Title of article :
Convolutional neural networks for wind turbine gearbox health monitoring
Author/Authors :
Zare, Samira School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran,Iran , Ayati, Moosa School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran,Iran , Ha'iri Yazdi, Mohammad Reza School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran,Iran , Anaraki, Amin Kabir School of Mechanical Engineering - College of Engineering - University of Tehran, Tehran,Iran
Abstract :
Between different sources of renewable energy, wind energy, as an
economical source of electrical power, has undergone a pronounced
thriving. However, wind turbines are exposed to catastrophic failures,
which may bring about irrecoverable ramifications. Therefore, they
necessarily need condition monitoring and fault detection systems.
These systems aim to reduce the number of attempts operators are
required to do through the use of smart software algorithms, which are
able to understand and decide with no human involvement. The
gearboxes are usually responsible for the WT breakdowns. In this paper,
convolutional neural networks are employed to develop an intelligent
data-based condition-monitoring algorithm to differentiate healthy
and damaged conditions that are evaluated with the national
renewable energy laboratory (NREL) GRC database on the WT gearbox.
Since it is much easier for convolutional neural networks to extract clues
from high dimensional data, time-domain signals are embodied as
texture images. Results show that the proposed methodology by
utilizing a 2-D convolutional neural network for binary classification is
capable of classifying the NREL GRC database with 99.76% accuracy.
Keywords :
Wind Turbine , Gearbox Condition Monitoring , Convolutional Neural Networks (CNN) , Imaging Time-Series
Journal title :
Energy Equipment and Systems