Wind power is one of the fastest-growing renewable energy sectors instrumental in the ongoing decarbonization process. However, wind turbines are subjected to a wide range of dynamic loads which can cause more frequent failures and downtime periods, leading to ever-increasing attention to effective Condition Monitoring strategies. In this paper, we propose a novel unsupervised deep anomaly detection framework to detect anomalies in wind turbines based on SCADA data. We introduce a promising neural architecture, namely a Graph Convolutional Autoencoder for Multivariate Time series, to model the sensor network as a dynamical functional graph. This structure improves the unsupervised learning capabilities of Autoencoders by considering individ...
In this work we are addressing the problem of statistical modeling of the joint distribution of data...
The penetration of wind energy into power systems is steadily increasing; this highlights the import...
Premature failures caused by excessive wear are responsible for a large fraction of the maintenance ...
Autonomous fault detection plays a major role in the Critical Energy Infrastructure (CEI) domain, si...
A working wind turbine generates a large amount of multivariate time-series data, which contain abun...
Fault detection and classification are considered as one of the most mandatory techniques in nowaday...
We demonstrate the deployment of a novel deep learning algorithm enabling smart maintenance of wind ...
As a renewable energy source and an alternative to fossil fuels, the wind power industry is growing ...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
Data collected from the supervisory control and data acquisition (SCADA) system, used widely in wind...
The arising demand for renewable sources of energies has led to a major focus on wind turbine based ...
The last decade has witnessed an increased interest in applying machine learning techniques to predi...
The existing supervisory control and data acquisition (SCADA) system continuously collects data from...
This paper proposes an approach for maintenancemanagement of wind turbines based on their life. The ...
Offshore wind is a rapidly maturing renewable energy that has presented a large growth over the last...
In this work we are addressing the problem of statistical modeling of the joint distribution of data...
The penetration of wind energy into power systems is steadily increasing; this highlights the import...
Premature failures caused by excessive wear are responsible for a large fraction of the maintenance ...
Autonomous fault detection plays a major role in the Critical Energy Infrastructure (CEI) domain, si...
A working wind turbine generates a large amount of multivariate time-series data, which contain abun...
Fault detection and classification are considered as one of the most mandatory techniques in nowaday...
We demonstrate the deployment of a novel deep learning algorithm enabling smart maintenance of wind ...
As a renewable energy source and an alternative to fossil fuels, the wind power industry is growing ...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
Data collected from the supervisory control and data acquisition (SCADA) system, used widely in wind...
The arising demand for renewable sources of energies has led to a major focus on wind turbine based ...
The last decade has witnessed an increased interest in applying machine learning techniques to predi...
The existing supervisory control and data acquisition (SCADA) system continuously collects data from...
This paper proposes an approach for maintenancemanagement of wind turbines based on their life. The ...
Offshore wind is a rapidly maturing renewable energy that has presented a large growth over the last...
In this work we are addressing the problem of statistical modeling of the joint distribution of data...
The penetration of wind energy into power systems is steadily increasing; this highlights the import...
Premature failures caused by excessive wear are responsible for a large fraction of the maintenance ...