Estrutura de referência para integração entre avaliação do ciclo de vida e aprendizado de máquina

Autores

DOI:

https://doi.org/10.46421/entac.v20i1.5992

Palavras-chave:

Modelo integrativo, Predição, Otimização, Clusterização

Resumo

Esta pesquisa identifica estudos que associam Avaliação do Ciclo de Vida (ACV) e o aprendizado de máquinas (AP) e elabora uma estrutura de referência de integração entre essas áreas. Para tal, o método estruturalista foi aplicado com o seguinte delineamento: identificação dos elementos para integração a partir de uma Revisão Sistemática de Literatura (RSL), conceituação, estabelecimento das relações entre os elementos, elaboração do modelo estrutural e análise. A estrutura integrativa categoriza e associa elementos característicos da ACV e do AP. O estudo confirmou as etapas da ACV como as categorias de seus elementos, sendo estas: goal and scope definition, life cycle inventory, life cycle impact assessment e interpretation; e relacionada à AP: algorithm. Foi possível verificar que AP auxilia em todos os estágios da ACV, mas recursos como predição, otimização e clusterização variam a depender da etapa e objetivos. A contribuição da estrutura integrativa está no auxílio aos profissionais de ACV na seleção dos diferentes recursos do AP incorporando a inteligência artificial para os diferentes cenários de avaliação de impacto ambiental.

Biografia do Autor

Natalia Nakamura Barros , Universidade Estadual de Campinas

Doutorado em Arquitetura, Tecnologia e Cidade pela Universidade Estadual de Campinas (Campinas - SP, Brasil).

Regina Coeli Ruschel, Universidade Estadual de Campinas

Doutorado em Engenharia Elétrica e da Computação pela Universidade Estadual de Campinas. Professora e pesquisadora colaboradora na Universidade Estadual de Campinas (Campinas - SP, Brasil).

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Publicado

2024-10-07

Como Citar

BARROS , Natalia Nakamura; RUSCHEL, Regina Coeli. Estrutura de referência para integração entre avaliação do ciclo de vida e aprendizado de máquina. In: ENCONTRO NACIONAL DE TECNOLOGIA DO AMBIENTE CONSTRUÍDO, 20., 2024. Anais [...]. Porto Alegre: ANTAC, 2024. p. 1–15. DOI: 10.46421/entac.v20i1.5992. Disponível em: https://eventos.antac.org.br/index.php/entac/article/view/5992. Acesso em: 23 nov. 2024.

Edição

Seção

Tecnologia da Informação e Comunicação

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