Skip to main content
Top
Published in: Memetic Computing 2/2019

12-12-2018 | Regular Research Paper

Novel paralleled extreme learning machine networks for fault diagnosis of wind turbine drivetrain

Authors: Xian-Bo Wang, Zhi-Xin Yang, Pak Kin Wong, Chao Deng

Published in: Memetic Computing | Issue 2/2019

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

With the increasing installed power of the wind turbines, the necessity of condition monitoring for wind turbine drivetrain cannot be neglected any longer. A reliable and rapid response fault diagnosis is vital for the wind turbine drivetrain system. The existing manual inspection-based methods are difficult to accomplish the real-time compound-fault monitoring task. To solve this problem, this paper proposes a novel dual extreme learning machines (Dual-ELMs) based fault diagnostic framework for feature extraction and fault pattern recognition. At the stage of feature learning, this paper applies the local mean decomposition (LMD) method to extract the production functions from the raw vibration signals. Compared with the traditional empirical mode decomposition method, the LMD method has a stronger ability to restrain the mode mixing and endpoints effect. At the stage of compound-fault classification, unlike the other widely-used classifiers, the proposed Dual-ELM networks inherit the advantages of the original extreme learning machines (ELMs), that employs two basic ELM networks for the compound-fault classification, and it does not need iterative fine-tuning of parameters. Thus the learning speed is faster than the other combinations of classifiers. The experimental validity of the proposed algorithm was conducted on a test rig for vibration analysis, which demonstrated that the proposed Dual-ELMs based fault diagnostic method provides an effective measure for the observed machinery than the other available fault diagnostic methods in aspects of feature extraction and compound-fault recognition.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Literature
1.
go back to reference Wang X-B, Yang Z-X, Yan X-A (2018) Novel particle swarm optimization-based variational mode decomposition method for the fault diagnosis of complex rotating machinery. IEEE ASME Trans Mechatron 23:68–79CrossRef Wang X-B, Yang Z-X, Yan X-A (2018) Novel particle swarm optimization-based variational mode decomposition method for the fault diagnosis of complex rotating machinery. IEEE ASME Trans Mechatron 23:68–79CrossRef
2.
go back to reference Yang Y, Dong X, Peng Z, Zhang W, Meng G (2015) Vibration signal analysis using parameterized timefrequency method for features extraction of varying-speed rotary machinery. J Sound Vib 335:350–366CrossRef Yang Y, Dong X, Peng Z, Zhang W, Meng G (2015) Vibration signal analysis using parameterized timefrequency method for features extraction of varying-speed rotary machinery. J Sound Vib 335:350–366CrossRef
3.
go back to reference Shao L, Liu L, Li X (2014) Feature learning for image classification via multiobjective genetic programming. IEEE Trans Neural Netw Learn Syst 25(7):1359–1371CrossRef Shao L, Liu L, Li X (2014) Feature learning for image classification via multiobjective genetic programming. IEEE Trans Neural Netw Learn Syst 25(7):1359–1371CrossRef
4.
go back to reference Dai X, Gao Z (2013) From model, signal to knowledge: a data-driven perspective of fault detection and diagnosis. IEEE Trans Ind Inf 9(4):2226–2238CrossRef Dai X, Gao Z (2013) From model, signal to knowledge: a data-driven perspective of fault detection and diagnosis. IEEE Trans Ind Inf 9(4):2226–2238CrossRef
5.
go back to reference Yan Z, Miyamoto A, Jiang Z (2009) Frequency slice wavelet transform for transient vibration response analysis. Mech Syst Signal Process 23(5):1474–1489CrossRef Yan Z, Miyamoto A, Jiang Z (2009) Frequency slice wavelet transform for transient vibration response analysis. Mech Syst Signal Process 23(5):1474–1489CrossRef
6.
