Spectral regionalization of tropical soils in the estimation of soil attributes

ABSTRACT Conventional soil analysis produces large amount of residues and demand resources and time consuming. The construction of soil spectral database for estimating soil attributes is the newest alternative on soil mapping. The objective in this study was to build spectral libraries and study th...

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Main Authors: José A. M. Demattê, Henrique Bellinaso, Suzana Romeiro Araújo, Rodnei Rizzo, Arnaldo Barros Souza
Format: Article
Language:English
Published: Universidade Federal do Ceará 2016-12-01
Series:Revista Ciência Agronômica
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1806-66902016000400589&lng=en&tlng=en
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spelling doaj-d32fc0bbaa9f49419b913d00e8ad548c2020-11-24T23:03:45ZengUniversidade Federal do CearáRevista Ciência Agronômica 1806-66902016-12-0147458959810.5935/1806-6690.20160071S1806-66902016000400589Spectral regionalization of tropical soils in the estimation of soil attributesJosé A. M. DemattêHenrique BellinasoSuzana Romeiro AraújoRodnei RizzoArnaldo Barros SouzaABSTRACT Conventional soil analysis produces large amount of residues and demand resources and time consuming. The construction of soil spectral database for estimating soil attributes is the newest alternative on soil mapping. The objective in this study was to build spectral libraries and study the quality of the generated prediction models for soil attributes. It was obtained 7185 soil spectral (400-2500 nm) in laboratory with respective soil analysis. The spectral libraries "general", "regional", and "local" were generated from these spectral readings. The general spectral library contained the full range of data and several states, the regional libraries contained data from geographically close municipalities, and the local libraries contained soil data from a single municipality. In general we observed the sequence of R2 for General (0.85), Regional (0.67 to 0.77) and Local (0.55 to 0.77). In conclusion, the best database was the general one. On the other hand, independent of the size of the database, predictive models based on physical attributes such as sand, clay, and organic matter generate good predictions until an R2 of 0.7. The determination of spectral libraries including highly variable soils formed from different parent materials create worse results for the estimation of chemical attributes and better results for the estimation of the physical ones. The low range of variation in a given attribute was a limiting factor in the generation of effective predictive models. A great spectral library can certainly improve soil quantitative evaluation.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1806-66902016000400589&lng=en&tlng=enEspectrorradiometriaAnálise do soloBiblioteca espectralMapeamento de soloBanco de dados
collection DOAJ
language English
format Article
sources DOAJ
author José A. M. Demattê
Henrique Bellinaso
Suzana Romeiro Araújo
Rodnei Rizzo
Arnaldo Barros Souza
spellingShingle José A. M. Demattê
Henrique Bellinaso
Suzana Romeiro Araújo
Rodnei Rizzo
Arnaldo Barros Souza
Spectral regionalization of tropical soils in the estimation of soil attributes
Revista Ciência Agronômica
Espectrorradiometria
Análise do solo
Biblioteca espectral
Mapeamento de solo
Banco de dados
author_facet José A. M. Demattê
Henrique Bellinaso
Suzana Romeiro Araújo
Rodnei Rizzo
Arnaldo Barros Souza
author_sort José A. M. Demattê
title Spectral regionalization of tropical soils in the estimation of soil attributes
title_short Spectral regionalization of tropical soils in the estimation of soil attributes
title_full Spectral regionalization of tropical soils in the estimation of soil attributes
title_fullStr Spectral regionalization of tropical soils in the estimation of soil attributes
title_full_unstemmed Spectral regionalization of tropical soils in the estimation of soil attributes
title_sort spectral regionalization of tropical soils in the estimation of soil attributes
publisher Universidade Federal do Ceará
series Revista Ciência Agronômica
issn 1806-6690
publishDate 2016-12-01
description ABSTRACT Conventional soil analysis produces large amount of residues and demand resources and time consuming. The construction of soil spectral database for estimating soil attributes is the newest alternative on soil mapping. The objective in this study was to build spectral libraries and study the quality of the generated prediction models for soil attributes. It was obtained 7185 soil spectral (400-2500 nm) in laboratory with respective soil analysis. The spectral libraries "general", "regional", and "local" were generated from these spectral readings. The general spectral library contained the full range of data and several states, the regional libraries contained data from geographically close municipalities, and the local libraries contained soil data from a single municipality. In general we observed the sequence of R2 for General (0.85), Regional (0.67 to 0.77) and Local (0.55 to 0.77). In conclusion, the best database was the general one. On the other hand, independent of the size of the database, predictive models based on physical attributes such as sand, clay, and organic matter generate good predictions until an R2 of 0.7. The determination of spectral libraries including highly variable soils formed from different parent materials create worse results for the estimation of chemical attributes and better results for the estimation of the physical ones. The low range of variation in a given attribute was a limiting factor in the generation of effective predictive models. A great spectral library can certainly improve soil quantitative evaluation.
topic Espectrorradiometria
Análise do solo
Biblioteca espectral
Mapeamento de solo
Banco de dados
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1806-66902016000400589&lng=en&tlng=en
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