Data di Pubblicazione:
2006
Abstract:
As climate is a key agro-ecosystem driving force, climate change could have a severe
impact on agriculture. Many assessments have been carried out to date on the possible
effects of climate change (temperature, precipitation and carbon dioxide concentration
changes) on plant physiology. At present however, likely effects on plant pathogens have
not been investigated deeply. The aim of this work was to simulate future scenarios of
downy mildew (Plasmopara viticola) epidemics on grape under climate change, by
combining a disease model to output from two general circulation models (GCMs).
Model runs corresponding to the SRES-A2 emissions scenario, characterized by high
projections of both population and greenhouse gas emissions from present to 2100, were
chosen in order to investigate impacts of worst-case scenarios, among those currently
available from IPCC. Three future decades were simulated (2030, 2050, 2080), using as
baseline historical series of meteorological data collected from 1955 to 2001 in Acqui
Terme, an important grape-growing area in the north-west of Italy. Both GCMs predicted
increase of temperature and decrease of precipitation in this region. The simulations
obtained by combining the disease model to the two GCM outputs predicted an increase
of the disease pressure in each decade: more severe epidemics were a direct consequence
of more favourable temperature conditions during the months of May and June. These
negative effects of increasing temperatures more than counterbalanced the effects of
precipitation reductions, which alone would have diminished disease pressure. Results
suggested that, as adaptation response to future climate change, more attention would
have to be paid in the management of early downy mildew infections; two more
fungicide sprays were necessary under the most negative climate scenario, compared
with present management regimes. At the same time, increased knowledge on the effects
of climate change on host–pathogen interactions will be necessary to improve current
predictions
Tipologia CRIS:
03A-Articolo su Rivista
Elenco autori:
Salinari F.; Giosuè S.; Tubiello F.; Rettori A.; Rossi V.; Spanna F.; Rosenzweig C.; Gullino M.L.
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