Mendoza-Pittí, LuisCalderón-Gómez, HuriviadesGómez-Pulido, Jose ManuelVargas-Lombardo, MiguelCastillo-Sequera, Jose LuisSimón de Blas, Clara2023-12-052023-12-0520212076-3417https://hdl.handle.net/10115/26970Forecasting the energy consumption of heating, ventilating, and air conditioning systems is important for the energy efficiency and sustainability of buildings. In fact, conventional models present limitations in these systems due to their complexity and unpredictability. To overcome this, the long short-term memory-based model is employed in this work. Our objective is to develop and evaluate a model to forecast the daily energy consumption of heating, ventilating, and air conditioning systems in buildings. For this purpose, we apply a comprehensive methodology that allows us to obtain a robust, generalizable, and reliable model by tuning different parameters. The results show that the proposed model achieves a significant improvement in the coefficient of variation of root mean square error of 9.5% compared to that proposed by international agencies. We conclude that these results provide an encouraging outlook for its implementation as an intelligent service for decision making, capable of overcoming the problems of other noise-sensitive models affected by data variations and disturbances without the need for expert knowledge in the domain.engAtribución 4.0 Internacionalhttp://creativecommons.org/licenses/by/4.0/daily energy consumption; deep learning; forecasting model; HVAC systems; long short-term memory; short-term forecastdeep learningforecasting modelHVAC systemslong short-term memoryshort-term forecastDeveloping a Long Short-Term Memory-Based Model for Forecasting the Daily Energy Consumption of Heating, Ventilation, and Air Conditioning Systems in Buildingsinfo:eu-repo/semantics/article10.3390/app11156722info:eu-repo/semantics/openAccess