A wind power short-term forecasting method based on discrete wavelet transform and long short-term memory networks (DWT_LSTM) is proposed. The LSTM network is designed to effectively exhibit the dynamic behavior of the wind power time series. The discrete wavelet transform is introduced to decompose the non-stationary wind power time series into several components which have more stationarity and are easier to predict. Each component is dug by an independent LSTM. The forecasting results of the wind power are obtained by synthesizing the prediction values of all components. The prediction accuracy has been improved by the proposed method, which is validated by the MAE (mean absolute error), MAPE (mean absolute percentage error), and RMSE (r...
Wind power generation has presented an important development around the world. However, its integrat...
This article belongs to the Special Issue Deep Learning Applications with Practical Measured Results...
Wind power is prone to dramatic fluctuations in the short term, posing a threat to the safety and st...
Short-term wind power forecasting is of great significance to the real-time dispatching of power sys...
Short-term time series wind power predictions are extremely essential for accurate and efficient off...
To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term w...
In terms of the problems of high feature dimension and large data redundancy in the wind and solar p...
To improve the accuracy of short-term wind power prediction, a short-term wind power prediction mode...
Aiming at the chaotic characteristics of wind power sequence and combined with meteorological inform...
High-precision forecasting of short-term wind power (WP) is integral for wind farms, the safe dispat...
The time series of wind power is influenced by many external factors, showing strong volatility and ...
The accurate and reliable wind speed prediction can benefit the wind power forecasting and its consu...
The accurate and reliable wind speed prediction can benefit the wind power forecasting and its consu...
The accurate and reliable wind speed prediction can benefit the wind power forecasting and its consu...
Since wind power generation has strong randomness and is difficult to predict, a class of combined p...
Wind power generation has presented an important development around the world. However, its integrat...
This article belongs to the Special Issue Deep Learning Applications with Practical Measured Results...
Wind power is prone to dramatic fluctuations in the short term, posing a threat to the safety and st...
Short-term wind power forecasting is of great significance to the real-time dispatching of power sys...
Short-term time series wind power predictions are extremely essential for accurate and efficient off...
To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term w...
In terms of the problems of high feature dimension and large data redundancy in the wind and solar p...
To improve the accuracy of short-term wind power prediction, a short-term wind power prediction mode...
Aiming at the chaotic characteristics of wind power sequence and combined with meteorological inform...
High-precision forecasting of short-term wind power (WP) is integral for wind farms, the safe dispat...
The time series of wind power is influenced by many external factors, showing strong volatility and ...
The accurate and reliable wind speed prediction can benefit the wind power forecasting and its consu...
The accurate and reliable wind speed prediction can benefit the wind power forecasting and its consu...
The accurate and reliable wind speed prediction can benefit the wind power forecasting and its consu...
Since wind power generation has strong randomness and is difficult to predict, a class of combined p...
Wind power generation has presented an important development around the world. However, its integrat...
This article belongs to the Special Issue Deep Learning Applications with Practical Measured Results...
Wind power is prone to dramatic fluctuations in the short term, posing a threat to the safety and st...