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Implementation of artificial neural network in a building benefits from radiant floor heating /cooling enhanced by phase change materials.

Authors :
Hai, Tao
Dhahad, Hayder A.
Zhou, Jincheng
Abdelrahman, Anas
Almojil, Sattam Fahad
Almohana, Abdulaziz Ibrahim
Alali, Abdulrhman Fahmi
Kh, Teeba Ismail
Sharma, Kamal
Ali, Masood Ashraf
Almoalimi, Khaled Twfiq
Source :
Engineering Analysis with Boundary Elements. Jan2023, Vol. 146, p66-79. 14p.
Publication Year :
2023

Abstract

In this study, the numerical analysis of the radiant floor system was investigated for a building in the presence of PCM inside the external walls as well as the roof at a thickness of 2 cm. By injecting cold/warm fluid into the radiant tubes inside the roof, the cooling/heating requirements were met. Several PCMs with identical thermal properties (except melting point) were selected and based on numerical analysis, the energy utilization in the heating/cooling sections was evaluated by comparison with the simple building (without PCM). Four main variables were defined for the neural network, and energy consumption was trended for two climate zones, Shenyang (41.7922°N, 123.4328°E), and Zhengzhou (34.7578°N, 113.6486° E). For each region, the PCM with the best phase transition was selected and it was realized that for the first region, energy consumption was diminished by 12.6% and for the second region by 15.9%. According to the temperature conditions and radiation intensity in the environment, the ANN could forecast annual energy utilization with an error of less than 6%. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09557997
Volume :
146
Database :
Academic Search Index
Journal :
Engineering Analysis with Boundary Elements
Publication Type :
Periodical
Accession number :
160633244
Full Text :
https://doi.org/10.1016/j.enganabound.2022.10.012