This research focuses on employing Recurrent Neural Networks (RNN) to prognosis a wind turbine operation’s health from collected vibration time series data, by using several memory cell variations, including Long Short Time Memory (LSTM), Bilateral LSTM (BiLSTM), and Gated Recurrent Unit (GRU), which are integrated into various architectures. We tune the training hyperparameters as well as the adapted depth and recurrent cell number of the proposed networks to obtain the most accurate predictions. Tuning those parameters is a hard task and depends widely on the experience of the designer. This can be resolved by integrating the training process in a Bayesian optimization loop where the loss is considered as the objective function to minimiz...
Asset management of wind turbines has gained increased importance in recent years. High maintenance ...
The engineering sub-discipline of Structural Health Monitoring (SHM) promises that actionable insigh...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
In order to improve the safety, efficiency, and reliability in large scale wind turbines, a great de...
As the uncertain nature of wind energy is the main reason behind inconsistency in functioning of the...
Wind power generation has presented an important development around the world. However, its integrat...
Scientists, investors and policy makers have become aware of the importance of providing near accura...
Predicting the remaining useful life (RUL) of critical subassemblies can provide an advanced mainten...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
In recent years Supervisory Control and Data Acquisition (SCADA) system has been used to monitor the...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
Fatigue loads represent a critical element in several aeronautical applications and Wind Turbines (W...
Fatigue loads represent a critical element in several aeronautical applications and Wind Turbines (W...
In recent years Supervisory Control and Data Acquisition (SCADA) system has been used to monitor the...
Wind energy generation fluctuations and intermittency issues create inefficiency and instability in ...
Asset management of wind turbines has gained increased importance in recent years. High maintenance ...
The engineering sub-discipline of Structural Health Monitoring (SHM) promises that actionable insigh...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...
In order to improve the safety, efficiency, and reliability in large scale wind turbines, a great de...
As the uncertain nature of wind energy is the main reason behind inconsistency in functioning of the...
Wind power generation has presented an important development around the world. However, its integrat...
Scientists, investors and policy makers have become aware of the importance of providing near accura...
Predicting the remaining useful life (RUL) of critical subassemblies can provide an advanced mainten...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
In recent years Supervisory Control and Data Acquisition (SCADA) system has been used to monitor the...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
Fatigue loads represent a critical element in several aeronautical applications and Wind Turbines (W...
Fatigue loads represent a critical element in several aeronautical applications and Wind Turbines (W...
In recent years Supervisory Control and Data Acquisition (SCADA) system has been used to monitor the...
Wind energy generation fluctuations and intermittency issues create inefficiency and instability in ...
Asset management of wind turbines has gained increased importance in recent years. High maintenance ...
The engineering sub-discipline of Structural Health Monitoring (SHM) promises that actionable insigh...
In this paper two artificially intelligent methodologies are proposed and developed for degradation ...