As the uncertain nature of wind energy is the main reason behind inconsistency in functioning of the wind energy conversion systems (WECS), the accurate forecasting of wind characteristics such as wind speed and wind direction is helpful for more realistic and consistent results. Due to the efficiency in addressing long term temporal features and extreme nonlinearities, the authors have utilized Long Short Term Memory Networks (LSTMs) to model the wind characteristics in this work. However, the heuristic way of hyper-parameter selection (architecture design and activation function choice) in LSTMs makes their modelling inefficient and tedious. A novel algorithm to design LSTMs optimally by balancing the trade-off between number of parameter...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
Wind power generation has presented an important development around the world. However, its integrat...
Scientists, investors and policy makers have become aware of the importance of providing near accura...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
Decarbonizing the energy supply requires extensive use of renewable generation. Their intermittent n...
Decarbonizing the energy supply requires extensive use of renewable generation. Their intermittent n...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
In order to assess the level of power reserves during down-regulation, the available power of a wind...
Climate Change heavily impacts global cities, the downsides of which can be minimized by adopting re...
The integration of wind farms in power networks has become an important problem. As the electricity...
This research focuses on employing Recurrent Neural Networks (RNN) to prognosis a wind turbine opera...
In this paper, an intelligent approach to the Short-Term Wind Power Prediction (STWPP) problem is co...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
Wind power generation has presented an important development around the world. However, its integrat...
Scientists, investors and policy makers have become aware of the importance of providing near accura...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
Decarbonizing the energy supply requires extensive use of renewable generation. Their intermittent n...
Decarbonizing the energy supply requires extensive use of renewable generation. Their intermittent n...
Effective wind power prediction will facilitate the world’s long-term goal in sustainable developmen...
In order to assess the level of power reserves during down-regulation, the available power of a wind...
Climate Change heavily impacts global cities, the downsides of which can be minimized by adopting re...
The integration of wind farms in power networks has become an important problem. As the electricity...
This research focuses on employing Recurrent Neural Networks (RNN) to prognosis a wind turbine opera...
In this paper, an intelligent approach to the Short-Term Wind Power Prediction (STWPP) problem is co...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model...