Engineering Proceedings (Jul 2024)

Big Data Techniques Applied to Forecast Photovoltaic Energy Demand in Spain

  • J. Tapia-García,
  • L. G. B. Ruiz,
  • D. Criado-Ramón,
  • M. C. Pegalajar

DOI
https://doi.org/10.3390/engproc2024068011
Journal volume & issue
Vol. 68, no. 1
p. 11

Abstract

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Renewable energies play an important role in our society’s development, addressing the challenges presented by climate change. Specifically, in countries like Spain, technologies such as solar energy assume a crucial significance, enabling the generation of clean energy. This study addresses the critical need to accurately predict photovoltaic (PV) energy demand in Spain. By using the data collected from the Spanish Electricity System, four models (Linear Regression, Random Forest, Recurrent Neural Network, and LightGBM) were implemented, with adaptations for Big Data. The LR model proved unsuitable, while the LGBM emerged as the most accurate and timely performer. The incorporation of Big Data adaptations amplifies the significance of our findings, highlighting the effectiveness of the LGBM in forecasting PV energy demand with both accuracy and efficiency.

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