Combining large model ensembles with extreme value statistics to improve attribution statements of rare events

Gaining a better understanding of rare weather events is a major research challenge and of crucial relevance for societal preparedness in the face of a changing climate. The main focus of previous studies has been to apply a range of relatively distinct methodologies to constrain changes in the odds...

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Bibliographic Details
Published in:Weather and Climate Extremes
Main Authors: Sippel, Sebastian, Mitchell, Dann, Black, Mitchell T., Dittus, Andrea J., Harrington, Luke, Schaller, Nathalie, Otto, Friederike E.L.
Format: Article in Journal/Newspaper
Language:English
Published: 2015
Subjects:
Online Access:https://hdl.handle.net/1983/bfe58c5d-b5d7-4ce0-b613-53297f20b5d1
https://research-information.bris.ac.uk/en/publications/bfe58c5d-b5d7-4ce0-b613-53297f20b5d1
https://doi.org/10.1016/j.wace.2015.06.004
http://www.scopus.com/inward/record.url?scp=84940950867&partnerID=8YFLogxK
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Summary:Gaining a better understanding of rare weather events is a major research challenge and of crucial relevance for societal preparedness in the face of a changing climate. The main focus of previous studies has been to apply a range of relatively distinct methodologies to constrain changes in the odds of those events, including both parametric statistics (extreme value theory, EVT) and empirical approaches based on large numbers of dynamical model simulations.In this study, the applicability of EVT in the context of probabilistic event attribution is explored and potential combinations of both methodological frameworks are investigated. In particular, this study compares empirical return time estimates derived from a large model ensemble with parametric inferences from the same data set in order to assess whether statements made about events in the tails are similar. Our analysis is illustrated using a case study of cold extremes and heavy rainfall in winter 2013/14 in Europe (focussing on two regions: North-West Russia and the Iberian Peninsula) for a present-day (including 'anthropogenic' influences) and an alternative 'non-industrial' climate scenario.We show that parametric inferences made about rare 'extremes' can differ considerably from estimates based on large ensembles. This highlights the importance of an appropriate choice of block and sample sizes for parametric inferences of the tails of climatological variables. For example, inferences based on annual extremes of daily variables are often insufficient to characterize rare events due to small sample sizes (i.e. with return periods >100 years). Hence, we illustrate how a combination of large numerical simulations with EVT might enable a more objective assessment of EVT parameters, such as block and sample size, for any given variable, region and return period of interest.By combining both methodologies, our case study reveals that a distinct warming of cold extremes in winter has occurred throughout Europe in the 'anthropogenic' relative to the ...