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Agronomía Colombiana

Print version ISSN 0120-9965

Abstract

SOUZA, Jorge Luiz Moretti de; ROSA, Stefanie Lais Kreutz; PIEKARSKI, Karla Regina  and  TSUKAHARA, Rodrigo Yoiti. Influence of the AquaCrop soil module on the estimation of soybean and maize crop yield in the State of Parana, Brazil. Agron. colomb. [online]. 2020, vol.38, n.2, pp.234-241.  Epub Apr 27, 2021. ISSN 0120-9965.  https://doi.org/10.15446/agron.colomb.v38n2.78659.

The values of the physical-water attributes of soils for use in agricultural simulation models are usually obtained using difficult and time-consuming methods. The objective of this study was to analyze the performance of the AquaCrop model to estimate soybean and maize crop productivity in the region of Campos Gerais (Brazil), with the option of including soil physical-water attributes in the model. Real crop productivities and input data (soil, climate, crop and soil management) were obtained from experimental stations of the ABC Foundation for the crop years 2006 to 2014. Sixty-four yield simulations were performed for soybean (four municipalities) and 42 for maize (three municipalities), evaluating input soil data scenarios of AquaCrop as follows: i) all soil physical-water attributes were measured (standard) and ii) the attributes were measured only using textural classification of the area (alternative). Real and simulated yields were verified by simple linear regression analyses and statistical indices (r, d, c). The standard scenario yielded performances between very good and excellent (0.75<c≤1.0) for soyb ean and b etween bad and excellent (0.40<c≤1.0) for maize. The alternative scenario was more variable, with performances between terrible and excellent (0.0<c≤1.0) for soybean and terrible and medium (0.0<c≤0.65) for maize. Using only the soil texture classification in AquaCrop indicated an easier way to estimate crop yields, but low performances may restrict estimates of soybean and maize yields in Campos Gerais.

Keywords : simulation; soil attributes; Glycine max; Zea mays.

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