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Seasonal climate forecasting

✍ Scribed by Alberto Troccoli


Publisher
John Wiley and Sons
Year
2010
Tongue
English
Weight
604 KB
Volume
17
Category
Article
ISSN
1350-4827

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✦ Synopsis


The fascination of seasonal climate forecasting, of which El NiΓ±o forecasting is the prime example, comes from its multi-faceted character. Not only does it pose interesting new challenges for the climate scientific community but also it is naturally linked to a great variety of socio-economic applications. Seasonal climate forecasts are indeed becoming a most important element in some policy/decision making systems, especially within the context of climate change adaptation. Thus, seriously considering the management of risks posed by the variability of climate on the seasonal to interannual time scale is key to achieving the longer terms goals of climate change adaptation strategy. This review paper explores the main components needed to construct a seasonal forecasting system, from the physical basis of climate seasonal predictions, to the tools used for producing them, to the importance of assessing their skill, to their use in risk management decision-making. Future challenges are also examined.


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