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Improved Wind Speed Prediction Using Empirical Mode Decomposition
by
ZHANG, Y.
, ZHANG, C.
, SUN, J.
, GUO, J.
in
Accuracy
/ Algorithms
/ Alternative energy sources
/ Artificial intelligence
/ Carbon
/ Decomposition
/ Electric industries
/ Electric power grids
/ empirical mode decomposition
/ Energy conversion
/ least squares support vector basis
/ Methods
/ Neural networks
/ Prediction models
/ Radial basis function
/ radial basis function neural network
/ renewable energy
/ Statistical analysis
/ Support vector machines
/ Volatility
/ Wind power
/ Wind speed
/ wind speed prediction
2018
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Improved Wind Speed Prediction Using Empirical Mode Decomposition
by
ZHANG, Y.
, ZHANG, C.
, SUN, J.
, GUO, J.
in
Accuracy
/ Algorithms
/ Alternative energy sources
/ Artificial intelligence
/ Carbon
/ Decomposition
/ Electric industries
/ Electric power grids
/ empirical mode decomposition
/ Energy conversion
/ least squares support vector basis
/ Methods
/ Neural networks
/ Prediction models
/ Radial basis function
/ radial basis function neural network
/ renewable energy
/ Statistical analysis
/ Support vector machines
/ Volatility
/ Wind power
/ Wind speed
/ wind speed prediction
2018
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Do you wish to request the book?
Improved Wind Speed Prediction Using Empirical Mode Decomposition
by
ZHANG, Y.
, ZHANG, C.
, SUN, J.
, GUO, J.
in
Accuracy
/ Algorithms
/ Alternative energy sources
/ Artificial intelligence
/ Carbon
/ Decomposition
/ Electric industries
/ Electric power grids
/ empirical mode decomposition
/ Energy conversion
/ least squares support vector basis
/ Methods
/ Neural networks
/ Prediction models
/ Radial basis function
/ radial basis function neural network
/ renewable energy
/ Statistical analysis
/ Support vector machines
/ Volatility
/ Wind power
/ Wind speed
/ wind speed prediction
2018
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Improved Wind Speed Prediction Using Empirical Mode Decomposition
Journal Article
Improved Wind Speed Prediction Using Empirical Mode Decomposition
2018
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Overview
Wind power industry plays an important role in promoting the development of low-carbon economic and energy transformation in the world. However, the randomness and volatility of wind speed series restrict the healthy development of the wind power industry. Accurate wind speed prediction is the key to realize the stability of wind power integration and to guarantee the safe operation of the power system. In this paper, combined with the Empirical Mode Decomposition (EMD), the Radial Basis Function Neural Network (RBF) and the Least Square Support Vector Machine (SVM), an improved wind speed prediction model based on Empirical Mode Decomposition (EMD-RBF-LS-SVM) is proposed. The prediction result indicates that compared with the traditional prediction model (RBF, LS-SVM), the EMDRBF-LS-SVM model can weaken the random fluctuation to a certain extent and improve the short-term accuracy of wind speed prediction significantly. In a word, this research will significantly reduce the impact of wind power instability on the power grid, ensure the power grid supply and demand balance, reduce the operating costs in the grid-connected systems, and enhance the market competitiveness of the wind power.
Publisher
Stefan cel Mare University of Suceava
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