Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence

As an important component of rotating machinery, the fault information of rolling element bearing is difficult to be recognized due to the background noise and harmonic frequency contained in the tested vibration signal. In order to accurately and completely extract the fault characteristic informat...

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Main Authors: Yuanqing Luo, Changzheng Chen, Siyu Zhao, Guolin Yang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9187190/
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author Yuanqing Luo
Changzheng Chen
Siyu Zhao
Guolin Yang
author_facet Yuanqing Luo
Changzheng Chen
Siyu Zhao
Guolin Yang
author_sort Yuanqing Luo
collection DOAJ
description As an important component of rotating machinery, the fault information of rolling element bearing is difficult to be recognized due to the background noise and harmonic frequency contained in the tested vibration signal. In order to accurately and completely extract the fault characteristic information from the vibration signal, a fault diagnosis research method (EAVGH-CSC-EES) based on the combination of enhanced top-hat morphological filtering (EAVGH) and cyclic spectrum coherence (CSC) is proposed. First of all, in view of the problem that the existing top-hat operators cannot fully extract the signal fault characteristics, this paper selects the optimal operator from the four enhanced morphology operators to construct the EAVGH. Since the reasonable selection of structural element (SE) scale has a great influence on the filtering result of morphological operators, then this paper applies feature energy factor (FEF) to select the optimal scale of SE. Subsequently, in order to further solve the influence of the non-linear modulation frequency components in the signal, while improving the filtering performance of EAVGH. This paper uses the cyclic spectrum coherence function (CSC) to further process the filtered signal. And then the enhanced envelope spectrum (EES) of the signal is obtained. Simulation and two sets of bearing fault experiments verify the rationality and effectiveness of the EAVGH-CSC method. The comparison results with other existing methods can further prove the superiority of the method proposed in this paper.
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spelling doaj.art-3e162ab68efd45c9b9b47b6165a70ab22022-12-21T19:52:24ZengIEEEIEEE Access2169-35362020-01-01816371516372910.1109/ACCESS.2020.30220419187190Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum CoherenceYuanqing Luo0https://orcid.org/0000-0002-4232-309XChangzheng Chen1https://orcid.org/0000-0002-3718-1760Siyu Zhao2https://orcid.org/0000-0001-7601-3260Guolin Yang3School of Mechanical Engineering, Shenyang University of Technology, Shenyang, ChinaSchool of Mechanical Engineering, Shenyang University of Technology, Shenyang, ChinaSchool of Mechanical Engineering, Shenyang University of Technology, Shenyang, ChinaShenyang Blower Group Company Ltd., Shenyang, ChinaAs an important component of rotating machinery, the fault information of rolling element bearing is difficult to be recognized due to the background noise and harmonic frequency contained in the tested vibration signal. In order to accurately and completely extract the fault characteristic information from the vibration signal, a fault diagnosis research method (EAVGH-CSC-EES) based on the combination of enhanced top-hat morphological filtering (EAVGH) and cyclic spectrum coherence (CSC) is proposed. First of all, in view of the problem that the existing top-hat operators cannot fully extract the signal fault characteristics, this paper selects the optimal operator from the four enhanced morphology operators to construct the EAVGH. Since the reasonable selection of structural element (SE) scale has a great influence on the filtering result of morphological operators, then this paper applies feature energy factor (FEF) to select the optimal scale of SE. Subsequently, in order to further solve the influence of the non-linear modulation frequency components in the signal, while improving the filtering performance of EAVGH. This paper uses the cyclic spectrum coherence function (CSC) to further process the filtered signal. And then the enhanced envelope spectrum (EES) of the signal is obtained. Simulation and two sets of bearing fault experiments verify the rationality and effectiveness of the EAVGH-CSC method. The comparison results with other existing methods can further prove the superiority of the method proposed in this paper.https://ieeexplore.ieee.org/document/9187190/The bearing fault diagnosismorphological filteringenhanced top-hat morphological operatorcyclic spectrum coherence
spellingShingle Yuanqing Luo
Changzheng Chen
Siyu Zhao
Guolin Yang
Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence
IEEE Access
The bearing fault diagnosis
morphological filtering
enhanced top-hat morphological operator
cyclic spectrum coherence
title Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence
title_full Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence
title_fullStr Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence
title_full_unstemmed Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence
title_short Rolling Bearing Fault Diagnosis Method With Enhanced Top-Hat Transform Filtering and Cyclic Spectrum Coherence
title_sort rolling bearing fault diagnosis method with enhanced top hat transform filtering and cyclic spectrum coherence
topic The bearing fault diagnosis
morphological filtering
enhanced top-hat morphological operator
cyclic spectrum coherence
url https://ieeexplore.ieee.org/document/9187190/
work_keys_str_mv AT yuanqingluo rollingbearingfaultdiagnosismethodwithenhancedtophattransformfilteringandcyclicspectrumcoherence
AT changzhengchen rollingbearingfaultdiagnosismethodwithenhancedtophattransformfilteringandcyclicspectrumcoherence
AT siyuzhao rollingbearingfaultdiagnosismethodwithenhancedtophattransformfilteringandcyclicspectrumcoherence
AT guolinyang rollingbearingfaultdiagnosismethodwithenhancedtophattransformfilteringandcyclicspectrumcoherence