Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis

The accuracy of a support vector machine (SVM) classifier is decided by the selection of optimal parameters for the SVM. The Backtracking Search Optimization Algorithm (BSA) is often applied to resolve the global optimization problem and adapted to optimize SVM parameters. In this research, a SVM pa...

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Main Authors: Vantrong Thai, Junsheng Cheng, Viethung Nguyen, Phuonganh Daothi
Format: Article
Language:English
Published: JVE International 2019-02-01
Series:Journal of Vibroengineering
Subjects:
Online Access:https://www.jvejournals.com/article/19859
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spelling doaj-517c87a427214e6a9f61ce4e09c66c9a2020-11-24T20:40:19ZengJVE InternationalJournal of Vibroengineering1392-87162538-84602019-02-01211668110.21595/jve.2018.1985919859Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosisVantrong Thai0Junsheng Cheng1Viethung Nguyen2Phuonganh Daothi3State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body, Hunan University, Changsha, ChinaState Key Laboratory of Advanced Design and Manufacturing for Vehicle Body, Hunan University, Changsha, ChinaState Key Laboratory of Advanced Design and Manufacturing for Vehicle Body, Hunan University, Changsha, ChinaFaculty of Information Technology, University Economic and Technical Industries, Hanoi, VietnamThe accuracy of a support vector machine (SVM) classifier is decided by the selection of optimal parameters for the SVM. The Backtracking Search Optimization Algorithm (BSA) is often applied to resolve the global optimization problem and adapted to optimize SVM parameters. In this research, a SVM parameter optimization method based on BSA (BSA-SVM) is proposed, and the BSA-SVM is applied to diagnose gear faults. Firstly, a gear vibration signal can be decomposed into several intrinsic scale components (ISCs) by means of the Local Characteristics-Scale Decomposition (LCD). Secondly, the MPE can extract the fault feature vectors from the first few ISCs. Thirdly, the fault feature vectors are taken as the input vectors of the BSA-SVM classifier. The analysis results of BSA-SVM classifier show that this method has higher accuracy than GA (Genetic Algorithm) or PSO (Particles Swarm Algorithm) algorithms combined with SVM. In short, the BSA-SVM based on the MPE-LCD is suitable to diagnose the state of health gear.https://www.jvejournals.com/article/19859signal processingfault detectiongearsartificial neural networksbacktracking search optimization algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Vantrong Thai
Junsheng Cheng
Viethung Nguyen
Phuonganh Daothi
spellingShingle Vantrong Thai
Junsheng Cheng
Viethung Nguyen
Phuonganh Daothi
Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
Journal of Vibroengineering
signal processing
fault detection
gears
artificial neural networks
backtracking search optimization algorithm
author_facet Vantrong Thai
Junsheng Cheng
Viethung Nguyen
Phuonganh Daothi
author_sort Vantrong Thai
title Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
title_short Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
title_full Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
title_fullStr Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
title_full_unstemmed Optimizing SVM’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
title_sort optimizing svm’s parameters based on backtracking search optimization algorithm for gear fault diagnosis
publisher JVE International
series Journal of Vibroengineering
issn 1392-8716
2538-8460
publishDate 2019-02-01
description The accuracy of a support vector machine (SVM) classifier is decided by the selection of optimal parameters for the SVM. The Backtracking Search Optimization Algorithm (BSA) is often applied to resolve the global optimization problem and adapted to optimize SVM parameters. In this research, a SVM parameter optimization method based on BSA (BSA-SVM) is proposed, and the BSA-SVM is applied to diagnose gear faults. Firstly, a gear vibration signal can be decomposed into several intrinsic scale components (ISCs) by means of the Local Characteristics-Scale Decomposition (LCD). Secondly, the MPE can extract the fault feature vectors from the first few ISCs. Thirdly, the fault feature vectors are taken as the input vectors of the BSA-SVM classifier. The analysis results of BSA-SVM classifier show that this method has higher accuracy than GA (Genetic Algorithm) or PSO (Particles Swarm Algorithm) algorithms combined with SVM. In short, the BSA-SVM based on the MPE-LCD is suitable to diagnose the state of health gear.
topic signal processing
fault detection
gears
artificial neural networks
backtracking search optimization algorithm
url https://www.jvejournals.com/article/19859
work_keys_str_mv AT vantrongthai optimizingsvmsparametersbasedonbacktrackingsearchoptimizationalgorithmforgearfaultdiagnosis
AT junshengcheng optimizingsvmsparametersbasedonbacktrackingsearchoptimizationalgorithmforgearfaultdiagnosis
AT viethungnguyen optimizingsvmsparametersbasedonbacktrackingsearchoptimizationalgorithmforgearfaultdiagnosis
AT phuonganhdaothi optimizingsvmsparametersbasedonbacktrackingsearchoptimizationalgorithmforgearfaultdiagnosis
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