To solve the problem of fault signals of wind turbine bearings being weak, not easy to extract, and difficult to identify, this paper proposes a fault diagnosis method for fan bearings based on Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN) and Grey Wolf Algorithm Optimization Kernel Extreme Learning Machine (GWO-KELM). First, eliminating the interference of noise on the collected vibration signal should be conducted, in which the wavelet threshold denoising approach is used in order to reduce the noise interference with the vibration signal. Next, CEEMDAN is used to decompose the signal after a denoising operation to obtain the multi-group intrinsic mode function (IMF), and the feature vector is selected by co...
In this paper, a novel fault diagnosis method based on vibration signal analysis is proposed for fau...
Bearing faults are the most common cause of wind turbine failures. Unavailability and maintenance co...
Wind turbine condition-monitoring and fault diagnosis have important practical value for wind farms ...
Under the complicated environment of large wind turbines, the vibration signal of a wind turbine has...
Bearing fault is usually buried by intensive noise because of the low speed and heavy load in direct...
Wind turbines are widely installed as the new source of cleaner energy production. Dynamic and rando...
To address the difficulty of early fault diagnosis of rolling bearings, this paper proposes a rollin...
The rapid expansion of wind farms has accelerated research into improving the reliability of wind tu...
Abstract In order to accurately identify a bearing fault on a wind turbine, a novel fault diagnosis ...
Bearing failures are the most common type of malfunction in wind turbines. As such, isolating these ...
The rapid expansion of wind farms has accelerated research into improving the reliability of wind tu...
Bearing failures are the most common type of malfunction in wind turbines. As such, isolating these ...
In view of the problem that the fault signal of the rolling bearing is weak and the fault feature is...
Bearings are crucial components that decide whether or not a wind turbine can work smoothly and that...
A comprehensive fault diagnosis method of rolling bearing about noise interference, fault feature ex...
In this paper, a novel fault diagnosis method based on vibration signal analysis is proposed for fau...
Bearing faults are the most common cause of wind turbine failures. Unavailability and maintenance co...
Wind turbine condition-monitoring and fault diagnosis have important practical value for wind farms ...
Under the complicated environment of large wind turbines, the vibration signal of a wind turbine has...
Bearing fault is usually buried by intensive noise because of the low speed and heavy load in direct...
Wind turbines are widely installed as the new source of cleaner energy production. Dynamic and rando...
To address the difficulty of early fault diagnosis of rolling bearings, this paper proposes a rollin...
The rapid expansion of wind farms has accelerated research into improving the reliability of wind tu...
Abstract In order to accurately identify a bearing fault on a wind turbine, a novel fault diagnosis ...
Bearing failures are the most common type of malfunction in wind turbines. As such, isolating these ...
The rapid expansion of wind farms has accelerated research into improving the reliability of wind tu...
Bearing failures are the most common type of malfunction in wind turbines. As such, isolating these ...
In view of the problem that the fault signal of the rolling bearing is weak and the fault feature is...
Bearings are crucial components that decide whether or not a wind turbine can work smoothly and that...
A comprehensive fault diagnosis method of rolling bearing about noise interference, fault feature ex...
In this paper, a novel fault diagnosis method based on vibration signal analysis is proposed for fau...
Bearing faults are the most common cause of wind turbine failures. Unavailability and maintenance co...
Wind turbine condition-monitoring and fault diagnosis have important practical value for wind farms ...