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A Multi‐Algorithm Analysis of Projected Changes to Freezing Rain Over North America in an Ensemble of Regional Climate Model Simulations

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Type de ressource
Article de revue
Auteurs/contributeurs
  • McCray, Christopher D. (Auteur)
  • Paquin, Dominique (Auteur)
  • Thériault, Julie M. (Auteur)
  • Bresson, Émilie (Auteur)
Titre
A Multi‐Algorithm Analysis of Projected Changes to Freezing Rain Over North America in an Ensemble of Regional Climate Model Simulations
Résumé
Abstract Freezing rain events have caused severe socioeconomic and ecosystem impacts. An understanding of how these events may evolve as the Earth warms is necessary to adequately adapt infrastructure to these changes. We present an analysis of projected changes to freezing rain events over North America relative to the 1980–2009 recent past climate for the periods during which +2, +3, and +4°C of global warming is attained. We diagnose freezing rain using four precipitation‐type algorithms (Cantin and Bachand, Bourgouin, Ramer, and Baldwin) applied to four simulations of the fifth‐generation Canadian Regional Climate Model (CRCM5) driven by four global climate models (GCMs). We find that the choice of driving GCM strongly influences the spatial pattern of projected change. The choice of algorithm has a comparatively smaller impact, and primarily affects the magnitude but not the sign of projected change. We identify several regions where all simulations and algorithms agree on the sign of change, with increases projected over portions of western Canada and decreases over the central, eastern, and southern United States. However, we also find large regions of disagreement on the sign of change depending on driving GCM and even ensemble member of the same GCM, highlighting the importance of examining freezing rain events in a multi‐member ensemble of simulations driven by multiple GCMs to sufficiently account for uncertainty in projections of these hazardous events. , Plain Language Summary Freezing rain events, or ice storms, can have major impacts on electrical infrastructure, agriculture, and road and air travel. Despite these impacts, relatively little research has been done on how these events may change as the Earth warms. We therefore examine several climate model simulations to determine how the frequency of freezing rain may change at different levels of future global warming. We focus in particular on how sensitive the projected changes are to the method used to identify freezing rain in the model output, as well as to the choice of climate model used to produce the projections. We find strong agreement among methods and models on a decrease in freezing rain frequency over much of the United States (from Texas northeastward to Maine) and an increase in freezing rain frequency over portions of western Canada (Alberta, Saskatchewan, Manitoba). In many other areas, however, the different methods and simulations disagree on the direction of projected change. Our findings highlight the importance of using many different climate models, rather than single simulations, to paint a clearer picture of the level of certainty in projections of freezing rain in the context of global warming. , Key Points Freezing rain is projected to increase in frequency over portions of western and central Canada and decrease over most of the United States The sign of projected changes is not highly sensitive to the precipitation‐type algorithm used to diagnose freezing rain The choice of driving global climate model is a key source of uncertainty in both the sign and magnitude of projected changes
Publication
Journal of Geophysical Research: Atmospheres
Volume
127
Numéro
14
Pages
e2022JD036935
Date
2022-07-27
Abrév. de revue
JGR Atmospheres
Langue
en
DOI
10.1029/2022JD036935
ISSN
2169-897X, 2169-8996
URL
https://agupubs.onlinelibrary.wiley.com/doi/10.1029/2022JD036935
Consulté le
06/11/2024 15:51
Catalogue de bibl.
DOI.org (Crossref)
Référence
McCray, C. D., Paquin, D., Thériault, J. M., & Bresson, É. (2022). A Multi‐Algorithm Analysis of Projected Changes to Freezing Rain Over North America in an Ensemble of Regional Climate Model Simulations. Journal of Geophysical Research: Atmospheres, 127(14), e2022JD036935. https://doi.org/10.1029/2022JD036935
Auteur·e·s
  • Thériault, Julie M.
Document
  • McCray et al. - 2022 - A Multi‐Algorithm Analysis of Projected Changes to Freezing Rain Over North America in an Ensemble o.pdf
Lien vers cette notice
https://bibliographies.uqam.ca/escer/bibliographie/CGNEESVP

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