The differences between two independently-derived observational data sets. This is a measure of observational uncertainty.
The differences between individual pairs of "initial condition realizations" of the AMIP experiment. This measures uncertainties due to inherently unpredictable atmospheric variability. For both yardsticks, the degree of separation between different observed data sets or initial condition realizations is determined by computing the same statistics used in model-data intercomparisons. The key findings of our study are as follow.:
Model errors are complex, and better-than-average performance in simulating the mean state does not necessarily translate to better-than-average performance in simulating the time-mean spatial field or temporal variability. This emphasizes the point that there is no "universal" statistic that quantifies all aspects of model errors. Validation studies should therefore use a suite of statistics to characterize these errors.
For the three variables considered (SLP, total cloud cover, and surface air temperature), the model versus observed differences, as characterized by a suite of univariate and multivariate statistics, were generally much larger than the differences between two independent data sets or between different initial-condition realizations. The implication is that for these three fields, model errors in the AGCMs participating in AMIP are currently larger than our observational uncertainties and larger than the differences that we would expect due to inherently unpredictable atmospheric variability.
The dimensionless statistics applied allow one to compare the fidelity
with which the AMIP models simulate different climate variables. For the
three variables examined here, the smallest errors in the simulation of
the climatological annual mean state are for surface air temperature and
the largest errors are for cloud cover.