYSIS BASED ON IMPROVED SVR
title_sort approach to depress the boundary effect in eemd analysis based on improved svr
topic Signal extension
Ensemble empirical mode decomposition
End effect
Support vector regression
Hermit interpolation
url http://www.jxqd.net.cn/thesisDetails#10.16579/j.issn.1001.9669.2015.06.033
work_keys_str_mv AT chaikai approachtodepresstheboundaryeffectineemdanalysisbasedonimprovedsvr
AT zhangmeijun approachtodepresstheboundaryeffectineemdanalysisbasedonimprovedsvr
AT huangjie approachtodepresstheboundaryeffectineemdanalysisbasedonimprovedsvr
AT xuwei approachtodepresstheboundaryeffectineemdanalysisbasedonimprovedsvr