With the integration of wind energy into electricity grids, wind speed forecasting plays an important role in energy generation planning, power grid integration and turbine maintenance scheduling. This study proposes a hybrid wind speed forecasting model to enhance prediction performance. Variational mode decomposition (VMD) was applied to decompose the original wind speed series into different sub-series with various frequencies. A least squares support vector machine (LSSVM) model with the pertinent parameters being optimized by a bat algorithm (BA) was established to forecast those sub-series extracted from VMD. The ultimate forecast of wind speed can be obtained by accumulating the prediction values of each sub-series. The results show ...
The ability to estimate wind speed accurately is crucial for optimizing the utilization of wind ener...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
This study proposes an effective wind speed forecasting model combining a data processing strategy, ...
Affected by various environmental factors, wind speed presents high fluctuation, nonlinear and non-s...
Affected by various environmental factors, wind speed presents high fluctuation, nonlinear and non-s...
Short-term wind speed forecasting is crucial to the utilization of wind energy, and it has been empl...
Wind speed forecasting plays a crucial role in improving the efficiency of wind farms, and increases...
Wind speed forecasting plays a crucial role in improving the efficiency of wind farms, and increases...
Regarding the non-stationary and stochastic nature of wind power, wind power generation forecasting ...
The aims of this study contribute to a new hybrid model by combining ensemble empirical mode decompo...
To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term w...
Due to inherent randomness and fluctuation of wind speeds, it is very challenging to develop an effe...
Due to inherent randomness and fluctuation of wind speeds, it is very challenging to develop an effe...
Accurate wind speed forecasting is a fundamental element of wind power prediction. Thus, a new hybri...
Accurate wind speed forecasting is a fundamental element of wind power prediction. Thus, a new hybri...
The ability to estimate wind speed accurately is crucial for optimizing the utilization of wind ener...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
This study proposes an effective wind speed forecasting model combining a data processing strategy, ...
Affected by various environmental factors, wind speed presents high fluctuation, nonlinear and non-s...
Affected by various environmental factors, wind speed presents high fluctuation, nonlinear and non-s...
Short-term wind speed forecasting is crucial to the utilization of wind energy, and it has been empl...
Wind speed forecasting plays a crucial role in improving the efficiency of wind farms, and increases...
Wind speed forecasting plays a crucial role in improving the efficiency of wind farms, and increases...
Regarding the non-stationary and stochastic nature of wind power, wind power generation forecasting ...
The aims of this study contribute to a new hybrid model by combining ensemble empirical mode decompo...
To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term w...
Due to inherent randomness and fluctuation of wind speeds, it is very challenging to develop an effe...
Due to inherent randomness and fluctuation of wind speeds, it is very challenging to develop an effe...
Accurate wind speed forecasting is a fundamental element of wind power prediction. Thus, a new hybri...
Accurate wind speed forecasting is a fundamental element of wind power prediction. Thus, a new hybri...
The ability to estimate wind speed accurately is crucial for optimizing the utilization of wind ener...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
This study proposes an effective wind speed forecasting model combining a data processing strategy, ...