AI Article Synopsis

  • Machine learning is being used to improve predictions of power generation from photovoltaic (PV) systems, but the impact of climate on these predictions is not well understood.
  • This study analyzes the power output of 48 PV systems across four different climates using various machine learning algorithms, revealing that systems in dry climates show lower prediction errors on average than those in tropical climates.
  • A dedicated website has been created to share open data sources for this research, and findings indicate that models trained in one climate can predict power generation in cold climates with minimal error, enhancing the reliability of these predictions.

Article Abstract

Machine learning is arising as a major solution for the photovoltaic (PV) power prediction. Despite the abundant literature, the effect of climate on yield predictions using machine learning is unknown. This work aims to find climatic trends by predicting the power of 48 PV systems around the world, equally divided into four climates. An extensive data gathering process is performed and open-data sources are prioritized. A website www.tudelft.nl/open-source-pv-power-databases has been created with all found open data sources for future research. Five machine learning algorithms and a baseline one have been trained for each PV system. Results show that the performance ranking of the algorithms is independent of climate. Systems in dry climates depict on average the lowest Normalized Root Mean Squared Error (NRMSE) of 47.6 %, while those in tropical present the highest of 60.2 %. In mild and continental climates the NRMSE is 51.6 % and 54.5 %, respectively. When using a model trained in one climate to predict the power of a system located in another climate, on average systems located in cold climates show a lower generalization error, with an additional NRMSE as low as 5.6 % depending on the climate of the test set. Robustness evaluations  were also conducted that increase the validity of the results.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9818063PMC
http://dx.doi.org/10.1002/gch2.202200166DOI Listing

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