Solar Energy, Vol.115, 354-368, 2015
PV power forecast using a nonparametric PV model
Forecasting the AC power output of a PV plant accurately is important both for plant owners and electric system operators. Two main categories of PV modeling are available: the parametric and the nonparametric. In this paper, a methodology using a nonparametric PV model is proposed, using as inputs several forecasts of meteorological variables from a Numerical Weather Forecast model, and actual AC power measurements of PV plants. The methodology was built upon the R environment and uses Quantile Regression Forests as machine learning tool to forecast AC power with a confidence interval. Real data from five PV plants was used to validate the methodology, and results show that daily production is predicted with an absolute cvMBE lower than 1.3%. (C) 2015 Elsevier Ltd. All rights reserved.
Keywords:PV plant;Numerical Weather Prediction;Weather Research and Forecasting;PV power forecast;Random Forest;Quantile Regression