Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system

Detalhes bibliográficos
Autor(a) principal: Weiler, Douglas Adams
Data de Publicação: 2018
Outros Autores: Tornquist, Carlos Gustavo, Zschornack, Tiago, Ogle, Stephen Michael, Carlos, Filipe Selau, Bayer, Cimelio
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Repositório Institucional da UFRGS
Texto Completo: http://hdl.handle.net/10183/185114
Resumo: The DayCent ecosystem model, widely tested in upland agroecosystems, was recently updated to simulate waterlogged soils. We evaluated the new version in a paddy rice experiment in Southern Brazil. DayCent was used to simulate rice yield, soil organic carbon (SOC), and soil CH4 fluxes. Model calibration was conducted with a multiple-year dataset from the conventional tillage treatment, followed by a validation phase with data from the no-tillage treatment. Model performance was assessed with statistics commonly used in modeling studies: root mean square error (RMSE), model efficiency (EF), and mean difference (M). In general, DayCent slightly underestimated rice yields under no-tillage (by 0.07 Mg ha-1, or 9.2 %) and slightly overestimated soil C stocks, especially in the first years of the experiment. A comparison of observed and simulated CH4 daily fluxes showed that DayCent could simulate the general patterns of soil CH4 fluxes with slight discrepancies. Daily soil CH4 fluxes were overestimated by 0.43 kg ha-1 day-1 (12 %). Growth-season CH4 emissions under no-tillage were also somewhat overestimated (11 % or 45.29 kg ha-1). We conclude that DayCent simulated SOC, rice yield, and CH4 with some inaccuracies, but the overall performance was considered adequate. However, the model failed to represent the observed potential of no-tillage to mitigate CH4 emissions, possibly because model algorithms could not capture the actual field conditions derived from no-tillage management, such as soil redox potential, plant senescence, and surface placement of plant residue.
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spelling Weiler, Douglas AdamsTornquist, Carlos GustavoZschornack, TiagoOgle, Stephen MichaelCarlos, Filipe SelauBayer, Cimelio2018-11-28T02:45:09Z20180100-0683http://hdl.handle.net/10183/185114001079396The DayCent ecosystem model, widely tested in upland agroecosystems, was recently updated to simulate waterlogged soils. We evaluated the new version in a paddy rice experiment in Southern Brazil. DayCent was used to simulate rice yield, soil organic carbon (SOC), and soil CH4 fluxes. Model calibration was conducted with a multiple-year dataset from the conventional tillage treatment, followed by a validation phase with data from the no-tillage treatment. Model performance was assessed with statistics commonly used in modeling studies: root mean square error (RMSE), model efficiency (EF), and mean difference (M). In general, DayCent slightly underestimated rice yields under no-tillage (by 0.07 Mg ha-1, or 9.2 %) and slightly overestimated soil C stocks, especially in the first years of the experiment. A comparison of observed and simulated CH4 daily fluxes showed that DayCent could simulate the general patterns of soil CH4 fluxes with slight discrepancies. Daily soil CH4 fluxes were overestimated by 0.43 kg ha-1 day-1 (12 %). Growth-season CH4 emissions under no-tillage were also somewhat overestimated (11 % or 45.29 kg ha-1). We conclude that DayCent simulated SOC, rice yield, and CH4 with some inaccuracies, but the overall performance was considered adequate. However, the model failed to represent the observed potential of no-tillage to mitigate CH4 emissions, possibly because model algorithms could not capture the actual field conditions derived from no-tillage management, such as soil redox potential, plant senescence, and surface placement of plant residue.application/pdfengRevista brasileira de ciencia do solo. Viçosa. Vol. 42 (jul. 2018), [art.] e0170251, 12 p.CarbonoQuímica do soloMetanoSolo inundadoEfeito estufaModelingSoil potential redoxFlooded soilGreenhouse gasSoil tillageDaycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice systeminfo:eu-repo/semantics/articleinfo:eu-repo/semantics/otherinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/openAccessreponame:Repositório