Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism

High-speed automatic weapons play an important role in the field of national defense. However, current research on reliability analysis of automaton principally relies on simulations due to the fact that experimental data are difficult to collect in real life. Different from rotating machinery, a hi...

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Main Authors: Baoxiang Wang, Hongxia Pan, Heng Du
Format: Article
Language:English
Published: MDPI AG 2017-02-01
Series:Entropy
Subjects:
Online Access:http://www.mdpi.com/1099-4300/19/3/86
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spelling doaj-d3f9a6a22a4b413ba1eeffcd95b7e4812020-11-24T22:58:43ZengMDPI AGEntropy1099-43002017-02-011938610.3390/e19030086e19030086Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic MechanismBaoxiang Wang0Hongxia Pan1Heng Du2School of Mechanical and Power Engineering, North University of China, Taiyuan 030051, ChinaSchool of Mechanical and Power Engineering, North University of China, Taiyuan 030051, ChinaSchool of Mechanical and Power Engineering, North University of China, Taiyuan 030051, ChinaHigh-speed automatic weapons play an important role in the field of national defense. However, current research on reliability analysis of automaton principally relies on simulations due to the fact that experimental data are difficult to collect in real life. Different from rotating machinery, a high-speed automaton needs to accomplish complex motion consisting of a series of impacts. In addition to strong noise, the impacts generated by different components of the automaton will interfere with each other. There is no effective approach to cope with this in the fault diagnosis of automatic mechanisms. This paper proposes a motion sequence decomposition approach combining modern signal processing techniques to develop an effective approach to fault detection in high-speed automatons. We first investigate the entire working procedure of the automatic mechanism and calculate the corresponding action times of travel involved. The vibration signal collected from the shooting experiment is then divided into a number of impacts corresponding to action orders. Only the segment generated by a faulty component is isolated from the original impacts according to the action time of the component. Wavelet packet decomposition (WPD) is first applied on the resulting signals for investigation of energy distribution, and the components with higher energy are selected for feature extraction. Three information entropy features are utilized to distinguish various states of the automaton using empirical mode decomposition (EMD). A gray-wolf optimization (GWO) algorithm is introduced as an alternative to improve the performance of the support vector machine (SVM) classifier. We carry out shooting experiments to collect vibration data for demonstration of the proposed work. Experimental results show that the proposed work in this paper is effective for fault diagnosis of a high-speed automaton and can be applied in real applications. Moreover, the GWO is able to provide a competitive diagnosis result compared with the genetic algorithm (GA) and the particle swarm optimization (PSO) algorithm.http://www.mdpi.com/1099-4300/19/3/86motion sequence decompositionhybrid information entropywavelet packet decompositionfault detection of automatongray-wolf optimizationsupport vector machine
collection DOAJ
language English
format Article
sources DOAJ
author Baoxiang Wang
Hongxia Pan
Heng Du
spellingShingle Baoxiang Wang
Hongxia Pan
Heng Du
Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism
Entropy
motion sequence decomposition
hybrid information entropy
wavelet packet decomposition
fault detection of automaton
gray-wolf optimization
support vector machine
author_facet Baoxiang Wang
Hongxia Pan
Heng Du
author_sort Baoxiang Wang
title Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism
title_short Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism
title_full Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism
title_fullStr Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism
title_full_unstemmed Motion Sequence Decomposition-Based Hybrid Entropy Feature and Its Application to Fault Diagnosis of a High-Speed Automatic Mechanism
title_sort motion sequence decomposition-based hybrid entropy feature and its application to fault diagnosis of a high-speed automatic mechanism
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2017-02-01
description High-speed automatic weapons play an important role in the field of national defense. However, current research on reliability analysis of automaton principally relies on simulations due to the fact that experimental data are difficult to collect in real life. Different from rotating machinery, a high-speed automaton needs to accomplish complex motion consisting of a series of impacts. In addition to strong noise, the impacts generated by different components of the automaton will interfere with each other. There is no effective approach to cope with this in the fault diagnosis of automatic mechanisms. This paper proposes a motion sequence decomposition approach combining modern signal processing techniques to develop an effective approach to fault detection in high-speed automatons. We first investigate the entire working procedure of the automatic mechanism and calculate the corresponding action times of travel involved. The vibration signal collected from the shooting experiment is then divided into a number of impacts corresponding to action orders. Only the segment generated by a faulty component is isolated from the original impacts according to the action time of the component. Wavelet packet decomposition (WPD) is first applied on the resulting signals for investigation of energy distribution, and the components with higher energy are selected for feature extraction. Three information entropy features are utilized to distinguish various states of the automaton using empirical mode decomposition (EMD). A gray-wolf optimization (GWO) algorithm is introduced as an alternative to improve the performance of the support vector machine (SVM) classifier. We carry out shooting experiments to collect vibration data for demonstration of the proposed work. Experimental results show that the proposed work in this paper is effective for fault diagnosis of a high-speed automaton and can be applied in real applications. Moreover, the GWO is able to provide a competitive diagnosis result compared with the genetic algorithm (GA) and the particle swarm optimization (PSO) algorithm.
topic motion sequence decomposition
hybrid information entropy
wavelet packet decomposition
fault detection of automaton
gray-wolf optimization
support vector machine
url http://www.mdpi.com/1099-4300/19/3/86
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AT hongxiapan motionsequencedecompositionbasedhybridentropyfeatureanditsapplicationtofaultdiagnosisofahighspeedautomaticmechanism
AT hengdu motionsequencedecompositionbasedhybridentropyfeatureanditsapplicationtofaultdiagnosisofahighspeedautomaticmechanism
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