The importance of fine-scale predictors of wild boar habitat use in an isolated population
Predicting the likelihood of wildlife presence at potential wildlife-livestock interfaces is challenging. These interfaces are usually relatively small geographical areas where landscapes show large variation over small distances. Models of wildlife distribution based on coarse data over wide geogra...
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Zusammenfassung: | Predicting the likelihood of wildlife presence at potential
wildlife-livestock interfaces is challenging. These interfaces are usually
relatively small geographical areas where landscapes show large variation
over small distances. Models of wildlife distribution based on coarse data
over wide geographical ranges may not be representative of these
interfaces. High-resolution data can help identify fine scale predictors
of wildlife habitat use at a local scale and provide more accurate
predictions of species habitat use. These data may be used to inform
knowledge of interface risks, such as disease transmission between
wildlife and livestock, or human-wildlife conflict. This study uses
fine-scale habitat use data from wild boar (Sus scrofa) based on activity
signs and direct field observations in and around the Forest of Dean in
Gloucestershire, England. Spatial logistic regression models fitted using
a variant of penalized quasi‐likelihood were used to identify
habitat-based and anthropogenic predictors of wild boar signs. Our models
showed that within the Forest of Dean, wild boar signs were more likely to
be seen in spring, in forest-type habitats, closer to the centre of the
forest and near litter bins. In the area surrounding the Forest of Dean,
wild boar signs were more likely to be seen in forest-type habitats and
near recreational parks and less likely to be seen near livestock. This
approach shows that wild boar habitat use can be predicted using
fine-scale data over comparatively small areas and in human-dominated
landscapes, whilst taking account of the spatial correlation from other
nearby fine-scale data-points. The methods we use could be applied to map
habitat use of other wildlife species in similar landscapes, or of
movement-restricted, isolated or fragmented wildlife populations. |
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DOI: | 10.5061/dryad.4mw6m90cx |