Title of article :
Reduction of systematic errors by empirical model correction: impact on seasonal prediction skill
Author/Authors :
A. GULDBERG، نويسنده , , E. KAAS ، نويسنده , , M. DEQUE، نويسنده , , S. YANG ، نويسنده , , S. VESTER THORSEN، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Recent studies indicate that the atmospheric response to anomalies in the lower boundary conditions, e.g. sea surface
temperatures, is strongly dependent on the atmospheric background flow. Since all general circulation models have
long-term systematic errors it is therefore possible that the skill in seasonal prediction is improved by reducing the
systematic errors of the model. In this study sensitivity experiments along this line are made with an empirically
corrected dynamical model for which the systematic errors are reduced substantially and the dynamical variability has
become more realistic than for the original model. As a measure of seasonal prediction skill, correlation of temporal
anomalies between modelled and observed data has been determined. The corrected model shows improved skill in the
Southern Hemisphere in general—on average a 20–30% improvement for the Southern Hemisphere compared with the
original model. In the Northern Hemisphere skill is improved in some areas, but in other areas the skill of the original
model is better. On average there is no improvement for the Northern Hemisphere. Also, pattern correlations have been
determined for the following areas: the Northern Hemisphere, the Southern Hemisphere, the tropics and Europe. The
general picture is that the two model versions are very similar in the Northern Hemisphere and in the tropics. For Europe
the results of the two models are rather different, but no model can be said to be better than the other. In the Southern
Hemisphere it is again seen that the correlations are higher for the corrected model than for the original model
Journal title :
Tellus. Series A
Journal title :
Tellus. Series A