Modelling effective soil depth at field scale from soil sensors and geomorphometric indices

The effective soil depth (ESD) affects both dynamic of hydrology and plant growth. In the southeast of Buenos Aires province, the presence of petrocalcic horizon constitutes a limitation to ESD. The aim of this study was to develop a statistic model to predict spatial patterns of ESD using apparent...

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Main Authors: Mauricio Castro Franco, Marisa Domenech, José Luis Costa, Virginia Carolina Aparicio
Format: Article
Language:English
Published: Universidad Nacional de Colombia 2017-04-01
Series:Acta Agronómica
Subjects:
Online Access:https://revistas.unal.edu.co/index.php/acta_agronomica/article/view/53282
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spelling doaj-38d7eaf508cc4e4f8de7cd35c118b76b2020-11-24T23:37:51ZengUniversidad Nacional de ColombiaActa Agronómica0120-28122323-01182017-04-0166222823410.15446/acag.v66n2.5328244257Modelling effective soil depth at field scale from soil sensors and geomorphometric indicesMauricio Castro Franco0Marisa Domenech1José Luis Costa2Virginia Carolina Aparicio3Universidad de los Llanos. Escuela de Ingeniería en Ciencias Agrícolas. Programa de Ingeniería Agronómica, ColombiaConsejo Nacional de Investigaciones Científicas y Técnicas- CONICET, ArgentinaEEA INTA Balcarce, ArgentinaEEA INTA Balcarce, ArgentinaThe effective soil depth (ESD) affects both dynamic of hydrology and plant growth. In the southeast of Buenos Aires province, the presence of petrocalcic horizon constitutes a limitation to ESD. The aim of this study was to develop a statistic model to predict spatial patterns of ESD using apparent electrical conductivity at two depths: 0-30 (ECa_30) and 0-90 (ECa_90) and geomorphometric indices. To do this, a Random Forest (RF) analysis was applied. RF was able to select those variables according to their predictive potential for ESD. In that order, ECa_90, catchment slope, elevation and ECa_30 had main prediction importance. For validating purposes, 3035 ESD measurements were carried out, in five fields. ECa and ESD values showed complex spatial pattern at short distances. RF parameters with lowest error (OOBerror) were calibrated. RF model simplified which uses main predictors had a similar predictive development to it uses all predictors. Furthermore, RF model simplified had the ability to delineate similar pattern to those obtained from in situ measure of ESD in all fields. In general, RF was an effective method and easy to work. However, further studies are needed which add other types of variables importance calculation, greater number of fields and test other predictors in order to improve these results.https://revistas.unal.edu.co/index.php/acta_agronomica/article/view/53282Feature selectionPetrocalcic horizonRandom Forest
collection DOAJ
language English
format Article
sources DOAJ
author Mauricio Castro Franco
Marisa Domenech
José Luis Costa
Virginia Carolina Aparicio
spellingShingle Mauricio Castro Franco
Marisa Domenech
José Luis Costa
Virginia Carolina Aparicio
Modelling effective soil depth at field scale from soil sensors and geomorphometric indices
Acta Agronómica
Feature selection
Petrocalcic horizon
Random Forest
author_facet Mauricio Castro Franco
Marisa Domenech
José Luis Costa
Virginia Carolina Aparicio
author_sort Mauricio Castro Franco
title Modelling effective soil depth at field scale from soil sensors and geomorphometric indices
title_short Modelling effective soil depth at field scale from soil sensors and geomorphometric indices
title_full Modelling effective soil depth at field scale from soil sensors and geomorphometric indices
title_fullStr Modelling effective soil depth at field scale from soil sensors and geomorphometric indices
title_full_unstemmed Modelling effective soil depth at field scale from soil sensors and geomorphometric indices
title_sort modelling effective soil depth at field scale from soil sensors and geomorphometric indices
publisher Universidad Nacional de Colombia
series Acta Agronómica
issn 0120-2812
2323-0118
publishDate 2017-04-01
description The effective soil depth (ESD) affects both dynamic of hydrology and plant growth. In the southeast of Buenos Aires province, the presence of petrocalcic horizon constitutes a limitation to ESD. The aim of this study was to develop a statistic model to predict spatial patterns of ESD using apparent electrical conductivity at two depths: 0-30 (ECa_30) and 0-90 (ECa_90) and geomorphometric indices. To do this, a Random Forest (RF) analysis was applied. RF was able to select those variables according to their predictive potential for ESD. In that order, ECa_90, catchment slope, elevation and ECa_30 had main prediction importance. For validating purposes, 3035 ESD measurements were carried out, in five fields. ECa and ESD values showed complex spatial pattern at short distances. RF parameters with lowest error (OOBerror) were calibrated. RF model simplified which uses main predictors had a similar predictive development to it uses all predictors. Furthermore, RF model simplified had the ability to delineate similar pattern to those obtained from in situ measure of ESD in all fields. In general, RF was an effective method and easy to work. However, further studies are needed which add other types of variables importance calculation, greater number of fields and test other predictors in order to improve these results.
topic Feature selection
Petrocalcic horizon
Random Forest
url https://revistas.unal.edu.co/index.php/acta_agronomica/article/view/53282
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AT marisadomenech modellingeffectivesoildepthatfieldscalefromsoilsensorsandgeomorphometricindices
AT joseluiscosta modellingeffectivesoildepthatfieldscalefromsoilsensorsandgeomorphometricindices
AT virginiacarolinaaparicio modellingeffectivesoildepthatfieldscalefromsoilsensorsandgeomorphometricindices
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