Incorporating Climatic Extremes Using the GEV Distribution Improves SDM Range Edge Performance
2025
Fonteyn, Ward | Serra-Diaz, Josep | Muys, Bart | van Meerbeek, Koenraad | Catholic University of Leuven = Katholieke Universiteit Leuven (KU Leuven) | University of Connecticut (UCONN) | SILVA (SILVA) ; AgroParisTech-Université de Lorraine (UL)-Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE) | KU Leuven Plant Institute (LPI) ; Catholic University of Leuven = Katholieke Universiteit Leuven (KU Leuven) | W.F. was supported by the Research Foundation Flanders (FWO-Vlaanderen) under grant 1S41020N and the Short Term Scientific Mission COSTAction grant E- COST- GRANT- CA18201-aa638917-7421c87f-aa99-11ec-b038- 021264b8e0e9 | NASA award 80NSSC22K0883 | ANR-21-CE32-0003,SEEDFOR,Les interactions entre l'établissement des arbres et la gestion contrôle la répartition des forêts de plaine avec le changement climatique(2021)
International audience
Afficher plus [+] Moins [-]anglais. Aim: The changing frequency and intensity of climatic extremes due to climate change can have sudden and adverse impacts on the distribution of species. While species distribution modelling is a vital tool in ecological applications, current approaches fail to fully capture the distribution of climatic extremes, particularly of rare events with the most disruptive potential. Especially at the edges of species' ranges, where conditions are already less favourable, predictions might be inaccurate when these extremesare not well represented.Location: Europe.Taxon: Tree species.Methods: We present a novel approach to integrate extreme events into species distribution models based on the generalised extreme value (GEV) distribution. This distribution, following from the extreme value theory has been established as a valuable tool in analysing climatic extremes, both in an ecological context and beyond. The approach relying on the GEV distribution is broadly applicable, readily transferable across species and relies on widely available data. We demonstrate the efficacy of ourapproach for 28 European tree species, illustrating its superior ability to fully capture the distribution of climatic extremes compared to state-of-the-art methods.Results: We found that incorporating parameters on climatic extremes derived from the GEV distribution increased model performance (AIC model ) and characterised range edges more accurately (AUC edge) compared to competing approaches. However, general AUC values were only marginally increased across the species and study period analysed. Overall, the GEV model predicted a narrower niche for the species included in this study.Main Conclusions: Incorporating climatic extremes can impact spatial predictions of species distribution models, especially atrange margins. We found that using the GEV distribution to characterise extreme variables in SDMs yields the best performanceat these distribution edges. Given the importance of range edges for species conservation, a detailed inclusion of extremes inSDMs employed for those applications will help ensure robust conclusions
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