Title of article :
Fault detection and isolation of wind turbine gearbox via noise-assisted multivariate empirical mode decomposition algorithm
Author/Authors :
Siahpour, Shahin Department of Mechanical and Materials Engineering - University of Cincinnati, Cincinnati, OH, USA , Ayati, Moosa School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran, Iran , Haeri-Yazdi, Mohamadreza School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran, Iran , Mousavi, Mohammad Department of Mechanical Engineering - State University of New York at Binghamton, Binghamton, NY, USA
Abstract :
The wind turbine power transmission system exploits a
planetary gearbox due to its large power transmission. In
comparison with the common rotating systems, the wind
turbine (WT) gearbox is assumed a complex system. Therefore,
condition monitoring and fault detection isolation (FDI) of such
systems are not straightforward and conventional signal
processing methods (e.g. Fast Fourier transform) are not
applicable or do not have an acceptable output accuracy. This
paper proposes a new FDI approach for wind turbines based on
vibration signals’ signatures derived from the multivariate
empirical mode decomposition (MEMD) algorithm. Vibration
signals are measured from a 750 kW planetary wind turbine
gearbox on a dynamometer test rig provided by National
Renewable Energy Laboratory (NREL). In WT applications, to
gather enough data with high accuracy and to avoid losing
local information, multiple sensors must be utilized to collect
data from different locations of the gearbox yielding a multi-
sensory dataset. In standard EMD, joint information of multi-
sensory data will be lost. Additionally, the intrinsic mode
function (IMF) groups may not have the same characteristic
features. To capture cross information of the dataset and to
remove the effect of noise on the output results, a noise-assisted
MEMD (NA-MEMD) algorithm is employed. Vibration signal
features are also extracted by using discrete wavelet transform
(DWT). Three major faults of the WT gearbox are detected
using NA-MEMD and a comparison between NA-MEMD and
DWT methods confirms the capability of the NA-MEMD
method.
Keywords :
Multivariate Empirical Mode Decomposition (MEMD) , Noise-Assisted MEMD , Vibration Signals Signature , Wind Turbine Gearbox , Fault Detection and Isolation
Journal title :
Energy Equipment and Systems