Short-Term PV Power Forecasting Based on Sky Imagery. A Case Study at the West University of Timisoara

Author:

Blaga Robert1,Dughir Ciprian2,Sabadus Andreea3,Stefu Nicoleta1,Paulescu Marius1

Affiliation:

1. Faculty of Physics , West University of Timisoara , V Parvan 4, 300223 , Timisoara , Romania

2. Faculty of Electronics, Telecommunications and Information Technologies , Politehnica University Timisoara , V Parvan 2 , Timisoara , Romania

3. Institute for Advanced Environmental Research , West University of Timisoara , V Parvan 4 , Timisoara , Romania

Abstract

Abstract This study deals with the performance of PV2-state model in intra-hour forecasting of photovoltaic (PV) power. The PV2-state model links an empirical model for estimating the PV power delivered by a PV system under clear-sky with a model for forecasting the relative position of the Sun and clouds. Sunshine number (SSN), a binary quantifier showing if the Sun shines or not, is used as a measure for the Sun position with respect to clouds. A physics-based approach to intra-hour forecasting, processing cloud field information from an all-sky imager, is applied to predict SSN. The quality of SSN prediction conditions the overall quality of PV2-state forecasts. The PV2-state performance was evaluated against a challenging database (high variability in the state-of-the-sky, thin cloud cover, broken cloud field, isolated passing clouds) comprising radiometric data and sky-images collected on the Solar Platform of the West University of Timisoara, Romania. The investigation was performed from two perspectives: general model accuracy and, as a novelty, identification of characteristic elements in the state-of-the-sky which fault the SSN prediction. The outcome of such analysis represents the basis of further research aiming to increase the performance in PV power forecasting.

Publisher

Walter de Gruyter GmbH

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