INVESTIGADORES
CAVIGLIA Octavio Pedro
artículos
Título:
Modelling forage yield and water productivity of continuous crop sequences in the Argentinian Pampas
Autor/es:
OJEDA, J.J.; PEMBLETON, K.G.; CAVIGLIA O.P.; ISLAM, M.R.; AGNUSDEI, M.G.; GARCIA S.C.
Revista:
EUROPEAN JOURNAL OF AGRONOMY
Editorial:
ELSEVIER SCIENCE BV
Referencias:
Lugar: Amsterdam; Año: 2018 vol. 92 p. 84 - 96
ISSN:
1161-0301
Resumen:
In recent years, the use of forage crop sequences (FCS) has been increased as a main component into the animal rations of the Argentinian pasture-based livestock systems. However, it is unclear how year-by-year rainfall variability and interactions with soil properties affect FCS dry matter (DM) yield in these environments. Biophysical crop models, such as Agricultural Production Systems Simulator (APSIM), are tools that enable the evaluation of crop yield variability across a wide of environments. The objective of this study was to evaluate the APSIM ability to predict forage DM yield and water productivity (WP) of multiple continuous FCS. Thirteen continuous FCS, including winter and summer crops, were simulated by APSIM during two/three growing seasons in five locations across the Argentinian Pampas. Our modelling approach was based on the simulation of multiple continuous FCS, in which crop DM yields depend on the performance of the previous crop in the same sequence and the final soil variables of the previous crop are the initial conditions for the next crop. Overall, APSIM was able to accurately simulate FCS DM yield (0.93 and 3.2 Mg ha-1 for concordance correlation coefficient [CCC] and root mean square error [RMSE] respectively). On the other hand, the model predictions were better for annual (CCC=0.94; RMSE=0.4 g m-2 mm-1) than for seasonal WP (CCC=0.71; RMSE=1.9 g m-2 50 mm-1), i.e. at the crop level. The model performance to predict WP was associated with better estimations of the soil water dynamics over the long-term, i.e. at the FCS level, rather than the short-term, i.e. at the crop level. The ability of APSIM to predict WP decreased as seasonal WP values increased, i.e. for low water inputs. For seasonal water inputs,