A Bayesian approach to atmospheric circulation regime assignment
Journal of Climate AMS 36:24 (2023) 8619-8636
Authors:
Swinda Falkena, Jana de Wiljes, Antje Weisheimer, Theodore G Shepherd
Abstract:
The standard approach when studying atmospheric circulation regimes and their
dynamics is to use a hard regime assignment, where each atmospheric state is assigned to the
regime it is closest to in distance. However, this may not always be the most appropriate approach
as the regime assignment may be affected by small deviations in the distance to the regimes due
to noise. To mitigate this we develop a sequential probabilistic regime assignment using Bayes
Theorem, which can be applied to previously defined regimes and implemented in real time as new
data become available. Bayes Theorem tells us that the probability of being in a regime given the
data can be determined by combining climatological likelihood with prior information. The regime
probabilities at time í‘¡ can be used to inform the prior probabilities at time í‘¡ +1, which are then used
to sequentially update the regime probabilities. We apply this approach to both reanalysis data
and a seasonal hindcast ensemble incorporating knowledge of the transition probabilities between
regimes. Furthermore, making use of the signal present within the ensemble to better inform
the prior probabilities allows for identifying more pronounced interannual variability. The signal
within the interannual variability of wintertime North Atlantic circulation regimes is assessed using
both a categorical and regression approach, with the strongest signals found during very strong El
Niño years.