Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.

Detalhes bibliográficos
Autor(a) principal: FERREIRA, A. C. de S.
Data de Publicação: 2022
Outros Autores: CEDDIA, M. B., COSTA, E. M., PINHEIRO, E. F. M., NASCIMENTO, M. M. do, VASQUES, G. M.
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Repositório Institucional da EMBRAPA (Repository Open Access to Scientific Information from EMBRAPA - Alice)
Texto Completo: http://www.alice.cnptia.embrapa.br/alice/handle/doc/1148295
https://doi.org/10.3390/rs14225711
Resumo: Soil texture has a great influence on the physical-hydric and chemical behavior of soils. In the Amazon regions, due to the presence of dense forest cover and limited access to roads, carrying out surveys and mapping of soils is challenging. When data exist, they are relatively sparse and the distribution is quite uneven. In this context, machine learning algorithms (ML) associated with remote sensor covariates offer a framework to derive digital maps of soil attributes. The objective of this study was to produce maps of surface and subsurface soil clay, silt, and sand contents in a 13.440 km2 area in the Amazon. The specific objectives were to a) evaluate the gain in prediction accuracy when using the P-band of airborne radar as a covariate; b) evaluate two sampling approaches (Reference Area-RA and Total Area-TA); and c) evaluate the transferability and performance of three ML algorithms: regression tree (RT), random forest (RF), and support vector machine (SVM). The study site was divided into three blocks, called Urucu, Araracanga, and Juruá, respectively. The soil dataset consisted of 151 surface and subsurface sand, silt, and clay observations and 21 covariates (20 relief variables and the backscattering coefficient from the P-band). Both the RA and TA sampling approach used 114 observations for training the prediction models (75%) and 37 for validation (25%). The RA approach was better for the development of sand and silt models. Overall, RF derived the most accurate predictions for all variables. The effect of introducing the P-band backscattering coefficient improved the sand prediction accuracy at the surface and subsurface in Araracanga, which had the highest sand content, with relative improvements (RI) of the R2, root mean square error (RMSE), and mean absolute error (MAE) of 46%, 3%, and 4% at the surface, respectively, and 66.7%, 4.4%, and 5.2% at the subsurface, respectively. For silt, the P-band improved the predictions at the surface in Araracanga, which had the lowest silt contents among the blocks. For clay, adding the P-band improved the RF predictions at the subsurface, with RI of the R2, RMSE, and MAE of 29%, 5%, and 5%, respectively. Despite the low observation density, inherently hindered by the low accessibility of the area and high costs of sampling thereof, the results showed the potential of ML algorithms boosted by airborne radar P-band to map soil clay, silt, and sand contents in the Amazon.
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spelling Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.Digital soil mappingRadar P-bandReference areaTextura do SoloReconhecimento do SoloMapaSoil textureSoil surveysSoil texture has a great influence on the physical-hydric and chemical behavior of soils. In the Amazon regions, due to the presence of dense forest cover and limited access to roads, carrying out surveys and mapping of soils is challenging. When data exist, they are relatively sparse and the distribution is quite uneven. In this context, machine learning algorithms (ML) associated with remote sensor covariates offer a framework to derive digital maps of soil attributes. The objective of this study was to produce maps of surface and subsurface soil clay, silt, and sand contents in a 13.440 km2 area in the Amazon. The specific objectives were to a) evaluate the gain in prediction accuracy when using the P-band of airborne radar as a covariate; b) evaluate two sampling approaches (Reference Area-RA and Total Area-TA); and c) evaluate the transferability and performance of three ML algorithms: regression tree (RT), random forest (RF), and support vector machine (SVM). The study site was divided into three blocks, called Urucu, Araracanga, and Juruá, respectively. The soil dataset consisted of 151 surface and subsurface sand, silt, and