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http://hdl.handle.net/10174/17355
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Title: | Stochastic simulation of maize productivity: spatial and temporal uncertainty |
Authors: | GRIFO, ARL MARQUES DA SILVA, JR |
Keywords: | Maize Yield spatial and temporal uncertainty Risk management Stochastic simulation |
Issue Date: | 2015 |
Publisher: | SPRINGER |
Citation: | • GRIFO, A. R. L.; MARQUES DA SILVA, JOSÉ R. (2015). Stochastic simulation of maize productivity: spatial and temporal uncertainty. Precision Agriculture Journal, (16) 668–689 |
Abstract: | There is emerging interest in evaluating the uncertainty of agricultural production
to support the production process and for guidance in decision making. The main
objective of this work was to estimate the spatial and temporal maize yield uncertainty
using stochastic simulation techniques to reduce the economic risk considering the producer
risk profile and the international prices of maize and inputs. The results showed that
(i) the class yield percentage variation in yield stochastic simulation depends on the
sampling density; (ii) higher sampling densities promote an overestimation of low and high
yield values compared to those of real yield data; (iii) reducing sampling density promotes
the low and high values of overestimation reduction while increasing the central classes
values compared to those of real yield data; (iv) the ideal point density for yield stochastic
simulation is approximately 65 points/ha; (v) in Mediterranean environments, more than
3–4 years’ worth of real yield data considered as a whole do not seem to improve the
parcel level of confidence when cropping irrigated maize; and (vi) the number of equiprobable
surfaces that were generated by sequential Gaussian simulation helped to calculate
the yield class uncertainty and permitted the study of class yield probabilities for a
particular position of the parcel and, therefore, to manage the yield risk and support future
decisions. The approach that is presented in this paper may increase prior knowledge of agricultural parcel behavior in the absence of multi-year data, thereby increasing the
possibility of reducing economic risks. |
URI: | http://hdl.handle.net/10174/17355 |
Type: | article |
Appears in Collections: | ERU - Publicações - Artigos em Revistas Internacionais Com Arbitragem Científica MED - Publicações - Artigos em Revistas Internacionais Com Arbitragem Científica
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