Accounting for connectivity uncertainties in predicting roadkills: a comparative approach between path selection functions and habitat suitability models.

Functional connectivity modeling is increasingly used to predict the best spatial location for over- or underpasses, to mitigate road barrier effects and wildlife roadkills. This tool requires estimation of resistance surfaces, ideally modeled with movement data, which are costly to obtain. An alternative is to use occurrence data within species distribution models to infer movement resistance, although this remains a controversial issue. This study aimed both to compare the performance of resistance surfaces derived from path versus occurrence data in identifying road-crossing locations of a forest carnivore and assess the influence of movement type (daily vs. dispersal) on this performance. Resistance surfaces were built for genet (Genetta genetta) in southern Portugal using path selection functions with telemetry data, and species distribution models with occurrence data. An independent roadkill dataset was used to evaluate the performance of each connectivity model in predicting roadkill locations. The results show that resistance surfaces derived from occurrence data are as suitable in predicting roadkills as path data for daily movements. When dispersal was simulated, the performance of both resistance surfaces was equally good at predicting roadkills. Moreover, contrary to our expectations, we found no significant differences in locations of roadkill predictions between models based on daily movements and models based on dispersal. Our results suggest that species distribution models are a cost-effective tool to build functional connectivity models for road mitigation plans when movement data are not available.

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Valerio F. Carvalho F. Barbosa A.M. Mira A. y Santos S.M. Accounting for connectivity uncertainties in predicting roadkills: a comparative approach between path selection functions and habitat suitability models. Springer, 2019. https://doi.org/10.1007/s00267-019-01191-6

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Retrieved: 21 Jan 2025 06:20:04

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Resource type Text
Date of creation 2024-12-02
Date of last revision 2025-01-21
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Metadata identifier a7cfc76f-7920-5795-8e13-79feb8ed8cd3
Metadata language Spanish
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Name of the dataset creator Valerio, F., Carvalho, F., Barbosa, A.M., Mira, A. y Santos, S.M.
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Other identifier DOI: 10.1007/s00267-019-01191-6
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