ReviewUnknown
A review and evaluation of the state-of-the-art in PV solar power forecasting: Techniques and optimization
Author Affiliations
University of Western Australia, International University of Business Agriculture and Technology, Queensland University of Technology
Published InRenewable and Sustainable Energy Reviews
Year2020
Citations1,161
Abstract
Integration of photovoltaics into power grids is difficult as solar energy is highly dependent on climate and geography; often fluctuating erratically. This causes penetrations and voltage surges, system instability, inefficient utilities planning and financial loss. Forecast models can help; however, time stamp, forecast horizon, input correlation analysis, data pre and post-processing, weather classification, network optimization, uncertainty quantification and performance evaluations need consideration. Thus, contemporary forecasting techniques are reviewed and evaluated. Input correlational analyses reveal that solar irradiance is most correlated with Photovoltaic output, and so, weather classification and cloud motion study are crucial. Moreover, the best data cleansing processes: normalization and wavelet transforms, and augmentation using generative adversarial network are recommended for network training and forecasting. Furthermore, optimization of inputs…
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