Data di Pubblicazione:
2014
Abstract:
AlertInf is a recently developed model to predict the daily emergence of three important weed species
in maize cropped in northern Italy (common lambsquarters, johnsongrass, and velvetleaf). Its use can
improve the effectiveness and sustainability of weed control, and there has been growing interest from
farmers and advisors. However, there are two important limits to its use: the low number of weed
species included and its applicability only to maize. Consequently, the aim of this study was to
expand the AlertInf weed list and extend its use to soybean. The first objective was to add another two
important weed species for spring-summer crops in Italy, barnyardgrass and large crabgrass. Given
that maize and soybean have different canopy architectures that can influence the interrow
microclimate, the second objective was to compare weed emergence in maize and soybean sown on
the same date. The third objective was to evaluate if AlertInf was transferable to soybean without
recalibration, thus saving time and money. Results showed that predictions made by AlertInf for all
five species simulated in soybean were satisfactory, as shown by the high efficiency index (EF) values,
and acceptable from a practical point of view. The fact that the algorithm used for estimating weed
emergence in maize was also efficient for soybean, at least for crops grown in northeastern Italy with
standard cultural practices, encourages further development of AlertInf and the spread of its use.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Hydrothermal time; emergence prediction; modeling; weed control
Elenco autori:
Otto, Stefan; Loddo, Donato
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