JOURNAL ARTICLE

Ultra-Short-Term Wind Power Prediction Using a Hybrid Model

E. MohammedS. WangJ. Yu

Year: 2017 Journal:   IOP Conference Series Earth and Environmental Science Vol: 63 Pages: 012005-012005   Publisher: IOP Publishing

Abstract

This paper aims to develop and apply a hybrid model of two data analytical methods, multiple linear regressions and least square (MLR&LS), for ultra-short-term wind power prediction (WPP), for example taking, Northeast China electricity demand. The data was obtained from the historical records of wind power from an offshore region, and from a wind farm of the wind power plant in the areas. The WPP achieved in two stages: first, the ratios of wind power were forecasted using the proposed hybrid method, and then the transformation of these ratios of wind power to obtain forecasted values. The hybrid model combines the persistence methods, MLR and LS. The proposed method included two prediction types, multi-point prediction and single-point prediction. WPP is tested by applying different models such as autoregressive moving average (ARMA), autoregressive integrated moving average (ARIMA) and artificial neural network (ANN). By comparing results of the above models, the validity of the proposed hybrid model is confirmed in terms of error and correlation coefficient. Comparison of results confirmed that the proposed method works effectively. Additional, forecasting errors were also computed and compared, to improve understanding of how to depict highly variable WPP and the correlations between actual and predicted wind power.

Keywords:
Autoregressive integrated moving average Wind power Autoregressive model Wind speed Wind power forecasting Artificial neural network Term (time) Mean squared error Computer science Autocorrelation Moving average Offshore wind power Power (physics) Time series Statistics Electric power system Mathematics Meteorology Engineering Artificial intelligence Geography

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Energy Load and Power Forecasting
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Electric Power System Optimization
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