Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.

Chemical soil analysis data can be expressed by weight (i.e., gravimetric basis) or volume (i.e., volumetric basis) of the fine earth (sieved >=2 mm), resulting in different units, cmolc kg-1 and cmolc dm-3, respectively. The research problem is that the difference between methods to express the same soil properties hinders the comparison of results and database or dataset standardization. This paper aims to develop pedotransfer functions (PTF) to obtain the density of fine earth, which will then be used for conversion data expressed in volumetric to gravimetric basis, or vice versa, that will be applied to compare results and to standardize databases with different units. Soils samples, including profiles of the main soil orders in Brazil such as Latossolos (Ferralsols or Oxisols)and Argissolos (Acrisols or Ultisols), from the states of Rondônia, Roraima, and Mato Grosso do Sul (132 horizons) were selected and weighed (in triplicate) to obtain the fine earth mass contained in a volume of 10 cm3. The mass values were used to calculate the fine earth density. Spearman's correlation analysis was used between the density and nine soil properties (coarse sand, fine sand, total sand, silt, clay, clay dispersed in water, clay dispersion, particle density, and organic carbon). The total sand, clay, and organic carbon showed the best correlations, therefore they were selected to construct the pedotransfer functions. Nonlinear regression techniques were used to obtain the models (PTFs) to predict density, which was used for unit conversion. As a result, the residual standard error (RSE) statistics of the models were: 0.0920, 0.1231, and 0.1633 g cm-3, respectively for PTF1 (using total sand as a predictor), PTF2 (using clay), and PTF3 (using organic carbon). Independent data was used to evaluate the accuracy of the models by residue analysis and the RSE. For the validation, the lowest RSE obtained was from the PTF1, so the best performance. Thus, to convert values of the chemical properties from a volumetric to gravimetric basis, the value must be divided by the predicted density. While, the conversion from gravimetric to volumetric basis requires that the value be multiplied by the predicted density. The PTFs using the properties total sand, clay, and organic carbon as predictor variables, allowed conversion of analytical data of soil samples expressed in the volumetric basis to gravimetric and vice versa, which can be used for dataset or database standardization.

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Main Authors: CORDEIRO, F. R., CESÁRIO, F. V., FONTANA, A., ANJOS, L. H. C. dos, CANTO, A. C. B. do, TEIXEIRA, W. G.
Other Authors: FERNANDA REIS CORDEIRO, UFRRJ; FERNANDO VIEIRA CESÁRIO, UFF; ADEMIR FONTANA, CNPS; LÚCIA HELENA CUNHA DOS ANJOS, UFRRJ; ANA CAROLINA BARBOSA DO CANTO, UFF; WENCESLAU GERALDES TEIXEIRA, CNPS.
Format: Artigo de periódico biblioteca
Language:Ingles
English
Published: 2020-06-26
Subjects:Padronização de dados, Regressão não linear, Data standardization, Nonlinear regression, Análise do Solo, Soil analysis,
Online Access:http://www.alice.cnptia.embrapa.br/alice/handle/doc/1123471
https://doi.org/10.36783/18069657rbcs20190
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spelling dig-alice-doc-11234712020-06-27T11:11:10Z Pedotransfer functions: the role of soil chemical properties units coversion for soil classification. CORDEIRO, F. R. CESÁRIO, F. V. FONTANA, A. ANJOS, L. H. C. dos CANTO, A. C. B. do TEIXEIRA, W. G. FERNANDA REIS CORDEIRO, UFRRJ; FERNANDO VIEIRA CESÁRIO, UFF; ADEMIR FONTANA, CNPS; LÚCIA HELENA CUNHA DOS ANJOS, UFRRJ; ANA CAROLINA BARBOSA DO CANTO, UFF; WENCESLAU GERALDES TEIXEIRA, CNPS. Padronização de dados Regressão não linear Data standardization Nonlinear regression Análise do Solo Soil analysis Chemical soil analysis data can be expressed by weight (i.e., gravimetric basis) or volume (i.e., volumetric basis) of the fine earth (sieved >=2 mm), resulting in different units, cmolc kg-1 and cmolc dm-3, respectively. The research problem is that the difference between methods to express the same soil properties hinders the comparison of results and database or dataset standardization. This paper aims to develop pedotransfer functions (PTF) to obtain the density of fine earth, which will then be used for conversion data expressed in volumetric to gravimetric basis, or vice versa, that will be applied to compare results and to standardize databases with different units. Soils samples, including profiles of the main soil orders in Brazil such as Latossolos (Ferralsols or Oxisols)and Argissolos (Acrisols or Ultisols), from the states of Rondônia, Roraima, and Mato Grosso do Sul (132 horizons) were selected and weighed (in triplicate) to obtain the fine earth mass contained in a volume of 10 cm3. The mass values were used to calculate the fine earth density. Spearman's correlation analysis was used between the density and nine soil properties (coarse sand, fine sand, total sand, silt, clay, clay dispersed in water, clay dispersion, particle density, and organic carbon). The total sand, clay, and organic carbon showed the best correlations, therefore they were selected to construct the pedotransfer functions. Nonlinear regression techniques were used to obtain the models (PTFs) to predict density, which was used for unit conversion. As a result, the residual standard error (RSE) statistics of the models were: 0.0920, 0.1231, and 0.1633 g cm-3, respectively for PTF1 (using total sand as a predictor), PTF2 (using clay), and PTF3 (using organic carbon). Independent data was used to evaluate the accuracy of the models by residue analysis and the RSE. For the validation, the lowest RSE obtained was from the PTF1, so the best performance. Thus, to convert values of the chemical properties from a volumetric to gravimetric basis, the value must be divided by the predicted density. While, the conversion from gravimetric to volumetric basis requires that the value be multiplied by the predicted density. The PTFs using the properties total sand, clay, and organic carbon as predictor variables, allowed conversion of analytical data of soil samples expressed in the volumetric basis to gravimetric and vice versa, which can be used for dataset or database standardization. 2020-06-27T11:11:04Z 2020-06-27T11:11:04Z 2020-06-26 2020 Artigo de periódico Revista Brasileira de Ciência do Solo, v. 44, e0190086, 2020. http://www.alice.cnptia.embrapa.br/alice/handle/doc/1123471 https://doi.org/10.36783/18069657rbcs20190 Ingles en openAccess
institution EMBRAPA
collection DSpace
country Brasil
countrycode BR
component Bibliográfico
access En linea
databasecode dig-alice
tag biblioteca
region America del Sur
libraryname Sistema de bibliotecas de EMBRAPA
language Ingles
English
topic Padronização de dados
Regressão não linear
Data standardization
Nonlinear regression
Análise do Solo
Soil analysis
Padronização de dados
Regressão não linear
Data standardization
Nonlinear regression
Análise do Solo
Soil analysis
spellingShingle Padronização de dados
Regressão não linear
Data standardization
Nonlinear regression
Análise do Solo
Soil analysis
Padronização de dados
Regressão não linear
Data standardization
Nonlinear regression
Análise do Solo
Soil analysis
CORDEIRO, F. R.
