Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds

ABSTRACT: The estimation of soil physical and chemical properties at non-sampled areas is valuable information for land management, sustainability and water yield. This work aimed to model and map soil physical-chemical properties by means of knowledge-based digital soil mapping approach as a study...

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Main Authors: Michele Duarte de Menezes, Sérgio Henrique Godinho Silva, Carlos Rogério de Mello, Phillip Ray Owens, Nilton Curi
Format: Article
Language:English
Published: Universidade de São Paulo
Series:Scientia Agricola
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162018000200144&lng=en&tlng=en
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spelling doaj-a2c7aea823964787bb8cdcdb58d3d1e92020-11-24T21:07:10ZengUniversidade de São PauloScientia Agricola1678-992X75214415310.1590/1678-992x-2016-0097S0103-90162018000200144Knowledge-based digital soil mapping for predicting soil properties in two representative watershedsMichele Duarte de MenezesSérgio Henrique Godinho SilvaCarlos Rogério de MelloPhillip Ray OwensNilton CuriABSTRACT: The estimation of soil physical and chemical properties at non-sampled areas is valuable information for land management, sustainability and water yield. This work aimed to model and map soil physical-chemical properties by means of knowledge-based digital soil mapping approach as a study case in two watersheds representative of different physiographical regions in Brazil. Two watersheds with contrasting soil-landscape features were studied regarding the spatial modeling and prediction of physical and chemical properties. Since the method uses only one value of soil property for each soil type, the way of choosing typical values as well the role of land use as a covariate in the prediction were tested. Mean prediction error (MPE) and root mean square prediction error (RMSPE) were used to assess the accuracy of the prediction methods. The knowledge-based digital soil mapping by means of fuzzy logics is an accurate option for spatial prediction of soil properties considering: 1) lesser intense sampling scheme; 2) scarce financial resources for intensive sampling in Brazil; 3) adequacy to properties with non-linearity distribution, such as saturated hydraulic conductivity. Land use seems to influence spatial distribution of soil properties thus, it was applied in the soil modeling and prediction. The way of choosing typical values for each condition varied not only according to the prediction method, but also with the nature of spatial distribution of each soil property.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162018000200144&lng=en&tlng=enANOVA testspatial variabilityfuzzy logictypical values
collection DOAJ
language English
format Article
sources DOAJ
author Michele Duarte de Menezes
Sérgio Henrique Godinho Silva
Carlos Rogério de Mello
Phillip Ray Owens
Nilton Curi
spellingShingle Michele Duarte de Menezes
Sérgio Henrique Godinho Silva
Carlos Rogério de Mello
Phillip Ray Owens
Nilton Curi
Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
Scientia Agricola
ANOVA test
spatial variability
fuzzy logic
typical values
author_facet Michele Duarte de Menezes
Sérgio Henrique Godinho Silva
Carlos Rogério de Mello
Phillip Ray Owens
Nilton Curi
author_sort Michele Duarte de Menezes
title Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
title_short Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
title_full Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
title_fullStr Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
title_full_unstemmed Knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
title_sort knowledge-based digital soil mapping for predicting soil properties in two representative watersheds
publisher Universidade de São Paulo
series Scientia Agricola
issn 1678-992X
description ABSTRACT: The estimation of soil physical and chemical properties at non-sampled areas is valuable information for land management, sustainability and water yield. This work aimed to model and map soil physical-chemical properties by means of knowledge-based digital soil mapping approach as a study case in two watersheds representative of different physiographical regions in Brazil. Two watersheds with contrasting soil-landscape features were studied regarding the spatial modeling and prediction of physical and chemical properties. Since the method uses only one value of soil property for each soil type, the way of choosing typical values as well the role of land use as a covariate in the prediction were tested. Mean prediction error (MPE) and root mean square prediction error (RMSPE) were used to assess the accuracy of the prediction methods. The knowledge-based digital soil mapping by means of fuzzy logics is an accurate option for spatial prediction of soil properties considering: 1) lesser intense sampling scheme; 2) scarce financial resources for intensive sampling in Brazil; 3) adequacy to properties with non-linearity distribution, such as saturated hydraulic conductivity. Land use seems to influence spatial distribution of soil properties thus, it was applied in the soil modeling and prediction. The way of choosing typical values for each condition varied not only according to the prediction method, but also with the nature of spatial distribution of each soil property.
topic ANOVA test
spatial variability
fuzzy logic
typical values
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162018000200144&lng=en&tlng=en
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AT carlosrogeriodemello knowledgebaseddigitalsoilmappingforpredictingsoilpropertiesintworepresentativewatersheds
AT philliprayowens knowledgebaseddigitalsoilmappingforpredictingsoilpropertiesintworepresentativewatersheds
AT niltoncuri knowledgebaseddigitalsoilmappingforpredictingsoilpropertiesintworepresentativewatersheds
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