Prediction of Wind Farm Power Ramp Rates: A Data-Mining Approach

In this paper, multivariate time series models were built to predict the power ramp rates of a wind farm. The power changes were predicted at 10 min intervals. Multivariate time series models were built with data-mining algorithms. Five different data-mining algorithms were tested using data collect...

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Veröffentlicht in:Journal of solar energy engineering 2009-08, Vol.131 (3), p.031011 (8 )-031011 (8 )
Hauptverfasser: Zheng, Haiyang, Kusiak, Andrew
Format: Artikel
Sprache:eng
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Zusammenfassung:In this paper, multivariate time series models were built to predict the power ramp rates of a wind farm. The power changes were predicted at 10 min intervals. Multivariate time series models were built with data-mining algorithms. Five different data-mining algorithms were tested using data collected at a wind farm. The support vector machine regression algorithm performed best out of the five algorithms studied in this research. It provided predictions of the power ramp rate for a time horizon of 10–60 min. The boosting tree algorithm selects parameters for enhancement of the prediction accuracy of the power ramp rate. The data used in this research originated at a wind farm of 100 turbines. The test results of multivariate time series models were presented in this paper. Suggestions for future research were provided.
ISSN:0199-6231
1528-8986
DOI:10.1115/1.3142727