A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM

Aiming at the influence of mixed noise of bearing vibration signal on the extraction of useful information, a fault diagnosis optimize classifier based on multi-scale permutation entropy (MPE) and cuckoo search algorithm (CS) is proposed. Firstly, the MPE threshold method is adopted to select the ap...

Full description

Bibliographic Details
Main Authors: Zijian Guo, Mingliang Liu, Yunxia Wang, Huabin Qin
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9172050/
_version_ 1818323839844614144
author Zijian Guo
Mingliang Liu
Yunxia Wang
Huabin Qin
author_facet Zijian Guo
Mingliang Liu
Yunxia Wang
Huabin Qin
author_sort Zijian Guo
collection DOAJ
description Aiming at the influence of mixed noise of bearing vibration signal on the extraction of useful information, a fault diagnosis optimize classifier based on multi-scale permutation entropy (MPE) and cuckoo search algorithm (CS) is proposed. Firstly, the MPE threshold method is adopted to select the appropriate variational mode decomposition algorithm (VMD) parameters, and then the signal is reconstructed by adding neutral white noise, and the reconstructed signal is decomposed by MPE-OVMD algorithm to obtain the optimal IMF component. Finally, the cuckoo search algorithm is used to optimize the global optimal solution of the support vector machine, thereby achieving the classification model of support vector machine with the best parameters. The analysis results of motor signals show that the method can eliminate the phenomena of mode aliasing and signal over-decomposition. An analytical comparison of the CSSVM classifier is carried out with the performance of the learners such as recall rate, ROC curve, AUC. The contrast experiment shows that the classification model can avoid misrecognition of the fault sample as the normal condition and maximum the optimal maintenance time of the equipment under the premise of ensuring the accuracy. The classifier model of the cuckoo optimization algorithm has better fitting accuracy than others such as the Grid Search algorithm (GS), Particle Swarm Optimization (PSO), Genetic Algorithm search (GA), and the ensemble fault recognition rate is as high as 90%.
first_indexed 2024-12-13T11:19:04Z
format Article
id doaj.art-cef24f293d264e7cbd0139afd4e31f3e
institution Directory Open Access Journal
issn 2169-3536
language English
last_indexed 2024-12-13T11:19:04Z
publishDate 2020-01-01
publisher IEEE
record_format Article
series IEEE Access
spelling doaj.art-cef24f293d264e7cbd0139afd4e31f3e2022-12-21T23:48:33ZengIEEEIEEE Access2169-35362020-01-01815361015362910.1109/ACCESS.2020.30183209172050A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVMZijian Guo0https://orcid.org/0000-0002-8042-5804Mingliang Liu1https://orcid.org/0000-0003-1124-3561Yunxia Wang2https://orcid.org/0000-0002-1739-5403Huabin Qin3https://orcid.org/0000-0003-0078-6579HLJ Province Key Laboratory of Senior-Education for Electronic Engineering, Heilongjiang University, Harbin, ChinaHLJ Province Key Laboratory of Senior-Education for Electronic Engineering, Heilongjiang University, Harbin, ChinaHLJ Province Key Laboratory of Senior-Education for Electronic Engineering, Heilongjiang University, Harbin, ChinaHLJ Province Key Laboratory of Senior-Education for Electronic Engineering, Heilongjiang University, Harbin, ChinaAiming at the influence of mixed noise of bearing vibration signal on the extraction of useful information, a fault diagnosis optimize classifier based on multi-scale permutation entropy (MPE) and cuckoo search algorithm (CS) is proposed. Firstly, the MPE threshold method is adopted to select the appropriate variational mode decomposition algorithm (VMD) parameters, and then the signal is reconstructed by adding neutral white noise, and the reconstructed signal is decomposed by MPE-OVMD algorithm to obtain the optimal IMF component. Finally, the cuckoo search algorithm is used to optimize the global optimal solution of the support vector machine, thereby achieving the classification model of support vector machine with the best parameters. The analysis results of motor signals show that the method can eliminate the phenomena of mode aliasing and signal over-decomposition. An analytical comparison of the CSSVM classifier is carried out with the performance of the learners such as recall rate, ROC curve, AUC. The contrast experiment shows that the classification model can avoid misrecognition of the fault sample as the normal condition and maximum the optimal maintenance time of the equipment under the premise of ensuring the accuracy. The classifier model of the cuckoo optimization algorithm has better fitting accuracy than others such as the Grid Search algorithm (GS), Particle Swarm Optimization (PSO), Genetic Algorithm search (GA), and the ensemble fault recognition rate is as high as 90%.https://ieeexplore.ieee.org/document/9172050/Variational mode decompositionmulti-scale permutation entropysignal reconstructioncuckoo algorithmsupport vector machine
spellingShingle Zijian Guo
Mingliang Liu
Yunxia Wang
Huabin Qin
A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM
IEEE Access
Variational mode decomposition
multi-scale permutation entropy
signal reconstruction
cuckoo algorithm
support vector machine
title A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM
title_full A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM
title_fullStr A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM
title_full_unstemmed A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM
title_short A New Fault Diagnosis Classifier for Rolling Bearing United Multi-Scale Permutation Entropy Optimize VMD and Cuckoo Search SVM
title_sort new fault diagnosis classifier for rolling bearing united multi scale permutation entropy optimize vmd and cuckoo search svm
topic Variational mode decomposition
multi-scale permutation entropy
signal reconstruction
cuckoo algorithm
support vector machine
url https://ieeexplore.ieee.org/document/9172050/
work_keys_str_mv AT zijianguo anewfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT mingliangliu anewfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT yunxiawang anewfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT huabinqin anewfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT zijianguo newfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT mingliangliu newfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT yunxiawang newfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm
AT huabinqin newfaultdiagnosisclassifierforrollingbearingunitedmultiscalepermutationentropyoptimizevmdandcuckoosearchsvm