Short-term wind power forecasting using a double-stage hierarchical ANFIS approach for energy management in microgrids

被引:84
作者
Dehua Zheng
Abinet Tesfaye Eseye
Jianhua Zhang
Han Li
机构
[1] Beijing Economic-Technology Development Area,Goldwind Science and Etechwin Electric Co., Ltd.
[2] North China Electric Power University,School of Electrical and Electronic Engineering
[3] State Grid Energy Conservation Service Co.,Power Grid Energy Saving and Building Energy Conservation Department
[4] Ltd.,undefined
关键词
Energy management; Forecasting; Fuzzy logic; Microgrid; Neural network; Numerical weather prediction; Wind power;
D O I
10.1186/s41601-017-0041-5
中图分类号
学科分类号
摘要
Determination of the output power of wind generators is always associated with some uncertainties due to wind speed and other weather parameters variation, and accurate short-term forecasts are essential for their efficient operation. This can efficiently support transmission and distribution system operators and schedulers to improve the power network control and management. In this paper, we propose a double stage hierarchical adaptive neuro-fuzzy inference system (double-stage hybrid ANFIS) for short-term wind power prediction of a microgrid wind farm in Beijing, China. The approach has two hierarchical stages. The first ANFIS stage employs numerical weather prediction (NWP) meteorological parameters to forecast wind speed at the wind farm exact site and turbine hub height. The second stage models the actual wind speed and power relationships. Then, the predicted next day’s wind speed by the first stage is applied to the second stage to forecast next day’s wind power. The influence of input data dependency on prediction accuracy has also been analyzed by dividing the input data into five subsets. The presented approach has resulted in considerable forecasting accuracy enhancements. The accuracy of the proposed approach is compared with other three forecasting approaches and achieved the best accuracy enhancement than all.
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