Applying the CSM-CERES-Maize for agricultural zoning of climate risk in Brazil.

Water deficit is the main factor limiting maize yield in Brazil, and sowing time is one of the strategies to mitigate this problem. The objective of this study was to develop a methodology for applying a model based on biophysical processes in the agricultural zoning of climate risk of productivity (ZarcPro), for maize crop. The CSM-CERES-Maize model from the DSSAT simulation platform was used. Data on maize genotypes obtained from cultivar registration trials (VCU) conducted in different regions of the country were used to parameterize and evaluate the predictive capacity of the model. Subsequently, the model was used to simulate maize yield for scenarios with 36 sowing dates, soils with six levels of available water, and cultivars with three cycle durations. For first-season sowing, the planting windows generated with ZarcPro are similar to those obtained with the traditional Zarc. When planting in the second season and with yields of 1,000 or 2,000 kg ha-1, the planting periods are longer in ZarcPro than in Zarc, with the opposite situation for yields of 6,000 kg ha-1 or higher. More similar planting periods are observed in the yield ranging from 3,000 to 4,000 kg ha-1.

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Bibliographic Details
Main Authors: AMARAL, T. A., ANDRADE, C. de L. T. de, CUADRA, S. V., MONTEIRO, J. E. B. de A., GUIMARAES, P. E. de O., TRINDADE, R. dos S.
Other Authors: TALES ANTÔNIO AMARAL; CAMILO DE LELIS TEIXEIRA DE ANDRADE, CNPMS; SANTIAGO VIANNA CUADRA, CNPTIA; JOSE EDUARDO B DE ALMEIDA MONTEIRO, CNPTIA; PAULO EVARISTO DE O GUIMARAES, CNPMS; ROBERTO DOS SANTOS TRINDADE, CNPMS.
Format: Artigo de periódico biblioteca
Language:eng
Published: 2024-11-01
Subjects:Modeling, DSSAT, ZarcPro-Maize, Modelagem, Climate risk, Milho, Zoneamento Agrícola, Risco Climático, Agricultural zoning,
Online Access:http://www.alice.cnptia.embrapa.br/alice/handle/doc/1168719
http://dx.doi.org/10.31062/agrom.v32.e027716
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Summary:Water deficit is the main factor limiting maize yield in Brazil, and sowing time is one of the strategies to mitigate this problem. The objective of this study was to develop a methodology for applying a model based on biophysical processes in the agricultural zoning of climate risk of productivity (ZarcPro), for maize crop. The CSM-CERES-Maize model from the DSSAT simulation platform was used. Data on maize genotypes obtained from cultivar registration trials (VCU) conducted in different regions of the country were used to parameterize and evaluate the predictive capacity of the model. Subsequently, the model was used to simulate maize yield for scenarios with 36 sowing dates, soils with six levels of available water, and cultivars with three cycle durations. For first-season sowing, the planting windows generated with ZarcPro are similar to those obtained with the traditional Zarc. When planting in the second season and with yields of 1,000 or 2,000 kg ha-1, the planting periods are longer in ZarcPro than in Zarc, with the opposite situation for yields of 6,000 kg ha-1 or higher. More similar planting periods are observed in the yield ranging from 3,000 to 4,000 kg ha-1.