Stochastic implications for long-range rainfall predictions

Rainfall prediction for a year in advance would be immensely valuable for numerous activities, if it were achievable. It is shown that in any one year, the chances of making a correct prediction is about 50%, but there is no way a priori of determining the correctness of such a prediction. This resu...

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Veröffentlicht in:Climate dynamics 2017-12, Vol.49 (11-12), p.4189-4200
Hauptverfasser: Hunt, B. G., Dix, M. R.
Format: Artikel
Sprache:eng
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Zusammenfassung:Rainfall prediction for a year in advance would be immensely valuable for numerous activities, if it were achievable. It is shown that in any one year, the chances of making a correct prediction is about 50%, but there is no way a priori of determining the correctness of such a prediction. This results primarily because annual mean time series of rainfall over most of the globe consists of white noise, i.e. they are random/stochastic. This outcome is shown to exist for both observations and output from a coupled global climatic model, based on autoregressive analysis. The major forcing mechanism for rainfall anomalies over much of the global is the El Niño/Southern Oscillation, but it explains only a modest part of the variance in the rainfall. Much of the remaining variance is attributed to internal climatic variability, and it is shown that this imposes a major limitation on rainfall predictability.
ISSN:0930-7575
1432-0894
DOI:10.1007/s00382-017-3572-6