A Dynamic Model for Indoor Temperature Prediction in Buildings

Resource type
Journal Article
Authors/contributors
Title
A Dynamic Model for Indoor Temperature Prediction in Buildings
Abstract
A novel dynamic model for the temperature inside buildings is presented, aiming to improve energy efficiency by providing predictive information on the heat demand. To analyse the performance and generalizability of the modelling approach, real measurement data was gathered from five different types of buildings. Easily available data from various sources was utilized. The chosen model structure leads to a minimal number of input variables and free parameters. Simulations with real data from five buildings, and applying the identical model structure showed that the average modelling error during the 28-h prediction horizon was constantly below 5%. The results thus demonstrate that the model structure can be standardized and easily applied to predict the indoor temperatures of large buildings. This would finally enable demand side management and the predictive optimization of the heat demand at city level.
Publication
Energies
Publisher
Multidisciplinary Digital Publishing Institute
Date
2018/6
Volume
11
Issue
6
Pages
1477
Accessed
12/02/2024, 15:42
ISSN
1996-1073
Language
en
Library Catalogue
Call Number
openalex:W2807496108
Extra
Number: 6 openalex: W2807496108
Citation
Hietaharju, P., Ruusunen, M., & Leiviskä, K. (2018). A Dynamic Model for Indoor Temperature Prediction in Buildings. Energies, 11(6), 1477. https://doi.org/10.3390/en11061477