Abstract

Animal telemetry data are often analysed with discrete time movement models. These models are defined with regular time steps. However, telemetry data from marine animals are observed irregularly. To account for irregular data, a time-irregularised first-difference correlated random walk model with drift is introduced. The model generalizes the commonly used first-difference correlated random walk with regular time steps by allowing irregular time steps, including a drift term, and by allowing different autocorrelation in the two coordinates. The model is applied to data from a ringed seal collected through the Argos satellite system, and is compared to related movement models through simulations. Accounting for irregular data in the movement model results in accurate parameter estimates and reconstruction of movement paths. Further, the introduced model can provide more accurate movement paths than the regular time counterpart. Extracting accurate movement paths from uncertain telemetry data is important for evaluating space use patterns for marine animals, which in turn is crucial for management. Further, handling irregular data directly in the movement model allows efficient simultaneous analyses of several animals.

Highlights

  • Understanding animal movement behaviour, space use patterns, and response to the environment relies on modelling animal telemetry data

  • Time-scale corrections of the DCRW parameters were found by considering a time regular GDCRW

  • Like the CTCRW and DCRW, the GDCRW includes the random walk as a limiting case

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Summary

Christoffer Moesgaard Albertsen

Animal telemetry data are often analysed with discrete time movement models These models are defined with regular time steps. In spite of technological advances leading to more accurate measurements and larger datasets, data from satellite tags have inherent measurement errors Systems such as Fastloc GPS and Argos can only record data when the animal is above water, with an accuracy that depends on the surface time and diving behaviour[2]. This results in data observed at irregular time steps with considerable uncertainty, which makes state-space models a valuable framework for analysing the data. The applicability and extendability of the model are illustrated through a real animal movement dataset

Materials and Methods
Simulation Studies
Corrected DCRW
Case study
Discussion
Latitudinal velocity
Findings
Additional Information

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