The time series of wind power is influenced by many external factors, showing strong volatility and randomness. Aiming at the problem of low prediction accuracy of wind power time series, this paper proposes a short-term wind power prediction framework based on two-layer decomposition and the combination of ensemble model and deep network, which is composed of complete ensemble empirical mode decomposition (CEEMD), sample entropy (SE), stacking ensemble, linear regression (LR), variational mode decomposition (VMD), long short term memory (LSTM) and multi-layer perceptron (MLP). Firstly, CEEMD is used to decompose the time series of wind power into different modes and then SE is used for reconstruction. Secondly, different models are applied...
In order to further improve the accuracy of wind power forecasting, a combined forecasting method ba...
Wind energy, as a kind of environmentally friendly renewable energy, has attracted a lot of attentio...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
The instability of wind power poses a great threat to the security of the power system, and accurate...
A hybrid short-term wind power prediction model based on data decomposition and combined deep neural...
Effective short-term wind power prediction is crucial to the optimal dispatching, system stability, ...
To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term w...
The randomness and volatility of wind power poses a serious threat to the stability, continuity, and...
Abstract Because of the uncertainty and randomness of wind speed, wind power has characteristics suc...
Wind power prediction decreases the uncertainty of the entire energy system, which is essential for ...
Accurate wind power forecasting helps relieve the regulation pressure of a power system, which is of...
With the expansion of wind power grid integration, the challenges of sharp fluctuations and high unc...
Short-term wind speed prediction is of cardinal significance for maximization of wind power utilizat...
Short-term wind speed prediction is of cardinal significance for maximization of wind power utilizat...
In terms of the problems of high feature dimension and large data redundancy in the wind and solar p...
In order to further improve the accuracy of wind power forecasting, a combined forecasting method ba...
Wind energy, as a kind of environmentally friendly renewable energy, has attracted a lot of attentio...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...
The instability of wind power poses a great threat to the security of the power system, and accurate...
A hybrid short-term wind power prediction model based on data decomposition and combined deep neural...
Effective short-term wind power prediction is crucial to the optimal dispatching, system stability, ...
To reduce the influence of the random fluctuation on wind power prediction, a new ultra-short-term w...
The randomness and volatility of wind power poses a serious threat to the stability, continuity, and...
Abstract Because of the uncertainty and randomness of wind speed, wind power has characteristics suc...
Wind power prediction decreases the uncertainty of the entire energy system, which is essential for ...
Accurate wind power forecasting helps relieve the regulation pressure of a power system, which is of...
With the expansion of wind power grid integration, the challenges of sharp fluctuations and high unc...
Short-term wind speed prediction is of cardinal significance for maximization of wind power utilizat...
Short-term wind speed prediction is of cardinal significance for maximization of wind power utilizat...
In terms of the problems of high feature dimension and large data redundancy in the wind and solar p...
In order to further improve the accuracy of wind power forecasting, a combined forecasting method ba...
Wind energy, as a kind of environmentally friendly renewable energy, has attracted a lot of attentio...
Wind power time series data always exhibits nonlinear and non-stationary features, making it very di...