go back to reference Kia SH, Henao H, Capolino G-A (2009) Diagnosis of broken-bar fault in induction machines using discrete wavelet transform without slip estimation. IEEE Trans Ind Appl 45(4):1395–1404CrossRef Kia SH, Henao H, Capolino G-A (2009) Diagnosis of broken-bar fault in induction machines using discrete wavelet transform without slip estimation. IEEE Trans Ind Appl 45(4):1395–1404CrossRef
7.
go back to reference Al-Badour F, Sunar M, Cheded L (2011) Vibration analysis of rotating machinery using time-frequency analysis and wavelet techniques. Mech Syst Signal Process 25(6):2083–2101CrossRef Al-Badour F, Sunar M, Cheded L (2011) Vibration analysis of rotating machinery using time-frequency analysis and wavelet techniques. Mech Syst Signal Process 25(6):2083–2101CrossRef
8.
go back to reference Jauregui-Correa JC (2013) The effect of nonlinear traveling waves on rotating machinery. Mech Syst Signal Process 39(1):129–142CrossRef Jauregui-Correa JC (2013) The effect of nonlinear traveling waves on rotating machinery. Mech Syst Signal Process 39(1):129–142CrossRef
9.
go back to reference Wang Z, Han Z, Gu F, Gu JX, Ning S (2015) A novel procedure for diagnosing multiple faults in rotating machinery. ISA Trans 55:208–218CrossRef Wang Z, Han Z, Gu F, Gu JX, Ning S (2015) A novel procedure for diagnosing multiple faults in rotating machinery. ISA Trans 55:208–218CrossRef
10.
go back to reference Smith JS (2005) The local mean decomposition and its application to eeg perception data. J R Soc Interface 2(5):443–454CrossRef Smith JS (2005) The local mean decomposition and its application to eeg perception data. J R Soc Interface 2(5):443–454CrossRef
11.
go back to reference Cheng J, Yang Y, Yang Y (2012) A rotating machinery fault diagnosis method based on local mean decomposition. Digital Signal Process 22(2):356–366MathSciNetCrossRef Cheng J, Yang Y, Yang Y (2012) A rotating machinery fault diagnosis method based on local mean decomposition. Digital Signal Process 22(2):356–366MathSciNetCrossRef
12.
go back to reference Zheng Z, Jiang W, Wang Z, Zhu Y, Yang K (2015) Gear fault diagnosis method based on local mean decomposition and generalized morphological fractal dimensions. Mech Mach Theory 91:151–167CrossRef Zheng Z, Jiang W, Wang Z, Zhu Y, Yang K (2015) Gear fault diagnosis method based on local mean decomposition and generalized morphological fractal dimensions. Mech Mach Theory 91:151–167CrossRef
13.
go back to reference Li Y, Xu M, Haiyang Z, Wei Y, Huang W (2015) A new rotating machinery fault diagnosis method based on improved local mean decomposition. Digital Signal Process 46:201–214MathSciNetCrossRef Li Y, Xu M, Haiyang Z, Wei Y, Huang W (2015) A new rotating machinery fault diagnosis method based on improved local mean decomposition. Digital Signal Process 46:201–214MathSciNetCrossRef
14.
go back to reference Ziad S, Hojjat A (2011) Probabilistic neural networks for diagnosis of alzheimer’s disease using conventional and wavelet coherence. J Neurosci Methods 197(1):165–70CrossRef Ziad S, Hojjat A (2011) Probabilistic neural networks for diagnosis of alzheimer’s disease using conventional and wavelet coherence. J Neurosci Methods 197(1):165–70CrossRef
15.
go back to reference Tang J, Deng C, Huang G-B (2016) Extreme learning machine for multilayer perceptron. IEEE Trans Neural Netw Learn Syst 27(4):809–821MathSciNetCrossRef Tang J, Deng C, Huang G-B (2016) Extreme learning machine for multilayer perceptron. IEEE Trans Neural Netw Learn Syst 27(4):809–821MathSciNetCrossRef
16.
go back to reference Cheng X, Liu H, Xu X, Sun F (2017) Denoising deep extreme learning machine for sparse representation. Memet Comput 9(3):199–212CrossRef Cheng X, Liu H, Xu X, Sun F (2017) Denoising deep extreme learning machine for sparse representation. Memet Comput 9(3):199–212CrossRef
17.
go back to reference Lu H, Du B, Liu J, Xia H, Yeap WK (2017) A kernel extreme learning machine algorithm based on improved particle swam optimization. Memet Comput 9(2):121–128CrossRef Lu H, Du B, Liu J, Xia H, Yeap WK (2017) A kernel extreme learning machine algorithm based on improved particle swam optimization. Memet Comput 9(2):121–128CrossRef
18.
