Content area
Flood susceptibility mapping is essential for urban planning and disaster risk management, especially in rapidly urbanizing areas exposed to extreme rainfall events. This study applies an integrated approach combining Geographic Information Systems (GIS), map algebra, and the Analytic Hierarchy Process (AHP) to assess flood-prone zones in Ananindeua, Pará, Brazil. Five geoenvironmental criteria—rainfall, land use and land cover (LULC), slope, soil type, and drainage density—were selected and weighted using AHP to generate a composite flood susceptibility index. The results identified rainfall and slope as the most influential criteria, with both contributing to over 184 km2 of high-susceptibility area. Spatial patterns showed that flood-prone zones are concentrated in flat urban areas with high drainage density and extensive impermeable surfaces. CHIRPS rainfall data were validated using Pearson’s correlation (r = 0.83) and the Nash–Sutcliffe efficiency (NS = 0.97), confirming the reliability of the precipitation input. The final susceptibility map, categorized into low, medium, and high classes, was validated using flood events derived from Sentinel-1 SAR data (2019–2025), of which 97.2% occurred in medium- or high-susceptibility zones. These findings demonstrate the model’s strong predictive performance and highlight the role of unplanned urban expansion, land cover changes, and inadequate drainage in increasing flood risk. Although specific to Ananindeua, the proposed methodology can be adapted to other urban areas in Brazil, provided local conditions and data availability are considered.
Details
Susceptibility;
Soil types;
Land use;
Drainage density;
Geographic information systems;
Economic growth;
Emergency preparedness;
Urban areas;
Urban sprawl;
Landslides & mudslides;
Decision making;
Criteria;
Mapping;
Risk management;
Rivers;
Urbanization;
Flood management;
Analytic hierarchy process;
Urban planning;
Floods;
Rainfall;
Flood mapping;
Disaster management;
Hydrology;
Environmental risk;
Hydrologic data;
Algebra;
Land cover;
Urban development;
Environmental quality;
Disaster risk;
Drainage;
Gross Domestic Product--GDP;
Rain;
Remote sensing
; Duarte, Lia 2
; Teodoro, Ana Cláudia 2
; Beltrão Norma 1
; Gomes Dênis 1 ; Oliveira, Renata 1
1 Department of Applied Social Sciences, State University of Pará State, Enéas Pinheiro, 2626-Marco, Belém 66095-015, PA, Brazil; [email protected] (L.P.); [email protected] (N.B.); [email protected] (D.G.); [email protected] (R.O.)
2 Department of Geosciences, Environment and Spatial Planning, Faculty of Sciences, University of Porto, 4169-007 Porto, Portugal; [email protected], Institute of Earth Sciences, Faculty of Sciences, University of Porto, 4169-007 Porto, Portugal