This article presents an application of evolutionary fuzzy rules to the modeling and prediction of power output of a real-world Photovoltaic Power Plant (PVPP). The method is compared to artificial neural networks and support vector regression that were also used to build predictors in order to analyse a time-series like data describing the production of the PVPP. The models of the PVPP are created using different supervised machine learning methods in order to forecast the short-term output of the power plant and compare the accuracy of the prediction. © CTU FTS 2013.
CITATION STYLE
Prokop, L., Mišák, S., Snášel, V., Platoš, J., & Krömer, P. (2013). Supervised learning of photovoltaic power plant output prediction models. Neural Network World, 23(4), 321–338. https://doi.org/10.14311/NNW.2013.23.020
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