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A Wind Power Prediction Method Based on Bayesian Fusion

Authors

Jianqi An1,2,3, Zhangbing Chen1,2, Min Wu1,2, Takao Terano3, Min Ding1,2 and Hua Xie1,2, 1China University of Geosciences, China, 2Hubei key Laboratory of Advanced Control and Intelligent Automation for Complex Systems, China and 3Tokyo Institute of Technology, Japan

Abstract

Wind power prediction (WPP) is of great importance to the safety of the power grid and the effectiveness of power generations dispatching. However, the accuracy of WPP obtained by single numerical weather prediction (NWP) is difficult to satisfy the demands of the power system. In this research, we proposed a WPP method based on Bayesian fusion and multisource NWPs. First, the statistic characteristics of the forecasted wind speed of each-source NWP was analysed, pre-processed and transformed. Then, a fusion method based on Bayesian method was designed to forecast the wind speed by using the multi-source NWPs, which is more accurate than any original forecasted wind speed of each-source NWP. Finally, the neural network method was employed to predict the wind power with the wind speed forecasted by Bayesian method. The experimental results demonstrate that the accuracy of the forecasted wind speed and wind power prediction is improved significantly.

Keywords

Wind Power Prediction, Numerical Weather Prediction, Bayesian Fusion, Wind Speed Prediction

Full Text  Volume 7, Number 3