Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil

ABSTRACT Soil surveys often contain multi-component map units comprising two or more soil classes, whose spatial distribution within the map unit is not represented. Digital Soil Mapping tools supported by information from soil surveys make it possible to predict where these classes are located. The...

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Main Authors: Israel Rosa Machado, Elvio Giasson, Alcinei Ribeiro Campos, José Janderson Ferreira Costa, Elisângela Benedet da Silva, Benito Roberto Bonfatti
Format: Article
Language:English
Published: Sociedade Brasileira de Ciência do Solo 2018-03-01
Series:Revista Brasileira de Ciência do Solo
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-06832018000100303&lng=en&tlng=en
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spelling doaj-a931ba57531440588bd6b4056c37cf162021-01-02T02:39:24ZengSociedade Brasileira de Ciência do SoloRevista Brasileira de Ciência do Solo1806-96572018-03-0142010.1590/18069657rbcs20170193S0100-06832018000100303Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern BrazilIsrael Rosa MachadoElvio GiassonAlcinei Ribeiro CamposJosé Janderson Ferreira CostaElisângela Benedet da SilvaBenito Roberto BonfattiABSTRACT Soil surveys often contain multi-component map units comprising two or more soil classes, whose spatial distribution within the map unit is not represented. Digital Soil Mapping tools supported by information from soil surveys make it possible to predict where these classes are located. The aim of this study was to develop a methodology to increase the detail of conventional soil maps by means of spatial disaggregation of multi-component map units and to predict the spatial location of the derived soil classes. Three digital maps of terrain variables - slope, landforms, and topographic wetness index - were correlated with the soil map and 72 georeferenced profiles from the Porto Alegre soil survey. Explicit rules that expressed regional soil-landscape relationships were formulated based on the resulting combinations. These rules were used to select typical areas of occurrence of each soil class and to train a decision tree model to predict the occurrence of individualized soil classes. Validation of the soil map predictions was conducted by comparison with available soil profiles. The soil map produced showed high agreement (80.5 % accuracy) with the soil classes observed in the soil profiles; Ultisols and Lithic Udorthents were predicted with greater accuracy. The soil variables selected in this study were suitable to represent the soil-landscape relationships, suggesting potential use in future studies. This approach developed a more detailed soil map relevant to current demands for soil information and has potential to be replicated in other areas in which data availability is similar.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-06832018000100303&lng=en&tlng=endigital soil mappingsoil-landscape relationshipsdecision trees
collection DOAJ
language English
format Article
sources DOAJ
author Israel Rosa Machado
Elvio Giasson
Alcinei Ribeiro Campos
José Janderson Ferreira Costa
Elisângela Benedet da Silva
Benito Roberto Bonfatti
spellingShingle Israel Rosa Machado
Elvio Giasson
Alcinei Ribeiro Campos
José Janderson Ferreira Costa
Elisângela Benedet da Silva
Benito Roberto Bonfatti
Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil
Revista Brasileira de Ciência do Solo
digital soil mapping
soil-landscape relationships
decision trees
author_facet Israel Rosa Machado
Elvio Giasson
Alcinei Ribeiro Campos
José Janderson Ferreira Costa
Elisângela Benedet da Silva
Benito Roberto Bonfatti
author_sort Israel Rosa Machado
title Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil
title_short Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil
title_full Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil
title_fullStr Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil
title_full_unstemmed Spatial Disaggregation of Multi-Component Soil Map Units Using Legacy Data and a Tree-Based Algorithm in Southern Brazil
title_sort spatial disaggregation of multi-component soil map units using legacy data and a tree-based algorithm in southern brazil
publisher Sociedade Brasileira de Ciência do Solo
series Revista Brasileira de Ciência do Solo
issn 1806-9657
publishDate 2018-03-01
description ABSTRACT Soil surveys often contain multi-component map units comprising two or more soil classes, whose spatial distribution within the map unit is not represented. Digital Soil Mapping tools supported by information from soil surveys make it possible to predict where these classes are located. The aim of this study was to develop a methodology to increase the detail of conventional soil maps by means of spatial disaggregation of multi-component map units and to predict the spatial location of the derived soil classes. Three digital maps of terrain variables - slope, landforms, and topographic wetness index - were correlated with the soil map and 72 georeferenced profiles from the Porto Alegre soil survey. Explicit rules that expressed regional soil-landscape relationships were formulated based on the resulting combinations. These rules were used to select typical areas of occurrence of each soil class and to train a decision tree model to predict the occurrence of individualized soil classes. Validation of the soil map predictions was conducted by comparison with available soil profiles. The soil map produced showed high agreement (80.5 % accuracy) with the soil classes observed in the soil profiles; Ultisols and Lithic Udorthents were predicted with greater accuracy. The soil variables selected in this study were suitable to represent the soil-landscape relationships, suggesting potential use in future studies. This approach developed a more detailed soil map relevant to current demands for soil information and has potential to be replicated in other areas in which data availability is similar.
topic digital soil mapping
soil-landscape relationships
decision trees
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-06832018000100303&lng=en&tlng=en
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