Deep learning for prediction of energy consumption: an applied use case in an office building
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Morcillo Jiménez, Roberto; Mesa, Jesús; Gómez-Romero, Juan; Vila, M. Amparo; Martín Bautista, María JoséEditorial
Springer Nature
Materia
Buildings Energy consumption forecasting Time series
Date
2024-05-01Referencia bibliográfica
Morcillo-Jimenez, R., Mesa, J., Gómez-Romero, J. et al. Deep learning for prediction of energy consumption: an applied use case in an office building. Appl Intell 54, 5813–5825 (2024). [https://doi.org/10.1007/s10489-024-05451-9]
Sponsorship
European Union NextGenerationEU/PRTRthrough the IA4TESproject (MIA.2021.M04. 0008); MICIU/AEI/10.13039/501100011033 through the SINERGYproject (PID2021.125537NA.I00); byERDF/Junta deAndalucía through the D3S project (P21.00247); FEDER programme 2014- 2020 (B-TIC-145-UGR18 and P18-RT-1765); European Union (Energy IN TIME EeB.NMP.2013-4, No. 608981); Universidad de Granada/CBUAAbstract
Non-residential buildings are responsible for more than a third of global energy consumption. Estimating building energy
consumption is the first step towards identifying inefficiencies and optimizing energy management policies. This paper presents
a study of Deep Learning techniques for time series analysis applied to building energy prediction with real environments.
We collected multisource sensor data from an actual office building under normal operating conditions, pre-processed them,
and performed a comprehensive evaluation of the accuracy of feed-forward and recurrent neural networks to predict energy
consumption. The results show that memory-based architectures (LSTMs) perform better than stateless ones (MLPs) even
without data aggregation (CNNs), although the lack of ample usable data in this type of problem avoids making the most of
recent techniques such as sequence-to-sequence (Seq2Seq).