Comprehensive evaluation of robotic global performance based on modified principal component analysis

The multivariate statistical method such as principal component analysis based on linear dimension reduction and kernel principal component analysis based on nonlinear dimension reduction as the modified principal component analysis method are commonly used. Because of the diversity and correlation...

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Main Authors: Liming Li, Jing Zhao, Chunrong Wang, Chaojie Yan
Format: Article
Language:English
Published: SAGE Publishing 2020-08-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881419896881
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spelling doaj-b94c95cd9b2f4d1a980c42fd882a7d892020-11-25T03:31:52ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142020-08-011710.1177/1729881419896881Comprehensive evaluation of robotic global performance based on modified principal component analysisLiming LiJing ZhaoChunrong WangChaojie YanThe multivariate statistical method such as principal component analysis based on linear dimension reduction and kernel principal component analysis based on nonlinear dimension reduction as the modified principal component analysis method are commonly used. Because of the diversity and correlation of robotic global performance indexes, the two multivariate statistical methods principal component analysis and kernel principal component analysis methods can be used, respectively, to comprehensively evaluate the global performance of PUMA560 robot with different dimensions. When using the kernel principal component analysis method, the kernel function and parameters directly have an effect on the result of comprehensive performance evaluation. Because kernel principal component analysis with polynomial kernel function is time-consuming and inefficient, a new kernel function based on similarity degree is proposed for the big sample data. The new kernel function is proved according to Mercer’s theorem. By comparing different dimension reduction effects of principal component analysis method, the kernel principal component analysis method with polynomial kernel function, and the kernel principal component analysis method with the new kernel function, the kernel principal component analysis method with the new kernel function could deal more effectively with the nonlinear relationship among indexes, and its calculation result is more reasonable for containing more comprehensive information. The simulation shows that the kernel principal component analysis method with the new kernel function has the advantage of low time consuming, good real-time performance, and good ability of generalization.https://doi.org/10.1177/1729881419896881
collection DOAJ
language English
format Article
sources DOAJ
author Liming Li
Jing Zhao
Chunrong Wang
Chaojie Yan
spellingShingle Liming Li
Jing Zhao
Chunrong Wang
Chaojie Yan
Comprehensive evaluation of robotic global performance based on modified principal component analysis
International Journal of Advanced Robotic Systems
author_facet Liming Li
Jing Zhao
Chunrong Wang
Chaojie Yan
author_sort Liming Li
title Comprehensive evaluation of robotic global performance based on modified principal component analysis
title_short Comprehensive evaluation of robotic global performance based on modified principal component analysis
title_full Comprehensive evaluation of robotic global performance based on modified principal component analysis
title_fullStr Comprehensive evaluation of robotic global performance based on modified principal component analysis
title_full_unstemmed Comprehensive evaluation of robotic global performance based on modified principal component analysis
title_sort comprehensive evaluation of robotic global performance based on modified principal component analysis
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2020-08-01
description The multivariate statistical method such as principal component analysis based on linear dimension reduction and kernel principal component analysis based on nonlinear dimension reduction as the modified principal component analysis method are commonly used. Because of the diversity and correlation of robotic global performance indexes, the two multivariate statistical methods principal component analysis and kernel principal component analysis methods can be used, respectively, to comprehensively evaluate the global performance of PUMA560 robot with different dimensions. When using the kernel principal component analysis method, the kernel function and parameters directly have an effect on the result of comprehensive performance evaluation. Because kernel principal component analysis with polynomial kernel function is time-consuming and inefficient, a new kernel function based on similarity degree is proposed for the big sample data. The new kernel function is proved according to Mercer’s theorem. By comparing different dimension reduction effects of principal component analysis method, the kernel principal component analysis method with polynomial kernel function, and the kernel principal component analysis method with the new kernel function, the kernel principal component analysis method with the new kernel function could deal more effectively with the nonlinear relationship among indexes, and its calculation result is more reasonable for containing more comprehensive information. The simulation shows that the kernel principal component analysis method with the new kernel function has the advantage of low time consuming, good real-time performance, and good ability of generalization.
url https://doi.org/10.1177/1729881419896881
work_keys_str_mv AT limingli comprehensiveevaluationofroboticglobalperformancebasedonmodifiedprincipalcomponentanalysis
AT jingzhao comprehensiveevaluationofroboticglobalperformancebasedonmodifiedprincipalcomponentanalysis
AT chunrongwang comprehensiveevaluationofroboticglobalperformancebasedonmodifiedprincipalcomponentanalysis
AT chaojieyan comprehensiveevaluationofroboticglobalperformancebasedonmodifiedprincipalcomponentanalysis
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