Use of association rules to determine technological-constructive solutions for the improvement of energy efficiency in healthcare buildings

In the year 2022, in Argentina, the energy consumption of the building stock of the Residential and Commercial-Public Sectors exceeded 34 % and a significant part of this consumption is due to air conditioning requirements. In turn, the air conditioning demands are affected by the energy efficiency...

Full description

Saved in:
Bibliographic Details
Main Author: Urteneche, Emilia (author)
Other Authors: Barbero, Dante Andrés (author), Martini, Irene (author)
Format: article
Language:Spanish
Published: 2023
Subjects:
Online Access:https://revistas.ort.edu.uy/anales-de-investigacion-en-arquitectura/article/view/3484
http://hdl.handle.net/20.500.11968/6622
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:In the year 2022, in Argentina, the energy consumption of the building stock of the Residential and Commercial-Public Sectors exceeded 34 % and a significant part of this consumption is due to air conditioning requirements. In turn, the air conditioning demands are affected by the energy efficiency of the building envelope, since it is through it that the heat exchange between the interior of the building and its surroundings takes place. This work presents the application of a data mining method, the association rules, to discover the most representative technological-constructive solutions present in the building envelope, in this case, corresponding to buildings intended for health (Commercial-Public Sector). To do so, it is necessary to identify the different technological-constructive solutions present in the building envelope (walls, windows and ceilings) in the different buildings. With such data as input, the algorithm produces as results sets of combinations of envelope elements that appear frequently associated. From these results, it is expected to improve the energy efficiency of the most representative building envelopes by suggesting specific measures for each set found, thus facilitating their implementation on a massive scale.