TY - JOUR
T1 - Wind turbine signal fault diagnosis using deep neural networks-inspired model
AU - Rababaah, Aaron Rasheed
N1 - Rababaah, A.(2021). Wind Turbine Signal Fault Diagnosis using Deep Neural Networks-InspiredModel. International Journal of Computer Applications in Technology
PY - 2023
Y1 - 2023
N2 - This work presents a deep neural network-inspired solution to intelligent signal fault diagnosis for wind turbine gearbox systems. A 1D convolution deep neural network architecture is proposed, constructed and validated. The proposed model was constructed of 1D signal for the input layer, ten different learned kernels as signal features, convolution layer, activation layer using rectified linear unit function, max-pooling layer, flatten layer and traditional multi-perceptron neural network for classification with soft-max class assignment. The data was acquired from real-world experiments conducted on real wind turbine gearboxes and archived by the National Renewable Energy Labs of the US Department of Energy. Ten independent experiments were conducted on 2,400,000 data points and the proposed model produced a mean classification accuracy of 96.14% for normal signals with a standard deviation of 0.0027 and a mean classification accuracy of 99.87% for faulty signals with a standard deviation of 0.0016.
AB - This work presents a deep neural network-inspired solution to intelligent signal fault diagnosis for wind turbine gearbox systems. A 1D convolution deep neural network architecture is proposed, constructed and validated. The proposed model was constructed of 1D signal for the input layer, ten different learned kernels as signal features, convolution layer, activation layer using rectified linear unit function, max-pooling layer, flatten layer and traditional multi-perceptron neural network for classification with soft-max class assignment. The data was acquired from real-world experiments conducted on real wind turbine gearboxes and archived by the National Renewable Energy Labs of the US Department of Energy. Ten independent experiments were conducted on 2,400,000 data points and the proposed model produced a mean classification accuracy of 96.14% for normal signals with a standard deviation of 0.0027 and a mean classification accuracy of 99.87% for faulty signals with a standard deviation of 0.0016.
KW - convolutional neural networks
KW - deep learning
KW - deep neural networks
KW - fault signal diagnosis
KW - gearbox
KW - signal features
KW - signal processing
KW - wind turbine
UR - http://www.scopus.com/inward/record.url?scp=85153848068&partnerID=8YFLogxK
U2 - 10.1504/IJCAT.2022.129378
DO - 10.1504/IJCAT.2022.129378
M3 - Article
SN - 0952-8091
VL - 69
SP - 365
EP - 376
JO - International Journal of Computer Applications in Technology
JF - International Journal of Computer Applications in Technology
IS - 4
ER -