2006
DOI: 10.1111/j.1365-2656.2006.01129.x
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Robust hierarchical state–space models reveal diel variation in travel rates of migrating leatherback turtles

Abstract: Summary1. Biological and statistical complexity are features common to most ecological data that hinder our ability to extract meaningful patterns using conventional tools. Recent work on implementing modern statistical methods for analysis of such ecological data has focused primarily on population dynamics but other types of data, such as animal movement pathways obtained from satellite telemetry, can also benefit from the application of modern statistical tools. 2. We develop a robust hierarchical state-spa… Show more

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Cited by 142 publications
(133 citation statements)
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“…Location data obtained through satellite transmitters are often received at irregular time intervals and sometimes involve large gaps and positional errors. Ad hoc filtering of location data based on location quality is not sufficient to remove erroneous locations and also results in loss of information [42]. Switching SSM estimates location and behavioral mode at regular time intervals, accounting for satellite positional errors and dynamics of the animal movement pattern [41] and is recommended as the best analytical technique for Argos tracking data once post processed by removing land points and adding back in good Argos locations [56].…”
Section: Switching State-space Modelingmentioning
confidence: 99%
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“…Location data obtained through satellite transmitters are often received at irregular time intervals and sometimes involve large gaps and positional errors. Ad hoc filtering of location data based on location quality is not sufficient to remove erroneous locations and also results in loss of information [42]. Switching SSM estimates location and behavioral mode at regular time intervals, accounting for satellite positional errors and dynamics of the animal movement pattern [41] and is recommended as the best analytical technique for Argos tracking data once post processed by removing land points and adding back in good Argos locations [56].…”
Section: Switching State-space Modelingmentioning
confidence: 99%
“…The model was described in 2005 [41] and has previously been applied to the movement of marine animals including turtles [1,3,4,42,43,[46][47][48][49][50]56,80]. Location data obtained through satellite transmitters are often received at irregular time intervals and sometimes involve large gaps and positional errors.…”
Section: Switching State-space Modelingmentioning
confidence: 99%
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“…First, we will use existing TOPP tracking data to generate overall utilization distributions as well as single species distributions and further categorize track segments by behavioral state using a combination of state spaced models and the fractal landscape method to determine regions of area restricted search (ARS) (Jonsen et al 2003;Jonsen et al 2006;Tremblay et al 2007). Next, we will model the links between oceanographic parameters and animal movement patterns.…”
Section: Approachmentioning
confidence: 99%