Application of artificial neural network for predicting hourly indoor air temperature and relative humidity in modern building in humid region

Resource type
Journal Article
Authors/contributors
Title
Application of artificial neural network for predicting hourly indoor air temperature and relative humidity in modern building in humid region
Abstract
The prediction of the air temperature (IT) and relative humidity (IH) in a building can help to reduce energy consumption for air conditioning. The purpose of this work was to apply the artificial neural network (ANNs) for an hourly prediction, 24–672h in advance of (IT) and (IH) in buildings found in hot-humid region. The inputs used in the model are 12 last values of indoor and outdoor air temperature and relative humidity. The experimental building is built with cement hallow block in Douala-Cameroon. IT and IH were collected for 24 months. The experimental data were used to determine the optimal ANN structure with levenberg-marquardt algorithm using Matlab software. The optimal structure was the multilayer perceptron (MLP) with 36 input variables, 10 hidden neurons and two neurons in the output layer. The activation functions were respectively the hyperbolic tangent in the hidden layer and the linear function in the output layer. Moreover, the IT and IH results simulated by using the ANN model were strongly correlated with the experimental data, with the coefficient of correlation of 0.9850 for IT and 0.9853 for IH. These results testified that ANN can be used for hourly IT and IH prediction.
Publication
Energy and Buildings
Volume
121
Pages
32-42
Date
2016-06-01
Journal Abbr
Energy and Buildings
ISSN
0378-7788
Accessed
12/02/2024, 21:31
Library Catalogue
ScienceDirect
Call Number
openalex:W2314153399
Extra
openalex: W2314153399
Citation
Mba, L., Meukam, P., & Kemajou, A. (2016). Application of artificial neural network for predicting hourly indoor air temperature and relative humidity in modern building in humid region. Energy and Buildings, 121, 32–42. https://doi.org/10.1016/j.enbuild.2016.03.046