Institucional da UFRGSinstname:Universidade Federal do Rio Grande do Sul (UFRGS)instacron:UFRGSTEXT001079396.pdf.txt001079396.pdf.txtExtracted Texttext/plain38163http://www.lume.ufrgs.br/bitstream/10183/185114/2/001079396.pdf.txt26e54dc56fd0a849dd71ff8d7083c3e7MD52ORIGINAL001079396.pdfTexto completo (inglês)application/pdf763717http://www.lume.ufrgs.br/bitstream/10183/185114/1/001079396.pdfb439b81e0862cf1e77ebed7c99bb8369MD5110183/1851142018-11-29 02:46:01.806684oai:www.lume.ufrgs.br:10183/185114Repositório de PublicaçõesPUBhttps://lume.ufrgs.br/oai/requestopendoar:2018-11-29T04:46:01Repositório Institucional da UFRGS - Universidade Federal do Rio Grande do Sul (UFRGS)false
dc.title.pt_BR.fl_str_mv Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
title Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
spellingShingle Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
Weiler, Douglas Adams
Carbono
Química do solo
Metano
Solo inundado
Efeito estufa
Modeling
Soil potential redox
Flooded soil
Greenhouse gas
Soil tillage
title_short Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
title_full Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
title_fullStr Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
title_full_unstemmed Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
title_sort Daycent simulation of methane emissions, grain yield, and soil organic carbon in a subtropical paddy rice system
author Weiler, Douglas Adams
author_facet Weiler, Douglas Adams
Tornquist, Carlos Gustavo
Zschornack, Tiago
Ogle, Stephen Michael
Carlos, Filipe Selau
Bayer, Cimelio
author_role author
author2 Tornquist, Carlos Gustavo
Zschornack, Tiago
Ogle, Stephen Michael
Carlos, Filipe Selau
Bayer, Cimelio
author2_role author
author
author
author
author
dc.contributor.author.fl_str_mv Weiler, Douglas Adams
Tornquist, Carlos Gustavo
Zschornack, Tiago
Ogle, Stephen Michael
Carlos, Filipe Selau
Bayer, Cimelio
dc.subject.por.fl_str_mv Carbono
Química do solo
Metano
Solo inundado
Efeito estufa
topic Carbono
Química do solo
Metano
Solo inundado
Efeito estufa
Modeling
Soil potential redox
Flooded soil
Greenhouse gas
Soil tillage
dc.subject.eng.fl_str_mv Modeling
Soil potential redox
Flooded soil
Greenhouse gas
Soil tillage
description The DayCent ecosystem model, widely tested in upland agroecosystems, was recently updated to simulate waterlogged soils. We evaluated the new version in a paddy rice experiment in Southern Brazil. DayCent was used to simulate rice yield, soil organic carbon (SOC), and soil CH4 fluxes. Model calibration was conducted with a multiple-year dataset from the conventional tillage treatment, followed by a validation phase with data from the no-tillage treatment. Model performance was assessed with statistics commonly used in modeling studies: root mean square error (RMSE), model efficiency (EF), and mean difference (M). In general, DayCent slightly underestimated rice yields under no-tillage (by 0.07 Mg ha-1, or 9.2 %) and slightly overestimated soil C stocks, especially in the first years of the experiment. A comparison of observed and simulated CH4 daily fluxes showed that DayCent could simulate the general patterns of soil CH4 fluxes with slight discrepancies. Daily soil CH4 fluxes were overestimated by 0.43 kg ha-1 day-1 (12 %). Growth-season CH4 emissions under no-tillage were also somewhat overestimated (11 % or 45.29 kg ha-1). We conclude that DayCent simulated SOC, rice yield, and CH4 with some inaccuracies, but the overall performance was considered adequate. However, the model failed to represent the observed potential of no-tillage to mitigate CH4 emissions, possibly because model algorithms could not capture the actual field conditions derived from no-tillage management, such as soil redox potential, plant senescence, and surface placement of plant residue.
publishDate 2018
dc.date.accessioned.fl_str_mv 2018-11-28T02:45:09Z
dc.date.issued.fl_str_mv 2018
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dc.relation.ispartof.pt_BR.fl_str_mv Revista brasileira de ciencia do solo. Viçosa. Vol. 42 (jul. 2018), [art.] e0170251, 12 p.
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