go back to reference Das SP, Padhy S (2016) Unsupervised extreme learning machine and support vector regression hybrid model for predicting energy commodity futures index. Memet Comput 3:1–14 Das SP, Padhy S (2016) Unsupervised extreme learning machine and support vector regression hybrid model for predicting energy commodity futures index. Memet Comput 3:1–14
19.
go back to reference Huang GB, Zhou H, Ding X, Zhang R (2012) Extreme learning machine for regression and multiclass classification. IEEE Trans Syst Man Cybern Part B Cybern 42(42):513–29CrossRef Huang GB, Zhou H, Ding X, Zhang R (2012) Extreme learning machine for regression and multiclass classification. IEEE Trans Syst Man Cybern Part B Cybern 42(42):513–29CrossRef
20.
go back to reference Yang Z-X, Wang X-B, Zhong J-H (2016) Representational learning for fault diagnosis of wind turbine equipment: a multi-layered extreme learning machines approach. Energies 9(6):379CrossRef Yang Z-X, Wang X-B, Zhong J-H (2016) Representational learning for fault diagnosis of wind turbine equipment: a multi-layered extreme learning machines approach. Energies 9(6):379CrossRef
21.
go back to reference Yang Y, Wu QJ, Wang Y (2016) Autoencoder with invertible functions for dimension reduction and image reconstruction. IEEE Trans Syst Man Cybern Syst PP(99):1–15 Yang Y, Wu QJ, Wang Y (2016) Autoencoder with invertible functions for dimension reduction and image reconstruction. IEEE Trans Syst Man Cybern Syst PP(99):1–15
22.
go back to reference Yang Y, Wu QJ (2016) Multilayer extreme learning machine with subnetwork nodes for representation learning. IEEE Trans Cybern 46(11):2570–2583CrossRef Yang Y, Wu QJ (2016) Multilayer extreme learning machine with subnetwork nodes for representation learning. IEEE Trans Cybern 46(11):2570–2583CrossRef
23.
go back to reference Huang G-B, Zhu Q-Y, Siew C-K (2006) Extreme learning machine: theory and applications. Neurocomputing 70(1):489–501CrossRef Huang G-B, Zhu Q-Y, Siew C-K (2006) Extreme learning machine: theory and applications. Neurocomputing 70(1):489–501CrossRef
24.
go back to reference Yang Y, Wu QJ (2016) Extreme learning machine with subnetwork hidden nodes for regression and classification. IEEE Trans Cybern 46(12):2885–2898CrossRef Yang Y, Wu QJ (2016) Extreme learning machine with subnetwork hidden nodes for regression and classification. IEEE Trans Cybern 46(12):2885–2898CrossRef
25.
go back to reference Yang Y, Wu QJ, Wang Y, Zeeshan K, Lin X, Yuan X (2015) Data partition learning with multiple extreme learning machines. IEEE Trans Cybern 45(8):1463–1475CrossRef Yang Y, Wu QJ, Wang Y, Zeeshan K, Lin X, Yuan X (2015) Data partition learning with multiple extreme learning machines. IEEE Trans Cybern 45(8):1463–1475CrossRef
26.
go back to reference Gong X, Qiao W (2013) Bearing fault diagnosis for direct-drive wind turbines via current-demodulated signals. IEEE Trans Ind Electron 60(8):3419–3428CrossRef Gong X, Qiao W (2013) Bearing fault diagnosis for direct-drive wind turbines via current-demodulated signals. IEEE Trans Ind Electron 60(8):3419–3428CrossRef
27.
go back to reference Huang NE (1998) Huang, n.e, et al.: The empirical mode decomposition and the hilbert spectrum for nonlinear and non-stationary time series analysis. proc. r. soc. lond. a 454, 903–995. Proc R Soc A Math Phys Eng Sci 454(1971):903–995MathSciNetCrossRef Huang NE (1998) Huang, n.e, et al.: The empirical mode decomposition and the hilbert spectrum for nonlinear and non-stationary time series analysis. proc. r. soc. lond. a 454, 903–995. Proc R Soc A Math Phys Eng Sci 454(1971):903–995MathSciNetCrossRef
Metadata
Title
Novel paralleled extreme learning machine networks for fault diagnosis of wind turbine drivetrain
Authors
Xian-Bo Wang
Zhi-Xin Yang
Pak Kin Wong
Chao Deng
Publication date
12-12-2018
Publisher
Springer Berlin Heidelberg
Published in
Memetic Computing / Issue 2/2019
Print ISSN: 1865-9284
Electronic ISSN: 1865-9292
DOI
https://doi.org/10.1007/s12293-018-0277-2

Other articles of this Issue 2/2019

Memetic Computing 2/2019 Go to the issue

Editorial

Editorial

Premium Partner