Comparing different solutions for forecasting the energy production of a wind farm

被引:0
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作者
Darío Baptista
João Paulo Carvalho
Fernando Morgado-Dias
机构
[1] M-ITI,INESC
[2] Madeira Interactive Technologies Institute,ID
[3] Instituto Superior Técnico,undefined
[4] UMa,undefined
[5] Universidade da Madeira,undefined
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关键词
Support vector machine; Artificial neural network; Adaptive neuro-fuzzy inference system; Eolic energy;
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摘要
The production of different renewable and non-renewable energies sources can be coordinated efficiently to avoid costly overproduction. For that, it is important to develop models for accurate energy production forecasting. The energy production of wind farms is extremely dependent on the meteorological conditions. In this paper, computational intelligence techniques were used to predict the production of energy in a wind farm. This study is held on publicly accessible climacteric and energy data for a wind farm in Galicia, Spain, with 24 turbines of 9 different models. Data preprocessing was performed in order to delete outliers caused by the maintenance and technical problems. Models of the following types were developed: artificial neural networks, support vector machines and adaptive neuro-fuzzy inference system models. Furthermore, the persistence method was used as a time series forecast baseline model. Overall, the developed computational intelligence models perform better than the baseline model, being adaptive neuro-fuzzy inference system the model with the best results: a ~ 5% performance improvement over the baseline model.
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页码:15825 / 15833
页数:8
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