Sky Image Analysis and Solar Power Forecasting: A Convolutional Neural Network Approach

Authors

  • A. Jakoplić Department of Electric Power Systems Author
  • S. Vlahinić Department of Automation and Electronics University of Rijeka, Faculty of Engineering Vukovarska 58, 51000 Rijeka (Croatia) Phone number: +00385 051 651444 Author
  • B. Dobraš Department of Electric Power Systems Author
  • D. Franković Department of Electric Power Systems Author

DOI:

https://doi.org/10.24084/repqj21.355

Keywords:

Sky Image Analysis, Solar Power Forecasting, Convolutional Neural Network (CNN), Renewable Energy Integration, Power system stability

Abstract

Recently, the share of renewable sources in the energy mix of production units has been steadily increasing. The unpredictability of renewable sources leads to difficulties in planning, managing and controlling the electric energy system (EES). One of the ways to reduce the negative impact of unpredictable renewable sources is to predict the availability of these energy sources. Short-term forecasting of photovoltaic power plant production is one of the tools that enable greater integration of renewable energy sources into the EES. One way to gather information for the short-term forecast production model is to continuously photograph the hemisphere above the photovoltaic power plant. By processing the data contained within the images, parameters related to the current output power of the observed power plant are obtained. This paper presents a model that utilises a convolutional neural network to analyse images of the hemispherical sky above a power plant to predict the current output power of the power plant. Estimating current production is a crucial step in developing models for short-term solar forecasts. The model was specifically developed for photovoltaic power plants and is capable of achieving high accuracy in power prediction. The estimation of power production from photovoltaic power plants enables the use of next-frame prediction for short-term forecasting.

Published

2024-01-08

Issue

Section

Articles