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Bootstrapped Multi-Model Neural-Network Super-Ensembles for Wind Speed and Power Forecasting
Author(s) -
Zhongxian Men,
Eugene Yee,
FueSang Lien,
Hua Ji,
Yongqian Liu
Publication year - 2014
Publication title -
energy and power engineering
Language(s) - English
Resource type - Journals
eISSN - 1949-243X
pISSN - 1947-3818
DOI - 10.4236/epe.2014.611029
Subject(s) - artificial neural network , wind power forecasting , wind power , wind speed , resampling , turbine , probabilistic forecasting , computer science , prediction interval , interval (graph theory) , power (physics) , artificial intelligence , meteorology , data mining , machine learning , engineering , electric power system , mathematics , geography , probabilistic logic , mechanical engineering , physics , quantum mechanics , combinatorics , electrical engineering
The bootstrap resampling method is applied to an ensemble artificial neural network (ANN) approach (which combines machine learning with physical data obtained from a numerical weather prediction model) to provide a multi-ANN model super-ensemble for application to multi-step-ahead forecasting of wind speed and of the associated power generated from a wind turbine. A statistical combination of the individual forecasts from the various ANNs of the super-ensemble is used to construct the best deterministic forecast, as well as the prediction uncertainty interval associated with this forecast. The bootstrapped neural-network methodology is validated using measured wind speed and power data acquired from a wind turbine in an operational wind farm located in northern China.

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