CESÁRIO, F. V.
FONTANA, A.
ANJOS, L. H. C. dos
CANTO, A. C. B. do
TEIXEIRA, W. G.
Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
description Chemical soil analysis data can be expressed by weight (i.e., gravimetric basis) or volume (i.e., volumetric basis) of the fine earth (sieved >=2 mm), resulting in different units, cmolc kg-1 and cmolc dm-3, respectively. The research problem is that the difference between methods to express the same soil properties hinders the comparison of results and database or dataset standardization. This paper aims to develop pedotransfer functions (PTF) to obtain the density of fine earth, which will then be used for conversion data expressed in volumetric to gravimetric basis, or vice versa, that will be applied to compare results and to standardize databases with different units. Soils samples, including profiles of the main soil orders in Brazil such as Latossolos (Ferralsols or Oxisols)and Argissolos (Acrisols or Ultisols), from the states of Rondônia, Roraima, and Mato Grosso do Sul (132 horizons) were selected and weighed (in triplicate) to obtain the fine earth mass contained in a volume of 10 cm3. The mass values were used to calculate the fine earth density. Spearman's correlation analysis was used between the density and nine soil properties (coarse sand, fine sand, total sand, silt, clay, clay dispersed in water, clay dispersion, particle density, and organic carbon). The total sand, clay, and organic carbon showed the best correlations, therefore they were selected to construct the pedotransfer functions. Nonlinear regression techniques were used to obtain the models (PTFs) to predict density, which was used for unit conversion. As a result, the residual standard error (RSE) statistics of the models were: 0.0920, 0.1231, and 0.1633 g cm-3, respectively for PTF1 (using total sand as a predictor), PTF2 (using clay), and PTF3 (using organic carbon). Independent data was used to evaluate the accuracy of the models by residue analysis and the RSE. For the validation, the lowest RSE obtained was from the PTF1, so the best performance. Thus, to convert values of the chemical properties from a volumetric to gravimetric basis, the value must be divided by the predicted density. While, the conversion from gravimetric to volumetric basis requires that the value be multiplied by the predicted density. The PTFs using the properties total sand, clay, and organic carbon as predictor variables, allowed conversion of analytical data of soil samples expressed in the volumetric basis to gravimetric and vice versa, which can be used for dataset or database standardization.
author2 FERNANDA REIS CORDEIRO, UFRRJ; FERNANDO VIEIRA CESÁRIO, UFF; ADEMIR FONTANA, CNPS; LÚCIA HELENA CUNHA DOS ANJOS, UFRRJ; ANA CAROLINA BARBOSA DO CANTO, UFF; WENCESLAU GERALDES TEIXEIRA, CNPS.
author_facet FERNANDA REIS CORDEIRO, UFRRJ; FERNANDO VIEIRA CESÁRIO, UFF; ADEMIR FONTANA, CNPS; LÚCIA HELENA CUNHA DOS ANJOS, UFRRJ; ANA CAROLINA BARBOSA DO CANTO, UFF; WENCESLAU GERALDES TEIXEIRA, CNPS.
CORDEIRO, F. R.
CESÁRIO, F. V.
FONTANA, A.
ANJOS, L. H. C. dos
CANTO, A. C. B. do
TEIXEIRA, W. G.
format Artigo de periódico
topic_facet Padronização de dados
Regressão não linear
Data standardization
Nonlinear regression
Análise do Solo
Soil analysis
author CORDEIRO, F. R.
CESÁRIO, F. V.
FONTANA, A.
ANJOS, L. H. C. dos
CANTO, A. C. B. do
TEIXEIRA, W. G.
author_sort CORDEIRO, F. R.
title Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
title_short Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
title_full Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
title_fullStr Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
title_full_unstemmed Pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
title_sort pedotransfer functions: the role of soil chemical properties units coversion for soil classification.
publishDate 2020-06-26
url http://www.alice.cnptia.embrapa.br/alice/handle/doc/1123471
https://doi.org/10.36783/18069657rbcs20190
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