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A theoretical framework for upscaling species distribution models

Meynard Christine N., Piou Cyril, Kaplan David Michael. 2023. A theoretical framework for upscaling species distribution models. Methods in Ecology and Evolution, 14 (11) : 2888-2899.

Article de revue ; Article de recherche ; Article de revue à facteur d'impact
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Url - jeu de données - Entrepôt autre : https://doi.org/10.5281/zenodo.8256760

Résumé : Species distribution models (SDM) have become one of the most popular predictive tools in ecology. With the advent of new computation and remote sensing technology, high-resolution environmental data sets are becoming more and more common predictors in these modelling efforts. Understanding how scaling affects their outputs is therefore fundamental to understand their applicability. Here, we develop a theoretical basis to understand the consequences of aggregating occurrence and environmental data at different resolutions. We provide a theoretical framework, along with numerical simulations and a real-world case study, to show how these scaling rules influence predictive outputs. We show that the properties of the environment–occurrence relationships change when the data are aggregated: the mean probability of occurrence and species prevalence increases, the optimal environmental values shift and classification rates increase at coarser resolutions up to a certain level. Furthermore, and contrary to the widespread expectation that high-resolution data would produce better predictions, we show here that model performance may increase using coarser resolution data sets rather than the inverse. Finally, we also show that model performance depends not only on the environment–occurrence relationship but also on the interaction between this and the geography and distribution of the available environment. This theoretical framework helps understanding previously incoherent results regarding SDM upscaling and model performance, and illustrates how theoretical and empirical results can provide important feedbacks to advance in understanding scaling issues in macroecology. The interaction between the shape of the environment–occurrence relationship and the rates of change of the environment is fundamental to understand the effects of upscaling in model performance, and may explain why some models are more difficult to transfer to different regions. Most importantly, we argue that there are conceptual choices related to scaling and SDM fitting that require expert knowledge and further explorations between theory and practice in macroecology.

Mots-clés Agrovoc : modèle de simulation, télédétection, modélisation environnementale, impact sur l'environnement, changement climatique, modèle mathématique, technique de prévision, paysage

Mots-clés libres : AUC, ENM, Prediction, Resolution, Scaling, SDM, Spatial scale

Classification Agris : H10 - Ravageurs des plantes
U10 - Informatique, mathématiques et statistiques

Champ stratégique Cirad : CTS 4 (2019-) - Santé des plantes, des animaux et des écosystèmes

Agences de financement hors UE : Institut de Recherche pour le Développement

Auteurs et affiliations

  • Meynard Christine N., INRAE (FRA) - auteur correspondant
  • Piou Cyril, CIRAD-BIOS-UMR CBGP (FRA) ORCID: 0000-0002-9378-9404
  • Kaplan David Michael, Université de Montpellier (FRA) - auteur correspondant

Source : Cirad-Agritrop (https://agritrop.cirad.fr/607130/)

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