FUZZY-BASED SUPPORT SYSTEM FOR URBAN GREEN INFRASTRUCTURE MANAGEMENT

Autores

  • Adriano Bressane São Paulo State University (UNESP)
  • Leonardo Massato Nicácio Nomura
  • Felipe Hashimoto Fengler
  • Líliam César de Castro Medeiros
  • Rogério Galante Negri

DOI:

https://doi.org/10.5380/raega.v61i1.95323

Resumo

Dealing with the challenges of rapid urban growth while preserving ecological ecosystems and human quality of life is a hard task and a cornerstone of sustainable urban development. This study proposes a Decision Support System (DSS) for the management of Urban Green Infrastructure (UGI). The DSS was developed using fuzzy artificial intelligence to address uncertainties inherent in the integration of geospatial data within the computational environment of a Geographic Information System. The selection of variables and configuration parameters was based on a literature review and expert consultation through the Delphi method. To verify the potential of the DSS, a case study was developed in the Biological Reserve of Serra do Japi. The results indicate that the DSS serves as a promising tool for planners, policymakers, and researchers, capable of supporting data-driven recommendations through case-by-case analyses. Future research could explore the integration of additional indicators, enhance the inference mechanism, and extend the application of the DSS across diverse urban contexts to optimize its versatility and effectiveness in UGI management.

Biografia do Autor

Adriano Bressane, São Paulo State University (UNESP)

Professor at São Paulo State University (UNESP). Researcher in the field of Nature-Based Solutions (NbS) dedicated to studying engineering techniques that replicate natural processes (bioengineering). In the field of environmental sanitation, the research focuses on NbS for pollution control, restoration of degraded areas, urban drainage management, natural resource management, climate change mitigation, enhancement of ecosystem services (supporting, provisioning, regulating, and cultural), disaster prevention, and the promotion of healthy, resilient, and sustainable cities.     

Leonardo Massato Nicácio Nomura

    

Felipe Hashimoto Fengler

   

Líliam César de Castro Medeiros

  

Rogério Galante Negri

 

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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). FUZZY-BASED SUPPORT SYSTEM FOR URBAN GREEN INFRASTRUCTURE MANAGEMENT. Ra’e Ga: O Espaço Geográfico Em Análise, 61(1), 92–111. https://doi.org/10.5380/raega.v61i1.95323

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