Abstract
Abstract With the increasingly serious environmental pollution, the development of clean energy has received widespread attention. This paper proposes a short-term wind power forecasting method for a single unit based on a correlation vector machine. This method uses a small amount of historical numerical weather forecasts and historic wind farm power data as training samples. Combining with future numerical weather forecasts, predict the power generated by wind turbines. This paper analyses the influencing factors of wind power forecast uncertainty, and describes the uncertainty of power forecasting through the confidence interval estimation method. The RVM, wavelet and RBF were used to predict and compare the power of three wind farms in a northern wind farm. The simulation results verified the accuracy and efficiency of the RVM method.
Published Version
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have