Autonomous fault detection plays a major role in the Critical Energy Infrastructure (CEI) domain, since sensor faults cause irreparable damage and lead to incorrect results on the condition monitoring of Cyber-Physical (CP) systems. This paper focuses on the challenging application of wind turbine (WT) monitoring. Specifically, we propose the two challenging architectures based on learning deep features, namely—Long Short Term Memory-Stacked Autoencoders (LSTM-SAE), and Convolutional Neural Network (CNN-SAE), for semi-supervised fault detection in wind CPs. The internal learnt features will facilitate the classification task by assigning each upcoming measurement into its corresponding faulty/normal operation status. To illustrate the quali...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
Cost-effective condition monitoring techniques are required to optimise wind turbine maintenance pro...
Wind energy has shown significant growth in terms of installed power in the last decade. However, on...
Wind power is one of the fastest-growing renewable energy sectors instrumental in the ongoing decarb...
We demonstrate the deployment of a novel deep learning algorithm enabling smart maintenance of wind ...
Fault detection and classification are considered as one of the most mandatory techniques in nowaday...
Wind power has gained wide popularity due to the increasingly serious energy and environmental crisi...
As a renewable energy source and an alternative to fossil fuels, the wind power industry is growing ...
Wind turbines consist of many mechanical, electrical and hydraulic components. Failures in any of th...
Offshore wind is a rapidly maturing renewable energy that has presented a large growth over the last...
Concerning the fact that the number of wind turbines is increasing worldwide, it seems necessary to...
Machine learning algorithms for early fault detection of wind turbines using 10-minute SCADA data ar...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
Wind Turbine (WT) blades undergo high operational loads, experience critical environmental condition...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
Cost-effective condition monitoring techniques are required to optimise wind turbine maintenance pro...
Wind energy has shown significant growth in terms of installed power in the last decade. However, on...
Wind power is one of the fastest-growing renewable energy sectors instrumental in the ongoing decarb...
We demonstrate the deployment of a novel deep learning algorithm enabling smart maintenance of wind ...
Fault detection and classification are considered as one of the most mandatory techniques in nowaday...
Wind power has gained wide popularity due to the increasingly serious energy and environmental crisi...
As a renewable energy source and an alternative to fossil fuels, the wind power industry is growing ...
Wind turbines consist of many mechanical, electrical and hydraulic components. Failures in any of th...
Offshore wind is a rapidly maturing renewable energy that has presented a large growth over the last...
Concerning the fact that the number of wind turbines is increasing worldwide, it seems necessary to...
Machine learning algorithms for early fault detection of wind turbines using 10-minute SCADA data ar...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
Wind Turbine (WT) blades undergo high operational loads, experience critical environmental condition...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
Cost-effective condition monitoring techniques are required to optimise wind turbine maintenance pro...
Wind energy has shown significant growth in terms of installed power in the last decade. However, on...