Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/10499
Title: Modelagem agrometeorológica para a previsão de produtividade de cafeeiros na região sul do Estado de Minas Gerais
Other Titles: Agrometeorological modeling for coffee productivity forecast in the south region of Minas Gerais state
Authors: Carvalho, Luiz Gonsaga de
Ferreira, Daniel Furtado
Guimarães, Rubens José
Keywords: Agrometeorologia
Meteorology, Agricultural
Café
Coffee
Déficit hídrico
Water deficit
Seleção backward
Backward selection
Issue Date: 19-Oct-2015
Publisher: Universidade Federal de Lavras
Citation: VICTORINO, E. C. Modelagem agrometeorológica para a previsão de produtividade de cafeeiros na região sul do Estado de Minas Gerais. 2015. 67 p. Dissertação (Mestrado em Recursos Hídricos) - Universidade Federal de Lavras, Lavras, 2015.
Abstract: The knowledge of effective crop forecasting techniques is of great importance for the coffee market, enabling better planning and making this activity more sustainable. Agrometeorological crop forecasting models can be developed based on the relations of climate changes, especially soil water availability, with coffee phenological phases, given that these relations directly impact productivity and the final quality of coffee. Therefore, this study aimed at developing a predictive model for coffee yield based on water availability, for the municipalities of Lavras and Varginha, in southern Minas Gerais, Brazil. The models were generated from the multiple linear regression of productivity loss (Ye/Yp) as a function of the previous year productivity (Ya/Yp) and water deficit in the different phenological phases, represented by relative evapotranspiration (ETR/ETP)i. The (ETR/ETP)i variables were calculated as quarterly and bimonthly averages, generating 12 different phenological sequences (7 bimonthly and 5 quarterly). During the parameterization, we obtained the water deficit response coefficients (Ky) and the previous year production coefficient (Ky0) for each sequence. Non-significant coefficients were then excluded by means of backward selection methodology, until the models presented only significant coefficients. During this process, in general, the models were highly sensitive to the rainy season (from November to April), and variables related to important periods, such as flowering, were not significant. At the end of parameterization, we concluded that the models have good potential for coffee crop forecasting. Yields of previous years should be considered. The phenological sequence with best performance was Sep./Oct, Nov./Dec., Jan./Feb., Sep. /Apr.
URI: http://repositorio.ufla.br/jspui/handle/1/10499
Appears in Collections:Recursos Hídricos - Mestrado (Dissertações)



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