To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term wind power prediction model, based on wavelet decomposition (WD), variational mode decomposition (VMD), and least-squares support vector machine (LSSVM), is proposed in this paper. The method is based on the double decomposition and LSSVM, where the wind power sequence is decomposed by WD into low- and high-frequency components, which are further decomposed by VMD to obtain many modal components with tendency and periodicity. Multiple LSSVM prediction models are then established with historical wind power data and weather data as the inputs to obtain the predicted values of the multiple modal components. The final predicted values of wind powe...
This paper proposes a wavelet support vector machine (WSVM)-based model for short-term wind power pr...
Effective short-term wind power prediction is crucial to the optimal dispatching, system stability, ...
Since wind power generation has strong randomness and is difficult to predict, a class of combined p...
With the integration of wind energy into electricity grids, wind speed forecasting plays an importan...
Abstract Because of the uncertainty and randomness of wind speed, wind power has characteristics suc...
Wind power is developing rapidly in the context of sustainable development, and a series of problems...
The time series of wind power is influenced by many external factors, showing strong volatility and ...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
In order to further improve the accuracy of wind power forecasting, a combined forecasting method ba...
A wind power short-term forecasting method based on discrete wavelet transform and long short-term m...
High-precision wind power prediction is important for the planning, economics, and security maintena...
Wind turbines are very important and strategic instruments in energy markets. Wind power production ...
The continuous increase in energy consumption has made the potential of wind-power generation tremen...
A high penetration of wind energy into the electricity market requires a parallel development of eff...
A high penetration of wind energy into the electricity market requires a parallel development of eff...
This paper proposes a wavelet support vector machine (WSVM)-based model for short-term wind power pr...
Effective short-term wind power prediction is crucial to the optimal dispatching, system stability, ...
Since wind power generation has strong randomness and is difficult to predict, a class of combined p...
With the integration of wind energy into electricity grids, wind speed forecasting plays an importan...
Abstract Because of the uncertainty and randomness of wind speed, wind power has characteristics suc...
Wind power is developing rapidly in the context of sustainable development, and a series of problems...
The time series of wind power is influenced by many external factors, showing strong volatility and ...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
In order to further improve the accuracy of wind power forecasting, a combined forecasting method ba...
A wind power short-term forecasting method based on discrete wavelet transform and long short-term m...
High-precision wind power prediction is important for the planning, economics, and security maintena...
Wind turbines are very important and strategic instruments in energy markets. Wind power production ...
The continuous increase in energy consumption has made the potential of wind-power generation tremen...
A high penetration of wind energy into the electricity market requires a parallel development of eff...
A high penetration of wind energy into the electricity market requires a parallel development of eff...
This paper proposes a wavelet support vector machine (WSVM)-based model for short-term wind power pr...
Effective short-term wind power prediction is crucial to the optimal dispatching, system stability, ...
Since wind power generation has strong randomness and is difficult to predict, a class of combined p...