شماره ركورد كنفرانس :
4567
عنوان مقاله :
Deep Generative Convolutional Neural Network based Wind Turbines Condition Monitoring
Author/Authors :
Benyamin Parang School of Electrical and Computer Engineering - Shiraz University Shiraz, Iran , Shahabodin Afrasiabi School of Electrical and Computer Engineering - Shiraz University Shiraz, Iran , Mousa Afrasiabi School of Electrical and Computer Engineering - Shiraz University Shiraz, Iran , Mohammad Mohammadi School of Electrical and Computer Engineering - Shiraz University Shiraz, Iran , Mohammad Rastegar School of Electrical and Computer Engineering - Shiraz University Shiraz, Iran
كليدواژه :
Wind turbine fault classification , (Generative adversarial network (GAN , (Convolutional neural network (CNN , Deep learning , Condition and monitoring of WT
عنوان كنفرانس :
ششمين كنفرانس ملي ساليانه انرژي پاك
چكيده لاتين :
Condition monitoring of wind turbines (WTs) has attracted attention due to fast
development of WTs. The inherent intermittence of wind energy and being located
in remote area makes it difficult to design proper fault diagnosing method for WTs.
To address this issue, we proposed a two block deep learning based method in this
paper, which encapsulates two feature extraction and classification in an end-toend
architecture. In the designed method, we used generative adversarial network
(GAN) as the feature extraction block and convolutional neural network (CNN) as
the fault classifier block. The simulations are fulfilled based on real-data from a 3
MGW WT in Ireland, which is obtained from supervisory control and data
acquisition system (SCADA). The results demonstrate that the proposed method is
a proper alternative for fault classification of WTs. To show the superiority of the
proposed method, the results are compared with the results of applying support
vector machine (SVM) and feed-forward neural network (FFNN).