DocumentCode :
82470
Title :
Probabilistic Short-Term Wind Power Forecast Using Componential Sparse Bayesian Learning
Author :
Ming Yang ; Shu Fan ; Wei-Jen Lee
Author_Institution :
Key Lab. of Power Syst. Intell. Dispatch & Control of the Minist. of Educ., Shandong Univ., Jinan, China
Volume :
49
Issue :
6
fYear :
2013
fDate :
Nov.-Dec. 2013
Firstpage :
2783
Lastpage :
2792
Abstract :
A practical approach for the probabilistic short-term generation forecast of a wind farm is proposed in this paper. Compared with deterministic wind generation forecast, probabilistic wind generation forecast can provide important wind generation distribution information for operation, trading, and some other applications. The proposed approach is based on a sparse Bayesian learning (SBL) algorithm, which produces probabilistic forecast results by estimating the probabilistic density of the weights of Gaussian kernel functions. Furthermore, since the wind generation time series exhibits strong nonstationary property, a componential forecast strategy is used to improve the forecast accuracy. According to the strategy, the wind generation series is decomposed into several more predictable series by discrete wavelet transform, and then, the resulted series are forecasted using the SBL algorithm. To fulfill multilook-ahead wind generation forecast, a multi-SBL forecast model is constructed in the context. Tests on a 74-MW wind farm located in southwest Oklahoma demonstrate the effectiveness of the proposed approach.
Keywords :
Gaussian distribution; discrete wavelet transforms; operating system kernels; probability; wind power plants; Gaussian kernel functions; componential sparse Bayesian learning; probabilistic density; probabilistic short-term generation forecast; probabilistic short-term wind power forecast; wind farm; wind generation forecast; Predictive models; Probabilistic logic; Time series analysis; Wind forecasting; Wind speed; Discrete wavelet transform (DWT); probabilistic forecast; sparse Bayesian learning (SBL); wind generation forecast;
fLanguage :
English
Journal_Title :
Industry Applications, IEEE Transactions on
Publisher :
ieee
ISSN :
0093-9994
Type :
jour
DOI :
10.1109/TIA.2013.2265292
Filename :
6522195
Link To Document :
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