Generative Adversarial Network Applied to the Energy Efficiency of Buildings

Autores/as

  • Julio Barzola-Monteses Universidad Bolivariana Del Ecuador, Ecuador; Universidad De Guayaquil - (Ec)
  • Franklin Parrales-Bravo Universidad De Guayaquil - (Ec); Universidad Bolivariana Del Ecuador, Ecuador
  • Gary Reyes Universidad De Guayaquil - (Ec); Universidad Bolivariana Del Ecuador, Ecuador
  • Vicente Macas-Espinosa Universidad De Guayaquil - (Ec)
  • Jean Pierre Merchan Merchan Universidad De Guayaquil - (Ec)
  • Carlos Maridueña Muñoz Universidad De Guayaquil - (Ec)
  • A.H. Yanez Universidad De Málaga - (Es); Universidad De Guayaquil - (Ec)

DOI:

https://doi.org/10.18687/LACCEI2025.1.1.1889

Palabras clave:

energy efficiency building, generative adversarial network, machine learning, time series

Resumen

Energy consumption in buildings represents a significant proportion of global energy consumption, which raises the need to develop strategies for its optimization. However, datasets can often be incomplete when analyzing energy variables such as electricity consumption due to missing measurements or equipment failures. Generative antagonistic networks (GANs) can generate high-quality synthetic data that mimic actual data distribution. Through a literature review, this paper examines how GANs have been applied to study building energy efficiency. In addition, as a case study, it considers a dataset generation from historical data of the FCMF-UG building of the University of Guayaquil. The findings demonstrated in the case study that variability of the original data influences the results of curve generation with GANs. These preliminary results can be a baseline for future analysis of GANs applied to building energy efficiency.

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Publicado

2025-04-09

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Articles

Cómo citar

Barzola-Monteses, J., Parrales-Bravo, F., Reyes, G., Macas-Espinosa, V., Merchan Merchan, J. P., Maridueña Muñoz, C., & Yanez, A. (2025). Generative Adversarial Network Applied to the Energy Efficiency of Buildings. LACCEI, 1(12). https://doi.org/10.18687/LACCEI2025.1.1.1889