Economical defence of resources structures territorial space use in a cooperative carnivore

Proceedings of the Royal Society B: Biological Sciences
By: , and 

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Abstract

Ecologists have long sought to understand space use and mechanisms underlying patterns observed in nature. We developed an optimality landscape and mechanistic territory model to understand mechanisms driving space use and compared model predictions to empirical reality. We demonstrate our approach using grey wolves (Canis lupus). In the model, simulated animals selected territories to economically acquire resources by selecting patches with greatest value, accounting for benefits, costs and trade-offs of defending and using space on the optimality landscape. Our approach successfully predicted and explained first- and second-order space use of wolves, including the population's distribution, territories of individual packs, and influences of prey density, competitor density, human-caused mortality risk and seasonality. It accomplished this using simple behavioural rules and limited data to inform the optimality landscape. Results contribute evidence that economical territory selection is a mechanistic bridge between space use and animal distribution on the landscape. This approach and resulting gains in knowledge enable predicting effects of a wide range of environmental conditions, contributing to both basic ecological understanding of natural systems and conservation. We expect this approach will demonstrate applicability across diverse habitats and species, and that its foundation can help continue to advance understanding of spatial behaviour.

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Publication type Article
Publication Subtype Journal Article
Title Economical defence of resources structures territorial space use in a cooperative carnivore
Series title Proceedings of the Royal Society B: Biological Sciences
DOI 10.1098/rspb.2021.2512
Volume 289
Issue 1966
Year Published 2022
Language English
Publisher The Royal Society Publishing
Contributing office(s) Coop Res Unit Seattle
Description 20212512, 10 p.
Country United States
State Montana
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