Please use this identifier to cite or link to this item: https://hdl.handle.net/11147/5215
Title: Models for prediction of daily mean indoor temperature and relative humidity: Education building in Izmir, Turkey
Authors: Özbalta, Türkan Göksal
Sezer, Alper
Yıldız, Yusuf
Keywords: Artificial neural network
Indoor temperature and relative humidity
Modelling
Multiple regression
Environmental temperature
Education building
Publisher: SAGE Publications Inc.
Source: Özbalta, T. G., Sezer, A. and Yıldız, Y. (2012). Models for prediction of daily mean indoor temperature and relative humidity: Education building in Izmir, Turkey. Indoor and Built Environment, 21(6), 772-781. doi:10.1177/1420326X11422163
Abstract: In this research, several models were developed to forecast the daily mean indoor temperature (IT) and relative humidity values in an education building in Izmir, Turkey. The city is located at a hot-humid climatic region. In order to forecast the IT and internal relative humidity (IRH) parameters in the building, a number of artificial neural networks (ANN) models were trained and tested with a dataset including outdoor climatic conditions, day of year and indoor thermal comfort parameters. The indoor thermal comfort parameters, namely, IT and IRH values between 6 June and 21 September 2009 were collected via HOBO data logger. Fraction of variance (R2) and root-mean squared error values calculated by the use of the outputs of different ANN architectures were compared. Moreover, several multiple regression models were developed to question their performance in comparison with those of ANNs. The results showed that an ANN model trained with inconsiderable amount of data was successful in the prediction of IT and IRH parameters in education buildings. It should be emphasized that this model can be benefited in the prediction of indoor thermal comfort conditions, energy requirements, and heating, ventilating and air conditioning system size. © The Author(s), 2011. Reprints and permissions:
URI: http://dx.doi.org/10.1177/1420326X11422163
http://hdl.handle.net/11147/5215
ISSN: 1420-326X
1420-326X
Appears in Collections:Architecture / Mimarlık
Scopus İndeksli Yayınlar Koleksiyonu / Scopus Indexed Publications Collection
WoS İndeksli Yayınlar Koleksiyonu / WoS Indexed Publications Collection

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