Sequential Gaussian simulation for mapping the spatial variability of saturated soil hydraulic conductivity at watershed scale

The saturated soil hydraulic conductivity (K sat ) exhibits high spatial variability due to the various physical, chemical, and biological processes that act simultaneously with different intensities in soil formation. The use of geostatistics as a tool to study soil heterogeneity facilitates the un...

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Veröffentlicht in:Applied geomatics 2024-09, Vol.16 (3), p.719-730
Hauptverfasser: dos Santos, Rodrigo César de Vasconcelos, Siqueira, Tirzah Moreira, Soares, Mauricio Fornalski, Nunes, Rômulo Félix, Timm, Luís Carlos
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container_title Applied geomatics
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creator dos Santos, Rodrigo César de Vasconcelos
Siqueira, Tirzah Moreira
Soares, Mauricio Fornalski
Nunes, Rômulo Félix
Timm, Luís Carlos
description The saturated soil hydraulic conductivity (K sat ) exhibits high spatial variability due to the various physical, chemical, and biological processes that act simultaneously with different intensities in soil formation. The use of geostatistics as a tool to study soil heterogeneity facilitates the understanding of the spatial variability of K sat . This study aimed to simulate the spatial variability of K sat and evaluate its uncertainties using sequential Gaussian simulation (SSG) in a tropical watershed located in southern Brazil. Soil sampling was conducted in an experimental watershed-scale grid with a sample spacing of 300 m, and K sat was analyzed. Descriptive statistics were applied to assess the behavior of K sat spatial variability, followed by geostatistical analysis, specifically SSG. Variogram parameters were defined, and SSG was used to generate 100 equiprobable random fields. The results showed that K sat in the Santa Rita watershed (SRW) is heterogeneous, and uncertainties among the hundred fields ranged from 58.70 to 81.10 mm h-1 for the 5th and 95th percentiles, respectively, possibly influenced by soil type, land use, density, and texture. The criteria for validating SSG simulation were met and successfully described the spatial continuity of K sat in the SRW. Thus, SSG proved to be an effective tool for understanding the magnitude and structure of K sat spatial variability at the watershed scale, contributing to effective soil and water management in the SRW.
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The criteria for validating SSG simulation were met and successfully described the spatial continuity of K sat in the SRW. 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subjects Earth and Environmental Science
Geographical Information Systems/Cartography
Geography
Geophysics/Geodesy
Geostatistics
Heterogeneity
Land use
Measurement Science and Instrumentation
Original Paper
Remote Sensing/Photogrammetry
Saturated soils
Simulation
Soil
Soil conductivity
Soil formation
Soil types
Spatial variations
Surveying
Variability
Water management
Watersheds
title Sequential Gaussian simulation for mapping the spatial variability of saturated soil hydraulic conductivity at watershed scale
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