Animal Movement Models for Migratory Individuals and Groups
Animals often exhibit changes in their behavior during migration. Telemetry data provide a way to observe geographic position of animals over time, but not necessarily changes in the dynamics of the movement process. Continuous-time models allow for statistical predictions of the trajectory in the p...
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Zusammenfassung: | Animals often exhibit changes in their behavior during migration. Telemetry
data provide a way to observe geographic position of animals over time, but not
necessarily changes in the dynamics of the movement process. Continuous-time
models allow for statistical predictions of the trajectory in the presence of
measurement error and during periods when the telemetry device did not record
the animal's position. However, continuous-time models capable of mimicking
realistic trajectories with sufficient detail are computationally challenging
to fit to large data sets and basic models lack realism in their ability to
capture nonstationary dynamics. We present a unified class of animal movement
models that are computationally efficient and provide a suite of approaches for
accommodating nonstationarity in continuous trajectories due to migration and
interactions among individuals. We show how to nest convolution models to
incorporate interactions among migrating individuals to account for
nonstationarity and provide inference about dynamic migratory networks. We
demonstrate these approaches in two case studies involving migratory birds.
Specifically, we used process convolution models with temporal deformation to
account for heterogeneity in individual greater white-fronted goose migrations
in Europe and Iceland and we used nested process convolutions to model dynamic
migratory networks in sandhill cranes in North America. The approach we present
accounts for various forms of temporal heterogeneity in animal movement and is
not limited to migratory applications. Furthermore, our models rely on
well-established principles for modeling dependent data and leverage modern
approaches for modeling dynamic networks to help explain animal movement and
social interaction. |
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DOI: | 10.48550/arxiv.1708.09472 |