2020
DOI: 10.1109/access.2020.3012559
|View full text |Cite
|
Sign up to set email alerts
|

Intelligent Fault Diagnosis of Rolling Bearing Using FCM Clustering of EMD-PWVD Vibration Images

Abstract: Rolling bearing is key component of rotating machinery and its fault diagnosis is of great significance for reliable operation of machine. In this paper, an intelligent fault diagnosis method of rolling bearing based on FCM clustering of vibration images obtained by EMD-PWVD is presented. Firstly, vibration signals with different fault degrees are transformed into contour time-frequency images by EMD-PWVD. Secondly, vibration images are divided into sections and their energy distribution values are used as ima… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
3
1
1

Citation Types

0
19
0

Year Published

2021
2021
2024
2024

Publication Types

Select...
9

Relationship

1
8

Authors

Journals

citations
Cited by 33 publications
(19 citation statements)
references
References 22 publications
0
19
0
Order By: Relevance
“…Yang_2017 [161] Isham_2019 [162] Amarnath_2013 [163] Mao_2018 [164] Chen_2015 [165] Rafiq_2021 [166] Isham_2018 [167] Jegadeeshwaran_2014 [168] Cyclostationary and cyclo-non-stationary analysis [173] Sun_2020 [174] Jeon_2020 [175] Fan_2020 [176] Youcef_2020 [177] Yang_2019 [178] Xin_2018 [179] Hamadache_2018 [180] Song_2018 [181] Golbaghi_2017 [182] Li_2016c [137] Raj_2015 [183] Ocak_2001 [184] Oh_2018 [185] Tarek_2020 [186] Li_2018 [187] Hong_2017 [188] Cerrada_2015 [189] Fan_2015 [190] Yang_2018 [191] Qiang_2014 [192] Moghadam_2021 [193] He_2016 [194] Gierlak_2017 [195] Zhao_2019b [196] Unique Jablon_2021 [197] Gu_2021 [198] Mohamad_2020 [2] Yan_2019 [199] Barbini_2018 [200] Khan_2016 [201] Biswas_2013 [202] Bai_2021a [203] Mohamad_2020 [2] Hizarci_2019 [204] Medina_2019 [205] Chen_2002 [206] Chen_2002…”
Section: Stft Wavelet Wigner-ville (Wv) Distribution Hilbert-huang Transform Cohen Class Functionsmentioning
confidence: 99%
“…Yang_2017 [161] Isham_2019 [162] Amarnath_2013 [163] Mao_2018 [164] Chen_2015 [165] Rafiq_2021 [166] Isham_2018 [167] Jegadeeshwaran_2014 [168] Cyclostationary and cyclo-non-stationary analysis [173] Sun_2020 [174] Jeon_2020 [175] Fan_2020 [176] Youcef_2020 [177] Yang_2019 [178] Xin_2018 [179] Hamadache_2018 [180] Song_2018 [181] Golbaghi_2017 [182] Li_2016c [137] Raj_2015 [183] Ocak_2001 [184] Oh_2018 [185] Tarek_2020 [186] Li_2018 [187] Hong_2017 [188] Cerrada_2015 [189] Fan_2015 [190] Yang_2018 [191] Qiang_2014 [192] Moghadam_2021 [193] He_2016 [194] Gierlak_2017 [195] Zhao_2019b [196] Unique Jablon_2021 [197] Gu_2021 [198] Mohamad_2020 [2] Yan_2019 [199] Barbini_2018 [200] Khan_2016 [201] Biswas_2013 [202] Bai_2021a [203] Mohamad_2020 [2] Hizarci_2019 [204] Medina_2019 [205] Chen_2002 [206] Chen_2002…”
Section: Stft Wavelet Wigner-ville (Wv) Distribution Hilbert-huang Transform Cohen Class Functionsmentioning
confidence: 99%
“…The algorithm calculates (I) correlation between features in ( 9), (II) correlation between features and classification in ( 8), (III) Merit value in (10). Then, (IV) fitness value W fi is calculated for Merit_new value in (11).…”
Section: Cffsmentioning
confidence: 99%
“…For example, FFT and GT are sensitive to noise [7]. The cross-term interference of nonstationary signals limits the performance of WVD [11]. The predefined wavelet-based parameters cause the WT may not be able to adaptively process nonstationary signals [12].…”
Section: Introductionmentioning
confidence: 99%
“…e authors in [7][8][9][10] adopted the comprehensive analysis method of EMD and pseudo-Wigner-Ville distribution (PWVD), which not only has the time-frequency focusing but also avoids the problem of cross-interference terms in multicomponent signal processing. e frequency band energy was divided according to time-frequency image, which was used as the characteristic index for the unsupervised clustering calculation and achieved a good classification effect [11].…”
Section: Introductionmentioning
confidence: 99%