RIARTE Home
    • español
    • English
  • English 
    • español
    • English
  • Login
View Item 
  •   RIARTE Home
  • 2. INVESTIGACIÓN CIENTÍFICA
  • Actas de congresos científicos
  • View Item
  •   RIARTE Home
  • 2. INVESTIGACIÓN CIENTÍFICA
  • Actas de congresos científicos
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

AI potential for renovation measures identification

Identifiers
URI: http://hdl.handle.net/20.500.12251/3929
Share
Statistics
View Usage Statistics
Metadata
Show full item record
Author
Hidalgo Betanzos, Juan María; Prol Godoy, Irati; Briones Llorente, Raúl; Terés Zubiaga, Jon; Martín Garín, Alexánder [et al.]
Date
2024
Subject/s

Rehabilitación de edificios

Inteligencia Artificial

Rehabilitación energética

Edificación residencial

Inserción laboral

Análisis de puesto de trabajo

Unesco Subject/s

1203.04 Inteligencia Artificial

5312.03 Construcción

5306.02 Innovación Tecnológica

5311.04 Organización de Recursos Humanos

5311.07 Investigación Operativa

Abstract

Building renovation processes always require guidance from different experts or professionals who successfully conduct all the steps starting from the previous studies, project definition, intervention, commissioning, and maintenance. The quality of the results often depended on the professionals’ expertise when facing these challenges. This work evaluates whether the new open-access AI can conduct building energy renovation diagnosis effectively. Traditionally the use of AI was rather limited to some experts and activities. However, in November 2022 one of the first Open-source AI, ChatGPT, became public and is offering a chance to boost human capacities worldwide and for free. This mainstream AI potential raised concerns about human job replacement risk and lack of control. In a few months, the social perception of AI as a far-future issue turned upside-down and made it a very present fact. When applied to building energy renovation, AI can assist professionals, or even replace them, to identify the best renovation measures for achieving deep renovation. This study tested how responds this AI when asked about the best energy renovation measures in a certain case. To understand if AI can replace renovation experts’ diagnoses, the quality of the response is evaluated by experts and according to recent literature solutions. First, the AI is asked without any further preparation. Later, some additional data input is given to the AI to enlarge its preparation. Finally, some secondary questions are raised to enrich the analysis to evaluate the maximum potential of ChatGPT outcome. The study results prove that open-access AI can provide good responses, but can be incomplete without the proper specialized preparation and data input. In general, the AI findings can be trusted but their quality is limited. AI can help and provide a good start to any user and create comprehensive lists of feasible possibilities.

Building renovation processes always require guidance from different experts or professionals who successfully conduct all the steps starting from the previous studies, project definition, intervention, commissioning, and maintenance. The quality of the results often depended on the professionals’ expertise when facing these challenges. This work evaluates whether the new open-access AI can conduct building energy renovation diagnosis effectively. Traditionally the use of AI was rather limited to some experts and activities. However, in November 2022 one of the first Open-source AI, ChatGPT, became public and is offering a chance to boost human capacities worldwide and for free. This mainstream AI potential raised concerns about human job replacement risk and lack of control. In a few months, the social perception of AI as a far-future issue turned upside-down and made it a very present fact. When applied to building energy renovation, AI can assist professionals, or even replace them, to identify the best renovation measures for achieving deep renovation. This study tested how responds this AI when asked about the best energy renovation measures in a certain case. To understand if AI can replace renovation experts’ diagnoses, the quality of the response is evaluated by experts and according to recent literature solutions. First, the AI is asked without any further preparation. Later, some additional data input is given to the AI to enlarge its preparation. Finally, some secondary questions are raised to enrich the analysis to evaluate the maximum potential of ChatGPT outcome. The study results prove that open-access AI can provide good responses, but can be incomplete without the proper specialized preparation and data input. In general, the AI findings can be trusted but their quality is limited. AI can help and provide a good start to any user and create comprehensive lists of feasible possibilities.

Collections
  • Actas de congresos científicos

Browse

All of RIARTECommunities and CollectionsAuthorsTitlesSubjectsUnesco subjectsTypes of documentsThis CollectionAuthorsTitlesSubjectsUnesco subjectsTypes of documents

My Account

LoginRegister

Statistics

View Usage Statistics

Help

About RIARTEFAQLocate informationPoliciesPolítica de Protección de Datos

OA Publishing Policies

Logo SHERPA/RoMEOLogo Dulcinea

Content diffusion

Logo RecolectaLogo Hispana

Copyright © Spanish General Council of Technical Architecture 2018 | Legal notice | Política de Protección de Datos

Facebook
Twitter
Contact Us Send Feedback