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Beyond Vertical Accuracy: Benchmarking Global DEMs for Hydrologic Connectivity and Flood Sensitivity in Flat Coastal Plains

  • Jose Miguel Fragozo Arevalo
  • , Jairo R. Escobar Villanueva
  • , Jhonny I. Pérez-Montiel
  • Universidad de la Guajira

Research output: Contribution to journalArticlepeer-review

Abstract

We assessed the vertical accuracy of six global digital elevation models—FABDEM (SRTM-enhanced), SRTM, ASTER GDEM, ALOS AW3D30, DeltaDTM and GEDTM—against a local photogrammetry-derived DEM as a benchmark in a flat coastal plain of the Colombian Caribbean. Using GNSS-RTK ground points and a high-accuracy reference DEM, we computed BIAS, RMSE, and MAE. Errors were analyzed by land cover class and along transverse profiles relative to the reference DEM. We also evaluated hydrologic suitability by comparing flow accumulation and drainage patterns derived from each model, treating the photogrammetry-derived model as the control and the global DEMs as treatments to gauge their ability to represent hydraulic/hydrologic behavior. DeltaDTM, GEDTM and FABDEM showed the best overall performance, with the lowest vertical error (particularly in non-urban areas with sparse vegetation) and the highest drainage agreement, along with their flood extent sensitivity to a 0.5 m water level rise, all of which were comparable to the benchmark. These results provide practical guidance for selecting and preprocessing topographic models for risk management and territorial planning in flat regions.

Original languageEnglish
Article number74
JournalHydrology
Volume13
Issue number2
DOIs
StatePublished - 22 Feb 2026
Externally publishedYes

Keywords

  • DEM
  • floodplains
  • GNSS-RTK
  • hydrologic connectivity
  • land cover
  • vertical accuracy

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