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Integrating landscape resistance and multi-scale predictor of habitat selection for amphibian distribution modelling at large scale
Authors:Matutini  Florence  Baudry  Jacques  Fortin  Marie-Josée  Pain  Guillaume  Pithon  Joséphine
Institution:1.BAGAP, INRAE, Institut Agro, ESA, 55 Rue Rabelais, 49000, Angers, France
;2.BAGAP, INRAE, Institut Agro, ESA, 35042, Rennes, France
;3.Department of Ecology and Evolutionary Biology, University of Toronto, Toronto, ON, M5S 3B2, Canada
;
Abstract:Context

Species distribution modelling is a common tool in conservation biology but two main criticisms remain: (1) the use of simplistic variables that do not account for species movements and/or connectivity and (2) poor consideration of multi-scale processes driving species distributions.

Objectives

We aimed to determine if including multi-scale and fine-scale movement processes in SDM predictors would improve accuracy of SDM for low-mobility amphibian species compared with species-level analysis.

Methods

We tested and compared different SDMs for nine amphibian species with four different sets of predictors: (1) simple distance-based predictors; (2) single-scale compositional predictors; (3) multi-scale compositional predictors with a priori selection of scale based on knowledge of species mobility and scale-of-effect; and (4) multi-scale compositional predictors calculated using a friction-based functional grain to account for resource accessibility with landscape resistance to movement.

Results

Using friction-based functional grain predictors produced slight to moderate improvements of SDM performance at large scale. The multi-scale approach, with a priori scale selection, led to ambiguous results depending on the species studied, in particular for generalist species.

Conclusion

We underline the potential of using a friction-based functional grain to improve SDM predictions for species-level analysis.

Keywords:
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