Internal variability in the climate system can contribute substantial uncertainty in climate
projections, particularly at regional scales. Internal variability can be quantified using large ensembles of
simulations that are identical but for perturbed initial conditions. Here we compare methods for quantifying
internal variability. Our study region spans the west coast of North America, which is strongly influenced by
El NiƱo and other large-scale dynamics through their contribution to large-scale internal variability. Using
a statistical framework to simultaneously account for multiple sources of uncertainty, we find that internal
variability can be quantified consistently using a large ensemble or an ensemble of opportunity that
includes small ensembles from multiple models and climate scenarios. The latter also produce estimates of
uncertainty due to model differences. We conclude that projection uncertainties are best assessed using
small single-model ensembles from as many model-scenario pairings as computationally feasible, which has
implications for ensemble design in large modeling efforts.
Revised: September 30, 2020 |
Published: January 28, 2018
Citation
Goldenson N.L., G. Mauger, L. Leung, C.M. Bitz, and A. Rhines. 2018.Effects of Ensemble Configuration on Estimates of Regional Climate Uncertainties.Geophysical Research Letters 45, no. 2:926-934.PNNL-SA-131956.doi:10.1002/2017GL076297