Short-Term Wind Speed Combination Prediction Model of Neural Network and Time Series

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Abstract:

This paper uses neural network combined with time series to establish rolling neural network model to predict short-term wind speed in the wind farm. In order to improve wind speed prediction accuracy, this paper analyzes effects of wind direction on wind speed by gray correlation analysis and obtains the correlation coefficient between wind speed at next moment and current wind direction is the largest by calculating. Then wind direction at current moment, historical wind speed and residuals which determined by time series are used as input variables to establish wind prediction model with rolling BP neural network. The simulation results show that neural network combined with time series which considers wind direction could improve the prediction accuracy when wind speed fluctuation is large.

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Periodical:

Advanced Materials Research (Volumes 608-609)

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764-769

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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