International audience— As the global energy demand is increasing, the share of renewable energy and specifically wind energy in the supply is growing. While vast literature exists on the design and operation of wind turbines, there exists a gap in the literature with regards to the investigation and analysis of wind turbine accidents. This paper describes the application of text mining and machine learning techniques for discovering actionable insights and knowledge from news articles on wind turbine accidents. The applied analysis methods are text processing, clustering, and multidimensional scaling (MDS). These methods have been combined under a single analysis framework, and new insights have been discovered for the domain. The results ...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
International audienceNowadays, the energy sector is experiencing a profound transition. Among all r...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...
Despite the significance and growth of wind energy as a major source of renewable energy, research o...
Detecting and determining which systems or subsystems of a wind turbine have more failures is essent...
While the global production of wind energy is increasing, there exists a significant gap in the acad...
This study reviews and analyses the recent research and development and trends in the applications o...
This data sets includes 216 news on 240 wind turbine accidents between the years 1980 and 2013. The...
This research will investigate the use of Machine Learning techniques in various applications within...
Wind energy is one of the fastest-growing sustainable energy sources in the world but relies crucial...
Specification of 'normal' wind turbine operating behaviour for rapid anomaly detection: through the ...
Optimizing the operation and maintenance of wind turbines is crucial as the wind energy sector conti...
Wind Turbine condition monitoring can detect anomalies in turbine performance which have the potenti...
Text mining is a process of extracting information of interest, from the text. In here, we applied t...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
International audienceNowadays, the energy sector is experiencing a profound transition. Among all r...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...
Despite the significance and growth of wind energy as a major source of renewable energy, research o...
Detecting and determining which systems or subsystems of a wind turbine have more failures is essent...
While the global production of wind energy is increasing, there exists a significant gap in the acad...
This study reviews and analyses the recent research and development and trends in the applications o...
This data sets includes 216 news on 240 wind turbine accidents between the years 1980 and 2013. The...
This research will investigate the use of Machine Learning techniques in various applications within...
Wind energy is one of the fastest-growing sustainable energy sources in the world but relies crucial...
Specification of 'normal' wind turbine operating behaviour for rapid anomaly detection: through the ...
Optimizing the operation and maintenance of wind turbines is crucial as the wind energy sector conti...
Wind Turbine condition monitoring can detect anomalies in turbine performance which have the potenti...
Text mining is a process of extracting information of interest, from the text. In here, we applied t...
Increasing awareness about climate change and increasing interest in renewable energy is fueling the...
With the increase in the installed capacity of wind power systems, the fault diagnosis and condition...
International audienceNowadays, the energy sector is experiencing a profound transition. Among all r...
This paper reviews the recent literature on machine learning (ML) models that have been used for con...