Abstract :
The atmosphere is often cited as an archetypal example of a chaotic system, where prediction
is limited by the model’s sensitivity to initial conditions. Experiments have indeed shown that
forecast errors, as measured in 500 hPa heights, can double in 1.5 d or less. Recent work,
however, has shown that, when errors are measured in total energy, model error is the primary
contributor to forecast inaccuracy. In this paper we attempt to reconcile these apparently
conflicting sets of results by examining the role of the chosen metric. Using a simple mediumdimensional
model for illustration, it is found that the metric has a strong effect, not just on
apparent error growth, but on the perceived causes of error. If an insufficiently global metric
is used, then it may appear that error is due to sensitivity to initial condition, when in fact it
is caused by sensitivity to error in the other variables. If the goal is to diagnose the causes of
error, a sufficiently global metric must be used. The simple model is used to predict the internal
rate of growth of the ECMWF operational model, and preliminary results compared. It is found
that both 500 hPa and total energy results are consistent with high model error and a relatively
low internal rate of growth. Experiments are suggested to further verify the results for
weather models