Title :
Scenario Generation of Wind Power Based on Statistical Uncertainty and Variability
Author :
Xi-Yuan Ma ; Yuan-Zhang Sun ; Hua-Liang Fang
Author_Institution :
Sch. of Electr. Eng., Wuhan Univ., Wuhan, China
Abstract :
The short-term wind power scenarios have a significant impact on the operation cost and power system reliability due to the stochastic generation scheduling of wind-integrated power systems. In order to obtain the scenarios containing the information of forecast error distribution and fluctuation distribution for short-term wind power, a scenario generation method is proposed. This paper characterizes forecast error via empirical distributions of a set of forecast bins and assumes that wind power fluctuations over unit interval follow t location-scale distribution. An inverse transform sampling from a multivariate normal distribution is adopted to generate a large number of wind power scenarios. The covariance matrix of the multivariate normal distribution is estimated to fit the distribution of historical wind power fluctuations. The proposed scenario generation method is applied to the actual aggregate wind power data in the whole regions of Ireland´s Power System. The results indicate that the variability of wind power scenarios can be adjusted by estimating the key range parameter in the exponential covariance structure of a multivariate normal distribution.
Keywords :
covariance matrices; inverse transforms; normal distribution; power generation scheduling; power system reliability; statistical analysis; stochastic programming; wind power plants; Ireland; covariance matrix; empirical distributions; exponential covariance structure; fluctuation distribution; forecast error distribution; historical wind power fluctuations; inverse transform sampling; key range parameter; multivariate normal distribution; operation cost; power system reliability; scenario generation method; short-term wind power scenarios; statistical uncertainty; stochastic generation scheduling; wind-integrated power systems; Fluctuations; Forecasting; Uncertainty; Wind power generation; Forecasting uncertainty; scenario generation; wind power; wind power fluctuation;
Journal_Title :
Sustainable Energy, IEEE Transactions on
DOI :
10.1109/TSTE.2013.2256807