Reference framework for integration between Life Cycle Assessment and Machine Learning

Authors

DOI:

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

Keywords:

Integrative model, Prediction, Optimization, Clustering

Abstract

This research identifies studies that associate Life Cycle Assessment (LCA) and machine learning (ML) and develops an integrative reference structure between these areas. The structuralist method was applied with the following design: identification of elements for integration based on a Systematic Literature Review (SLR), conceptualization, establishment of relationships between elements, elaboration of the structural model and analysis. The integrative structure categorizes and associates characteristic elements of LCA and ML. The study confirmed the LCA stages as the categories of its elements: goal and scope definition, life cycle inventory, life cycle impact assessment and interpretation; and related to ML: algorithm. It was possible to verify that ML helps in all stages of LCA, but prediction, optimization and clustering resources vary depending on the stage and objectives. The contribution of the integrative structure is to assist LCA professionals in selecting key ML resources incorporating artificial intelligence for different environmental impact assessment scenarios.

Author Biographies

Natalia Nakamura Barros , Universidade Estadual de Campinas

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

Regina Coeli Ruschel, State University of Campinas

PhD in Electrical and Computer Engineering from State University of Campinas. Professor and collaborating researcher at State University of Campinas (Campinas - SP, Brazil).

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Published

2024-10-07

How to Cite

BARROS , Natalia Nakamura; RUSCHEL, Regina Coeli. Reference framework for integration between Life Cycle Assessment and Machine Learning. In: NATIONAL MEETING OF BUILT ENVIRONMENT TECHNOLOGY, 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.

Issue

Section

Tecnologia da Informação e Comunicação

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