High-quality datasets are of paramount importance for the operation and planning of wind farms. However, the datasets collected by the supervisory control and data acquisition (SCADA) system may contain missing data due to various factors such as sensor failure and communication congestion. In this paper, a data-driven approach is proposed to fill the missing data of wind farms based on a context encoder (CE), which consists of an encoder, a decoder, and a discriminator. Through deep convolutional neural networks, the proposed method is able to automatically explore the complex nonlinear characteristics of the datasets that are difficult to be modeled explicitly. The proposed method can not only fully use the surrounding context information...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
A data-based estimation of the wind-power curve in wind turbines may be a challenging task due to th...
The amount of data is of crucial to the accuracy of fault classification through machine learning te...
Wind power is one of the fastest-growing renewable energy sectors instrumental in the ongoing decarb...
In this work we are addressing the problem of statistical modeling of the joint distribution of data...
The last decade has witnessed an increased interest in applying machine learning techniques to predi...
Data collected from the supervisory control and data acquisition (SCADA) system, used widely in wind...
Missing or corrupt data is common in real-world datasets; this affects the estimation and operation ...
Availability of reliable and extended datasets of recorded power output from renewables is nowadays ...
Missing or corrupt data is common in real-world datasets; this affects the estimation and operation ...
Wind turbine operators usually use data from a Supervisory Control and Data Acquisition system to mo...
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...
A popular method to detect anomalous behaviour or specific failures in wind turbine sensor data uses...
Major failures in wind turbines are expensive to repair and cause loss of revenue due to long downti...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
A data-based estimation of the wind-power curve in wind turbines may be a challenging task due to th...
The amount of data is of crucial to the accuracy of fault classification through machine learning te...
Wind power is one of the fastest-growing renewable energy sectors instrumental in the ongoing decarb...
In this work we are addressing the problem of statistical modeling of the joint distribution of data...
The last decade has witnessed an increased interest in applying machine learning techniques to predi...
Data collected from the supervisory control and data acquisition (SCADA) system, used widely in wind...
Missing or corrupt data is common in real-world datasets; this affects the estimation and operation ...
Availability of reliable and extended datasets of recorded power output from renewables is nowadays ...
Missing or corrupt data is common in real-world datasets; this affects the estimation and operation ...
Wind turbine operators usually use data from a Supervisory Control and Data Acquisition system to mo...
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...
A popular method to detect anomalous behaviour or specific failures in wind turbine sensor data uses...
Major failures in wind turbines are expensive to repair and cause loss of revenue due to long downti...
Data-driven approaches have gained increasing interests in the fault detection of wind turbines (WTs...
A data-based estimation of the wind-power curve in wind turbines may be a challenging task due to th...
The amount of data is of crucial to the accuracy of fault classification through machine learning te...