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Enhanced solar photovoltaic power prediction using diverse machine learning algorithms with hyperparameter optimization

Solar photovoltaic power generation accurate prediction is crucial for optimizing the efficiency and reliability of solar power plants. This research work focuses on predicting photovoltaic power using various machine learning algorithms, including ensemble of regression trees, support vector machin...

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Published in:Renewable & sustainable energy reviews 2024-08, Vol.200, p.114581, Article 114581
Main Authors: Tahir, Muhammad Faizan, Yousaf, Muhammad Zain, Tzes, Anthony, El Moursi, Mohamed Shawky, El-Fouly, Tarek H.M.
Format: Article
Language:English
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Summary:Solar photovoltaic power generation accurate prediction is crucial for optimizing the efficiency and reliability of solar power plants. This research work focuses on predicting photovoltaic power using various machine learning algorithms, including ensemble of regression trees, support vector machine, Gaussian process regression, and artificial neural networks. Performance of these algorithms is further improved through hyperparameter optimization using Bayesian optimization and random search optimizers. Hourly data with a 30-min temporal resolution for an entire year is collected from a 10 MW Masdar solar photovoltaic project based in the United Arab Emirates. Photovoltaic historical power curve is generated using the System Advisor Model software, and to ensure data consistency, the collected dataset is normalized, with the interrelationships among variables computed using the Pearson relation coefficient. The results substantiate that Gaussian process regression demonstrates the best performance (lowest prediction errors) in terms of computing predicted solar photovoltaic generation power, followed by artificial neural networks, ensemble of regression trees, and the support vector machine across both optimizers. Concerning hyperparameter optimization, Bayesian optimization -based model outperformed support vector machine, Gaussian process regression, and artificial neural networks algorithms, except for the ensemble of regression trees. The proposed work contributes to the advancement of solar photovoltaic power prediction by combining the power of machine learning algorithms with hyperparameter optimization techniques. Additionally, the results emphasize the importance of hyperparameter optimization in enhancing machine learning model performance, providing valuable insights into adaptability and accuracy across varying seasonal conditions. Proposed methodology for solar PV power prediction using machine learning algorithms with different optimizers. [Display omitted] •The study employs machine learning techniques to predict solar photovoltaic power.•It utilizes UAE's Masdar PV project data with 30-min resolution for entire year.•Bayesian and random search are used to enhance machine learning models performance.•Performance evaluation of these models is computed by error, speed and size metrics.•Gaussian process regression shows superior predictive accuracy than other models.
ISSN:1364-0321
1879-0690
DOI:10.1016/j.rser.2024.114581