clay observations and 21 covariates (20 relief variables and the backscattering coefficient from the P-band). Both the RA and TA sampling approach used 114 observations for training the prediction models (75%) and 37 for validation (25%). The RA approach was better for the development of sand and silt models. Overall, RF derived the most accurate predictions for all variables. The effect of introducing the P-band backscattering coefficient improved the sand prediction accuracy at the surface and subsurface in Araracanga, which had the highest sand content, with relative improvements (RI) of the R2, root mean square error (RMSE), and mean absolute error (MAE) of 46%, 3%, and 4% at the surface, respectively, and 66.7%, 4.4%, and 5.2% at the subsurface, respectively. For silt, the P-band improved the predictions at the surface in Araracanga, which had the lowest silt contents among the blocks. For clay, adding the P-band improved the RF predictions at the subsurface, with RI of the R2, RMSE, and MAE of 29%, 5%, and 5%, respectively. Despite the low observation density, inherently hindered by the low accessibility of the area and high costs of sampling thereof, the results showed the potential of ML algorithms boosted by airborne radar P-band to map soil clay, silt, and sand contents in the Amazon.ANA CAROLINA DE S. FERREIRA, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; MARCOS B. CEDDIA, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; ELIAS M. COSTA, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; ÉRIKA F. M. PINHEIRO, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; MARIANA MELO DO NASCIMENTO, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; GUSTAVO DE MATTOS VASQUES, CNPS.FERREIRA, A. C. de S.CEDDIA, M. B.COSTA, E. M.PINHEIRO, E. F. M.NASCIMENTO, M. M. doVASQUES, G. M.2022-11-16T15:01:33Z2022-11-16T15:01:33Z2022-11-162022info:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/articleRemote Sensing, v. 14, n. 22, 5711, 2022.http://www.alice.cnptia.embrapa.br/alice/handle/doc/1148295https://doi.org/10.3390/rs14225711enginfo:eu-repo/semantics/openAccessreponame:Repositório Institucional da EMBRAPA (Repository Open Access to Scientific Information from EMBRAPA - Alice)instname:Empresa Brasileira de Pesquisa Agropecuária (Embrapa)instacron:EMBRAPA2022-11-16T15:01:33Zoai:www.alice.cnptia.embrapa.br:doc/1148295Repositório InstitucionalPUBhttps://www.alice.cnptia.embrapa.br/oai/requestopendoar:21542022-11-16T15:01:33falseRepositório InstitucionalPUBhttps://www.alice.cnptia.embrapa.br/oai/requestcg-riaa@embrapa.bropendoar:21542022-11-16T15:01:33Repositório Institucional da EMBRAPA (Repository Open Access to Scientific Information from EMBRAPA - Alice) - Empresa Brasileira de Pesquisa Agropecuária (Embrapa)false
dc.title.none.fl_str_mv Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
title Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
spellingShingle Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
FERREIRA, A. C. de S.
Digital soil mapping
Radar P-band
Reference area
Textura do Solo
Reconhecimento do Solo
Mapa
Soil texture
Soil surveys
title_short Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
title_full Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
title_fullStr Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
title_full_unstemmed Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
title_sort Use of airborne radar images and machine learning algorithms to map soil clay, silt, and sand contents in remote areas under the Amazon rainforest.
author FERREIRA, A. C. de S.
author_facet FERREIRA, A. C. de S.
CEDDIA, M. B.
COSTA, E. M.
PINHEIRO, E. F. M.
NASCIMENTO, M. M. do
VASQUES, G. M.
author_role author
author2 CEDDIA, M. B.
COSTA, E. M.
PINHEIRO, E. F. M.
NASCIMENTO, M. M. do
VASQUES, G. M.
author2_role author
author
author
author
author
dc.contributor.none.fl_str_mv ANA CAROLINA DE S. FERREIRA, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; MARCOS B. CEDDIA, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; ELIAS M. COSTA, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; ÉRIKA F. M. PINHEIRO, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; MARIANA MELO DO NASCIMENTO, UNIVERSIDADE FEDERAL RURAL DO RIO DE JANEIRO; GUSTAVO DE MATTOS VASQUES, CNPS.
dc.contributor.author.fl_str_mv FERREIRA, A. C. de S.
CEDDIA, M. B.
