Nowadays, the energy sector is experiencing a profound transition. Among all renewable energy sources, wind energy is the most developed technology across the world. To ensure the profitability of wind turbines, it is essential to develop predictive maintenance strategies that will optimize energy production while preventing unexpected downtimes. With the huge amount of data collected every day, machine learning is seen as a key enabling approach for predictive maintenance of wind turbines. However, most of the effort is put into the optimization of the model architectures and its parameters, whereas data-related aspects are often neglected. The goal of this paper is to contribute to a better understanding of wind turbines through a data-ce...
The Machine Learning-Based Wind Turbine Control System (MLBWTCS) is a new technology that uses machi...
This research investigates the prediction of failure and remaining useful life (RUL) of gearboxes fo...
In this work, a novel predictive maintenance system is presented and applied to the main components ...
International audienceNowadays, the energy sector is experiencing a profound transition. Among all r...
The main goal of this paper is to review and evaluate how we can take advantage of state-of-the-art ...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...
Despite the strong world wide growth of the wind power industry, cost-effectiveness re-mains crucial...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
Renewable energy becomes progressively popular in the world because renewable resources such as sola...
This thesis investigates the possibility to use machine learning algorithms to predict the losses du...
Over the years wind turbines have become even more complex pieces of engineering. Given the huge pla...
The last few years have been marked by the transition of the world energy matrix, predominantly wit...
This research will investigate the use of Machine Learning techniques in various applications within...
The reliability requirements of wind turbines have increased significantly in recent years inthe sea...
The Machine Learning-Based Wind Turbine Control System (MLBWTCS) is a new technology that uses machi...
This research investigates the prediction of failure and remaining useful life (RUL) of gearboxes fo...
In this work, a novel predictive maintenance system is presented and applied to the main components ...
International audienceNowadays, the energy sector is experiencing a profound transition. Among all r...
The main goal of this paper is to review and evaluate how we can take advantage of state-of-the-art ...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...
Despite the strong world wide growth of the wind power industry, cost-effectiveness re-mains crucial...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
Renewable energy becomes progressively popular in the world because renewable resources such as sola...
This thesis investigates the possibility to use machine learning algorithms to predict the losses du...
Over the years wind turbines have become even more complex pieces of engineering. Given the huge pla...
The last few years have been marked by the transition of the world energy matrix, predominantly wit...
This research will investigate the use of Machine Learning techniques in various applications within...
The reliability requirements of wind turbines have increased significantly in recent years inthe sea...
The Machine Learning-Based Wind Turbine Control System (MLBWTCS) is a new technology that uses machi...
This research investigates the prediction of failure and remaining useful life (RUL) of gearboxes fo...
In this work, a novel predictive maintenance system is presented and applied to the main components ...