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Preprint article · Journal article

Feature Extraction Using Discrete Wavelet Transform for Gear Fault Diagnosis of Wind Turbine Gearbox

From

Kreka Coal Mine1

University of Novi Sad2

Brüel and Kjær Sound and Vibration Measurement A/S3

Department of Electrical Engineering, Technical University of Denmark4

Center for Electric Power and Energy, Centers, Technical University of Denmark5

Smart Electric Components, Center for Electric Power and Energy, Centers, Technical University of Denmark6

Vibration diagnosis is one of the most common techniques in condition evaluation of wind turbine equipped with gearbox. On the other side, gearbox is one of the key components of wind turbine drivetrain. Due to the stochastic operation of wind turbines, the gearbox shaft rotating speed changes with high percentage, which limits the application of traditional vibration signal processing techniques, such as fast Fourier transform.

This paper investigates a new approach for wind turbine high speed shaft gear fault diagnosis using discrete wavelet transform and time synchronous averaging. First, the vibration signals are decomposed into a series of subbands signals with the use of amultiresolution analytical property of the discrete wavelet transform.Then, 22 condition indicators are extracted fromthe TSA signal, residual signal, and difference signal.Through the case study analysis, a new approach reveals the most relevant condition indicators based on vibrations that can be used for high speed shaft gear spalling fault diagnosis and their tracking abilities for fault degradation progression.

It is also shown that the proposed approach enhances the gearbox fault diagnosis ability in wind turbines. The approach presented in this paper was programmed in Matlab environment using data acquired on a 2MWwind turbine.

Language: English
Publisher: Shock and Vibration
Year: 2016
Pages: 1-10
ISSN: 18759203 and 10709622
Types: Preprint article and Journal article
DOI: 10.1155/2016/6748469
ORCIDs: 0000-0003-4436-9566 , 0000-0003-0843-2732 , 0000-0002-6756-2142 and Mijatovic, Nenad
Keywords

Physics QC1-999

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