Time-dependent memory and individual variation in Arctic brown bears (Ursus arctos)

Abstract Background Animal movement modelling provides unique insight about how animals perceive their landscape and how this perception may influence space use. When coupled with data describing an animal’s environment, ecologists can fit statistical models to location data to describe how spatial...

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Bibliographic Details
Published in:Movement Ecology
Main Authors: Peter R. Thompson, Mark A. Lewis, Mark A. Edwards, Andrew E. Derocher
Format: Article in Journal/Newspaper
Language:English
Published: BMC 2022
Subjects:
Online Access:https://doi.org/10.1186/s40462-022-00319-4
https://doaj.org/article/949d0bea5e984c88bffb082b8c7304fb
Description
Summary:Abstract Background Animal movement modelling provides unique insight about how animals perceive their landscape and how this perception may influence space use. When coupled with data describing an animal’s environment, ecologists can fit statistical models to location data to describe how spatial memory informs movement. Methods We performed such an analysis on a population of brown bears (Ursus arctos) in the Canadian Arctic using a model incorporating time-dependent spatial memory patterns. Brown bear populations in the Arctic lie on the periphery of the species’ range, and as a result endure harsh environmental conditions. In this kind of environment, effective use of memory to inform movement strategies could spell the difference between survival and mortality. Results The model we fit tests four alternate hypotheses (some incorporating memory; some not) against each other, and we found a high degree of individual variation in how brown bears used memory. We found that 71% (15 of 21) of the bears used complex, time-dependent spatial memory to inform their movement decisions. Conclusions These results, coupled with existing knowledge on individual variation in the population, highlight the diversity of foraging strategies for Arctic brown bears while also displaying the inference that can be drawn from this innovative movement model.