| Literature DB >> 25709836 |
Jean-François Therrien1, David Pinaud2, Gilles Gauthier3, Nicolas Lecomte4, Keith L Bildstein1, Joël Bety5.
Abstract
BACKGROUND: Tracking individual animals using satellite telemetry has improved our understanding of animal movements considerably. Nonetheless, thorough statistical treatment of Argos datasets is often jeopardized by their coarse temporal resolution. State-space modelling can circumvent some of the inherent limitations of Argos datasets, such as the limited temporal resolution of locations and the lack of information pertaining to the behavioural state of the tracked individuals at each location. We coupled state-space modelling with environmental characterisation of modelled locations on a 3-year Argos dataset of 9 breeding snowy owls to assess whether searching behaviour for breeding sites was affected by snow cover and depth in an arctic predator that shows a lack of breeding site fidelity.Entities:
Keywords: Dispersal; Env-DATA; Movebank; Pre-breeding movements; Snow; Snowy owl; State-space model
Year: 2015 PMID: 25709836 PMCID: PMC4337749 DOI: 10.1186/s40462-015-0028-7
Source DB: PubMed Journal: Mov Ecol ISSN: 2051-3933 Impact factor: 3.600
Figure 1Example of snowy owl’s pre-breeding movements, alternating between searching and moving behavioural states. Example of a tracked snowy owl searching for a potential breeding site in the Arctic in spring 2009, in relation with surface snow cover (a) and depth (b). Red-outlined dots indicate locations where searching behavioural state occurred.
Results of model selection for the effect of two snow variables on the probability that 9 snowy owls entered into a searching behavioural state during their pre-breeding prospecting movements in northern Canada in 2008, 2009 and 2010
|
|
|
|
|
|
|
|---|---|---|---|---|---|
| snow cover | snow cover | 5 | 0 | −1671 | 3343 |
| null | 4 | 12.5 | −1679 | 3357 | |
| snow depth | snow depth | 5 | 0 | −347.3 | 694.7 |
| null | 4 | 6.0 | −351.3 | 702.7 |
In all models, individual’s ID and year (nested in animal ID) were included as random factors (n = 661 locations).
Figure 2Searching probability of snowy owls during pre-breeding movements in relation to snow cover and depth. Probability of entering into a searching behavioural state during pre-breeding prospecting movements as a function of snow cover and depth in 9 snowy owls tracked via satellites in the Arctic in 2008–2010. For each panel, the predicted probabilities from the final mixed model is shown (calculated at the population level) with 95% confidence intervals.
Figure 3Breeding snowy owl pair at the onset of nesting, Canada, 23 May 2014. A snowy owl breeding pair at the onset of nesting, showing the extent of snow cover typical at that time of year. Photo credits: C. Chevalier, Bylot Island, Canada, 23 May 2014.