CCSM3.0 Prediction Experiments

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Presentation transcript:

CCSM3.0 Prediction Experiments Testing IPCC Class Model on the Seasonal-to-Interannual Prediction Problem Multi-Model Contribution to the NOAA Climate Test-Bed Using Ocean Initial Conditions from MOM3 in POP

CCSM3.0 Jan 1982 IC CFS Jan 1982 IC Upper left for each set of 8 plots is observational estimates from IOSST and Upper right for each set of 8 plots is the ensemble mean of 6 cases.

CCSM3.0 Jan 1983 IC CFS Jan 1983 IC Upper left for each set of 8 plots is observational estimates from IOSST and Upper right for each set of 8 plots is the ensemble mean of 6 cases.

CCSM3.0 Jan 1988 IC CFS Jan 1988 IC Upper left for each set of 8 plots is observational estimates from IOSST and Upper right for each set of 8 plots is the ensemble mean of 6 cases.