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Development of Recurrent Neural Networks for Thermal/Electrical Analysis of Non-Residential Buildings Based on Energy Consumptions Data

Author

Listed:
  • Elisa Belloni

    (Department of Engineering, University of Perugia, 06125 Perugia, Italy)

  • Flavia Forconi

    (Department of Industrial, Electronic and Mechanical Engineering, Roma Tre University, 00146 Rome, Italy)

  • Gabriele Maria Lozito

    (Department of Information Engineering, University of Firenze, 50139 Firenze, Italy)

  • Martina Palermo

    (Department of Industrial, Electronic and Mechanical Engineering, Roma Tre University, 00146 Rome, Italy)

  • Michele Quercio

    (Department of Industrial, Electronic and Mechanical Engineering, Roma Tre University, 00146 Rome, Italy)

  • Francesco Riganti Fulginei

    (Department of Industrial, Electronic and Mechanical Engineering, Roma Tre University, 00146 Rome, Italy)

Abstract

Extensive research has focused on optimizing energy consumption in residential buildings based on indoor thermal conditions. However, modeling the energy and thermal behavior of non-residential buildings presents greater challenges due to their complex geometries and the high computational cost of detailed simulations. Simplifying input variables can enhance the applicability of artificial intelligence techniques in predicting energy and thermal performance. This study proposes a neural network-based approach to characterize the thermal–energy relationship in commercial buildings, aiming to provide an efficient and scalable solution for performance prediction. Consumptions trends for a building are generated using the EnergyPlus™ dynamic simulation software over a timespan of a year in different locations, and the data are then used to train neural network models. Uncertainty analyses are carried out to evaluate the behavior effectiveness of the artificial neural networks (ANNs) in different weather conditions, and the root mean square error (RMSE) is calculated in terms of mean air temperatures. The results show that this approach can reproduce the functional relationship between input and output data. Three different ANNs are trained for the northern, central, and southern climatic zones of Italy. The southern region’s models achieved the highest accuracy, with an RMSE below 0.5 °C; whereas the model for the northern cities was less accurate, since no specific trend in plant management was present, but it still achieved an acceptable accuracy of 1.0 °C. This approach is computationally lightweight; inference time is below 5 ms, and can be easily embedded in optimization algorithms for load dispatch or in microcontroller applications for building automation systems.

Suggested Citation

  • Elisa Belloni & Flavia Forconi & Gabriele Maria Lozito & Martina Palermo & Michele Quercio & Francesco Riganti Fulginei, 2025. "Development of Recurrent Neural Networks for Thermal/Electrical Analysis of Non-Residential Buildings Based on Energy Consumptions Data," Energies, MDPI, vol. 18(12), pages 1-21, June.
  • Handle: RePEc:gam:jeners:v:18:y:2025:i:12:p:3031-:d:1674136
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    References listed on IDEAS

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