SISTEMA FUZZY DE APOIO À GESTÃO DA INFRAESTRUTURA VERDE URBANA

Autores

  • Adriano Bressane Universidade Estadual Paulista, São José dos Campos https://orcid.org/0000-0002-4899-3983
  • Leonardo Massato Nicácio Nomura
  • Felipe Hashimoto Fengler
  • Líliam César de Castro Medeiros
  • Rogério Galante Negri

DOI:

https://doi.org/10.5380/raega.v61i1.94098

Palavras-chave:

Infraestrutura verde, Cidades sustentáveis, Lógica fuzzy, Inteligência artificial

Resumo

Enfrentar desafios do rápido crescimento das cidades, enquanto se preserva os ecossistemas e a qualidade de vida humana, é um desafio complexo para o desenvolvimento urbano sustentável. Este estudo propõe um Sistema de Suporte à Decisão (SSD) para a gestão da Infraestrutura Verde Urbana (IVU). O SSD, desenvolvido com base em inteligência artificial fuzzy, foi projetado para lidar com incertezas inerentes à integração de dados geoespaciais no ambiente de um Sistema de Informação Geográfica. A seleção das variáveis e parâmetros foi realizada por meio de revisão da literatura e consulta a especialistas utilizando o método Delphi. Para verificar o potencial SSD, foi realizado um estudo de caso sobre uma bacia hidrográfica localizada na Reserva Biológica da Serra do Japi. Os resultados indicam que o SSD constitui uma ferramenta promissora para planejadores, formuladores de políticas e pesquisadores, a qual oferece suporte a recomendações orientadas a dados e derivadas de análises de casos. Pesquisas futuras devem explorar a integração de indicadores adicionais, aprimorar o mecanismo de inferência fuzzy e estender a aplicação do SSD em diversos contextos urbanos.

Biografia do Autor

Adriano Bressane, Universidade Estadual Paulista, São José dos Campos

Professor na Universidade Estadual Paulista (UNESP). Pesquisador na área de Soluções Baseadas na Natureza (SbN) que se dedica ao estudo de técnicas de engenharia que replicam processos naturais (bioengenharia). No campo do saneamento ambiental, destaca-se o estudo de SbN para o controle da poluição, a recuperação de áreas degradadas, a gestão da drenagem urbana, o manejo de recursos naturais, a mitigação de mudanças climáticas, melhoraria de serviços ecossistêmicos (de suporte, provisão, regulação e culturais), a prevenção de desastres, a promoção de cidades saudáveis, resilientes e sustentáveis.

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Publicado

2024-12-18

Como Citar

Bressane, A., Nomura, L. M. N., Fengler, F. H., Medeiros, L. C. de C., & Negri, R. G. (2024). SISTEMA FUZZY DE APOIO À GESTÃO DA INFRAESTRUTURA VERDE URBANA. RAEGA - O Espaço Geográfico Em Análise, 61(1), 92–111. https://doi.org/10.5380/raega.v61i1.94098

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