This work proposes hybrid models combining time-series models (using linear functions) and artificial intelligence (using a nonlinear function) that can be used to provide monthly mean wind speed predictions for the Brazilian northeast region. These might be useful for wind power generation; for example, they could acquire important information on how the local wind potential can be usable for a possible wind power plant through understanding future wind speed values. To create the proposed hybrid models, it was necessary to set the wind speed variable as a dependent variable of exogenous variables (i.e., pressure, temperature, and precipitation). Thus, it was possible to consider the meteorological characteristics of the study regions. It ...
This study proposes an effective wind speed forecasting model combining a data processing strategy, ...
Wind energy, which is intermittent by nature, can have a significant impact on power grid security, ...
To mitigate the increase of anxiety resulting from the depletion of fossil fuels and destruction of ...
This work proposes hybrid models combining time-series models (using linear functions) and artifici...
Wind speed is one of the primary renewable sources for clean power. However, it is intermittent, pre...
In this paper, a new method is developed to model the wind speed data that is considered as a functi...
The electric power generation through wind turbines is one of the practically inexhaustible alternat...
One of the most crucial prerequisites for effective wind power planning and operation in power syste...
The need to deliver accurate predictions of renewable energy generation has long been recognized by ...
In the last few years, researchers have paid increasing attention to improving the accuracy of wind ...
One of the most crucial prerequisites for effective wind power planning and operation in power syste...
An artificial neural network was used for forecasting of long-term wind speed data (24 and 48 hours ...
In this paper a time series prediction of wind speed with artificial neural networks is presented. ...
Wind forecasting models are divided in two main categories, physical and statistical. The former ar...
Wind speed is the main component of wind power. Therefore, wind speed forecasting is of big importan...
This study proposes an effective wind speed forecasting model combining a data processing strategy, ...
Wind energy, which is intermittent by nature, can have a significant impact on power grid security, ...
To mitigate the increase of anxiety resulting from the depletion of fossil fuels and destruction of ...
This work proposes hybrid models combining time-series models (using linear functions) and artifici...
Wind speed is one of the primary renewable sources for clean power. However, it is intermittent, pre...
In this paper, a new method is developed to model the wind speed data that is considered as a functi...
The electric power generation through wind turbines is one of the practically inexhaustible alternat...
One of the most crucial prerequisites for effective wind power planning and operation in power syste...
The need to deliver accurate predictions of renewable energy generation has long been recognized by ...
In the last few years, researchers have paid increasing attention to improving the accuracy of wind ...
One of the most crucial prerequisites for effective wind power planning and operation in power syste...
An artificial neural network was used for forecasting of long-term wind speed data (24 and 48 hours ...
In this paper a time series prediction of wind speed with artificial neural networks is presented. ...
Wind forecasting models are divided in two main categories, physical and statistical. The former ar...
Wind speed is the main component of wind power. Therefore, wind speed forecasting is of big importan...
This study proposes an effective wind speed forecasting model combining a data processing strategy, ...
Wind energy, which is intermittent by nature, can have a significant impact on power grid security, ...
To mitigate the increase of anxiety resulting from the depletion of fossil fuels and destruction of ...