Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis

Three feature extraction methods of sucker-rod pump indicator card data have been studied, simulated, and compared in this paper, which are based on Fourier Descriptors (FD), Geometric Moment Vector (GMV), and Gray Level Matrix Statistics (GLMX), respectively. Numerical experiments show that the Fou...

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Main Authors: Yunhua Yu, Haitao Shi, Lifei Mi
Format: Article
Language:English
Published: Hindawi Limited 2013-01-01
Series:Journal of Control Science and Engineering
Online Access:http://dx.doi.org/10.1155/2013/605749
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spelling doaj-a3ab9924254a495fbc688eca518511822020-11-25T02:15:05ZengHindawi LimitedJournal of Control Science and Engineering1687-52491687-52572013-01-01201310.1155/2013/605749605749Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition DiagnosisYunhua Yu0Haitao Shi1Lifei Mi2College of Information & Control Engineering, China University of Petroleum (Huadong), Qingdao 266580, ChinaCollege of Information & Control Engineering, China University of Petroleum (Huadong), Qingdao 266580, ChinaCollege of Information & Control Engineering, China University of Petroleum (Huadong), Qingdao 266580, ChinaThree feature extraction methods of sucker-rod pump indicator card data have been studied, simulated, and compared in this paper, which are based on Fourier Descriptors (FD), Geometric Moment Vector (GMV), and Gray Level Matrix Statistics (GLMX), respectively. Numerical experiments show that the Fourier Descriptors algorithm requires less running time and less memory space with possible loss of information due to nonoptimal numbers of Fourier Descriptors, the Geometric Moment Vector algorithm is more time-consuming and requires more memory space, while the Gray Level Matrix Statistics algorithm provides low-dimension feature vectors with more time consumption and more memory space. Furthermore, the characteristic of rotational invariance, both in the Fourier Descriptors algorithm and the Geometric Moment Vector algorithm, may result in improper pattern recognition of indicator card data when used for sucker-rod pump working condition diagnosis.http://dx.doi.org/10.1155/2013/605749
collection DOAJ
language English
format Article
sources DOAJ
author Yunhua Yu
Haitao Shi
Lifei Mi
spellingShingle Yunhua Yu
Haitao Shi
Lifei Mi
Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis
Journal of Control Science and Engineering
author_facet Yunhua Yu
Haitao Shi
Lifei Mi
author_sort Yunhua Yu
title Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis
title_short Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis
title_full Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis
title_fullStr Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis
title_full_unstemmed Research on Feature Extraction of Indicator Card Data for Sucker-Rod Pump Working Condition Diagnosis
title_sort research on feature extraction of indicator card data for sucker-rod pump working condition diagnosis
publisher Hindawi Limited
series Journal of Control Science and Engineering
issn 1687-5249
1687-5257
publishDate 2013-01-01
description Three feature extraction methods of sucker-rod pump indicator card data have been studied, simulated, and compared in this paper, which are based on Fourier Descriptors (FD), Geometric Moment Vector (GMV), and Gray Level Matrix Statistics (GLMX), respectively. Numerical experiments show that the Fourier Descriptors algorithm requires less running time and less memory space with possible loss of information due to nonoptimal numbers of Fourier Descriptors, the Geometric Moment Vector algorithm is more time-consuming and requires more memory space, while the Gray Level Matrix Statistics algorithm provides low-dimension feature vectors with more time consumption and more memory space. Furthermore, the characteristic of rotational invariance, both in the Fourier Descriptors algorithm and the Geometric Moment Vector algorithm, may result in improper pattern recognition of indicator card data when used for sucker-rod pump working condition diagnosis.
url http://dx.doi.org/10.1155/2013/605749
work_keys_str_mv AT yunhuayu researchonfeatureextractionofindicatorcarddataforsuckerrodpumpworkingconditiondiagnosis
AT haitaoshi researchonfeatureextractionofindicatorcarddataforsuckerrodpumpworkingconditiondiagnosis
AT lifeimi researchonfeatureextractionofindicatorcarddataforsuckerrodpumpworkingconditiondiagnosis
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