Accounting for phenology in the analysis of animal movement
Henry R. Scharf, Mevin B. Hooten, Ryan R. Wilson, George M. Durner,, Todd C. Atwood

TL;DR
This paper presents a new animal movement model that accounts for dynamic landscape features, specifically sea ice in polar bears, enabling better understanding of habitat use and sub-population clustering.
Contribution
The paper introduces a novel model for animal movement that incorporates dynamic landscape features and a two-stage Bayesian inference method for large datasets.
Findings
Successfully analyzed over 300,000 locations of polar bears.
Identified sub-populations based on habitat use.
Enhanced understanding of polar bear movement in relation to sea ice dynamics.
Abstract
The analysis of animal tracking data provides an important source of scientific understanding and discovery in ecology. Observations of animal trajectories using telemetry devices provide researchers with information about the way animals interact with their environment and each other. For many species, specific geographical features in the landscape can have a strong effect on behavior. Such features may correspond to a single point (e.g., dens or kill sites), or to higher-dimensional subspaces (e.g., rivers or lakes). Features may be relatively static in time (e.g., coastlines or home-range centers), or may be dynamic (e.g., sea ice extent or areas of high-quality forage for herbivores). We introduce a novel model for animal movement that incorporates active selection for dynamic features in a landscape. Our approach is motivated by the study of polar bear (Ursus maritimus)…
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