Modeling the effect of roof coatings materials on the building thermal temperature variations based on an artificial intelligence

Author:

May Tzuc O.,Hernandez-Pérez I.,Castro Karla M Aguilar,Jiménez Torres M.,Castillo-Téllez M,Demesa López N

Abstract

Abstract This paper presents the benefits of applying the artificial neural networks technique to model the building indoor temperature variations caused by implementing roof coatings. Four of the most common roof coating used in Mexican constructions were considered. The study evaluated test cells at outdoors and instrumented them to measure the indoor temperature variation. The environmental parameters solar radiation, wind speed, ambient temperature, and relative humidity were also monitored. The results showed the viability of modeling the thermal behavior generated by the roof coatings with an accuracy greater than 90%. It implies the ability to predict internal temperatures based on the physical properties of the material and environmental variables, being a feasible tool in the search for thermal comfort for buildings in the region. In addition, the results of the sensitivity analysis identified to what extent to improve the optical properties of the material impact on the heat transferred to the interior.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference9 articles.

1. Experimental thermal evaluation of building roofs with conventional and reflective coatings;Hernández-Pérez;Energy Build.,2018

2. Artificial Intelligence Techniques for Modeling Indoor Building Temperature under Tropical Climate Using Outdoor Environmental Monitoring;May Tzuc;J. Energy Eng.,2020

3. An investigation for predicting the effect of green roof utilization on temperature decreasing over the roof surface with Gene Expression Programming;Ayata;Energy Build.,2017

4. Modeling of hygrothermal behavior for green facade’s concrete wall exposed to nordic climate using artificial intelligence and global sensitivity analysis;May Tzuc;J. Build. Eng.,2021

5. An Intelligent Failure Detection on a Wireless Sensor Network for Indoor Climate Conditions;Gutiérrez;Sensors,2019

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