Artificial neural network for ecological-economic zoning as a tool for spatial planning

Authors

  • Luis Waldyr Rodrigues Sadeck Universidade Federal do Pará, Rua Augusto Corrêa, no 01, Guamá, CEP 66075-110 Belém, PA.
  • Aline Maria Meiguins de Lima Universidade Federal do Pará, Rua Augusto Corrêa, no 01, Guamá, CEP 66075-110 Belém, PA.
  • Marcos Adami Instituto Nacional de Pesquisas Espaciais, Centro Regional da Amazônia, Parque de Ciência e Tecnologia do Guamá, Avenida Perimetral, no 2.651, CEP 66077-830 Belém, PA.

DOI:

https://doi.org/10.1590/S1678-3921.pab2017.v52.23534

Keywords:

Amazon, , regional planning, regionalization, self-organizing maps

Abstract

The objective of this work was to analyze social and environmental information through an artificial neural network-self-organizing map (ANN-SOM), in order to provide subsidy to ecologicaleconomic zoning (EEZ) as a tool to reduce the subjectivity of the process. The study area comprises 16 municipalities in the northeast of the state of Pará, Brazil, representative of the agricultural development in the state. Data processing involved three steps: preparation of the data in a geographic information system (GIS) environment; mathematical processing (ANN-SOM) of the data; and visualization and interpretation of the processing results, allowing the spatial planning of northeastern Pará. The results comprised 13 classes, regrouped according to behavioral similarity criteria into four categories, which represent the main areas of sustainability proposed for the state of Pará, according to existing EEZ. The proposed methodology allows individualizing areas in the region that EEZ had not defined, mainly due to the greater possibility of combining and integrating a large number of physical, social, and economic variables through the SOM.

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Published

2017-12-18

How to Cite

Sadeck, L. W. R., de Lima, A. M. M., & Adami, M. (2017). Artificial neural network for ecological-economic zoning as a tool for spatial planning. Pesquisa Agropecuaria Brasileira, 52(11), 1050–1062. https://doi.org/10.1590/S1678-3921.pab2017.v52.23534

Issue

Section

REMOTE SENSING