COSTA, E. M.
PINHEIRO, E. F. M.
NASCIMENTO, M. M. do
VASQUES, G. M.
dc.subject.por.fl_str_mv Digital soil mapping
Radar P-band
Reference area
Textura do Solo
Reconhecimento do Solo
Mapa
Soil texture
Soil surveys
topic Digital soil mapping
Radar P-band
Reference area
Textura do Solo
Reconhecimento do Solo
Mapa
Soil texture
Soil surveys
description Soil texture has a great influence on the physical-hydric and chemical behavior of soils. In the Amazon regions, due to the presence of dense forest cover and limited access to roads, carrying out surveys and mapping of soils is challenging. When data exist, they are relatively sparse and the distribution is quite uneven. In this context, machine learning algorithms (ML) associated with remote sensor covariates offer a framework to derive digital maps of soil attributes. The objective of this study was to produce maps of surface and subsurface soil clay, silt, and sand contents in a 13.440 km2 area in the Amazon. The specific objectives were to a) evaluate the gain in prediction accuracy when using the P-band of airborne radar as a covariate; b) evaluate two sampling approaches (Reference Area-RA and Total Area-TA); and c) evaluate the transferability and performance of three ML algorithms: regression tree (RT), random forest (RF), and support vector machine (SVM). The study site was divided into three blocks, called Urucu, Araracanga, and Juruá, respectively. The soil dataset consisted of 151 surface and subsurface sand, silt, and clay observations and 21 covariates (20 relief variables and the backscattering coefficient from the P-band). Both the RA and TA sampling approach used 114 observations for training the prediction models (75%) and 37 for validation (25%). The RA approach was better for the development of sand and silt models. Overall, RF derived the most accurate predictions for all variables. The effect of introducing the P-band backscattering coefficient improved the sand prediction accuracy at the surface and subsurface in Araracanga, which had the highest sand content, with relative improvements (RI) of the R2, root mean square error (RMSE), and mean absolute error (MAE) of 46%, 3%, and 4% at the surface, respectively, and 66.7%, 4.4%, and 5.2% at the subsurface, respectively. For silt, the P-band improved the predictions at the surface in Araracanga, which had the lowest silt contents among the blocks. For clay, adding the P-band improved the RF predictions at the subsurface, with RI of the R2, RMSE, and MAE of 29%, 5%, and 5%, respectively. Despite the low observation density, inherently hindered by the low accessibility of the area and high costs of sampling thereof, the results showed the potential of ML algorithms boosted by airborne radar P-band to map soil clay, silt, and sand contents in the Amazon.
publishDate 2022
dc.date.none.fl_str_mv 2022-11-16T15:01:33Z
2022-11-16T15:01:33Z
2022-11-16
2022
dc.type.driver.fl_str_mv info:eu-repo/semantics/publishedVersion
info:eu-repo/semantics/article
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv Remote Sensing, v. 14, n. 22, 5711, 2022.
http://www.alice.cnptia.embrapa.br/alice/handle/doc/1148295
https://doi.org/10.3390/rs14225711
identifier_str_mv Remote Sensing, v. 14, n. 22, 5711, 2022.
url http://www.alice.cnptia.embrapa.br/alice/handle/doc/1148295
https://doi.org/10.3390/rs14225711
dc.language.iso.fl_str_mv eng
language eng
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eu_rights_str_mv openAccess
dc.source.none.fl_str_mv reponame:Repositório Institucional da EMBRAPA (Repository Open Access to Scientific Information from EMBRAPA - Alice)
instname:Empresa Brasileira de Pesquisa Agropecuária (Embrapa)
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reponame_str Repositório Institucional da EMBRAPA (Repository Open Access to Scientific Information from EMBRAPA - Alice)
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repository.name.fl_str_mv Repositório Institucional da EMBRAPA (Repository Open Access to Scientific Information from EMBRAPA - Alice) - Empresa Brasileira de Pesquisa Agropecuária (Embrapa)
repository.mail.fl_str_mv cg-riaa@embrapa.br
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