The predictability of wind energy is crucial due to the uncertain and intermittent features of wind energy. This study proposes wind speed forecasting models, which employ time series clustering approaches and deep learning methods. The deep learning (LSTM) model utilizes the preprocessed data as input and returns data features. The Dirichlet mixture model and dynamic time-warping method cluster the time-series data features and then deep learning in forecasting. Particularly, the Dirichlet mixture model and dynamic warping method cluster the time-series data features. Next, the deep learning models use the entire (global) and clustered (local) data to capture the long-term and short-term patterns, respectively. Furthermore, an ensemble mod...
Wind speed prediction with spatio–temporal correlation is among the most challenging tasks in wind s...
It is very important to accurately detect wind direction and speed for wind energy that is one of th...
High variability of wind in the farm areas causes a drastic instability in the energy markets. There...
To balance electricity production and demand, it is required to use different prediction techniques ...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
This article belongs to the Special Issue Deep Learning Applications with Practical Measured Results...
International audienceWe focus on deep learning algorithms, improving upon the Weather Research and ...
Despite the great significance of precisely forecasting the wind speed for development of the new an...
This paper introduces a data-driven predictive model based on deep convolutional neural networks (CN...
This paper proposes a procedural pipeline for wind forecasting based on clustering and regression. F...
This paper proposed deep learning to create an accurate forecasting system that uses a deep convolut...
Two-stage ensemble-based forecasting methods have been studied extensively in the wind power forecas...
Accurate wind power forecasting plays a critical role in the operation of wind parks and the dispatc...
Wind speed prediction with spatio–temporal correlation is among the most challenging tasks in wind s...
It is very important to accurately detect wind direction and speed for wind energy that is one of th...
High variability of wind in the farm areas causes a drastic instability in the energy markets. There...
To balance electricity production and demand, it is required to use different prediction techniques ...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
Deep Learning Convolutional Neural Networks have been successfully used in many applications. Its ve...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
This article belongs to the Special Issue Deep Learning Applications with Practical Measured Results...
International audienceWe focus on deep learning algorithms, improving upon the Weather Research and ...
Despite the great significance of precisely forecasting the wind speed for development of the new an...
This paper introduces a data-driven predictive model based on deep convolutional neural networks (CN...
This paper proposes a procedural pipeline for wind forecasting based on clustering and regression. F...
This paper proposed deep learning to create an accurate forecasting system that uses a deep convolut...
Two-stage ensemble-based forecasting methods have been studied extensively in the wind power forecas...
Accurate wind power forecasting plays a critical role in the operation of wind parks and the dispatc...
Wind speed prediction with spatio–temporal correlation is among the most challenging tasks in wind s...
It is very important to accurately detect wind direction and speed for wind energy that is one of th...
High variability of wind in the farm areas causes a drastic instability in the energy markets. There...