2017
DOI: 10.1002/ece3.3461
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Changing measurements or changing movements? Sampling scale and movement model identifiability across generations of biologging technology

Abstract: Animal movement patterns contribute to our understanding of variation in breeding success and survival of individuals, and the implications for population dynamics. Over time, sensor technology for measuring movement patterns has improved. Although older technologies may be rendered obsolete, the existing data are still valuable, especially if new and old data can be compared to test whether a behavior has changed over time. We used simulated data to assess the ability to quantify and correctly identify patter… Show more

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Cited by 4 publications
(4 citation statements)
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“…We considered the following activity metrics as indicators of foraging and flight behaviour: the proportion of time spent on the water (wet), the average duration of flight (dry) bouts in minutes and the number of wet bouts (succeeding dry events) as a proxy for the number of landings. We acknowledge that the low sampling interval is likely to underestimate landing rates (Johnson et al 2017). However, omission errors are likely to be similar across individuals and trip types.…”
Section: Methodsmentioning
confidence: 99%
“…We considered the following activity metrics as indicators of foraging and flight behaviour: the proportion of time spent on the water (wet), the average duration of flight (dry) bouts in minutes and the number of wet bouts (succeeding dry events) as a proxy for the number of landings. We acknowledge that the low sampling interval is likely to underestimate landing rates (Johnson et al 2017). However, omission errors are likely to be similar across individuals and trip types.…”
Section: Methodsmentioning
confidence: 99%
“…This is particularly true for the study of trajectories from sampling movements in space. The choices taken for trajectory segmentation, together with the temporal and spatial granularity of the measures, influence all quantities associated with these trajectories [20,34].…”
Section: Discussionmentioning
confidence: 99%
“…We provided new analytical tools to evaluate the quality of a sampled trajectory for the study of both animal and human movements. Positions must be collected (or, when necessary for historical comparisons, down-sampled [34]) at least with a frequency commensurate with the underlying moving and resting dynamics ( D % 1:96 ffiffiffiffi t t p ). Alternatively, stay points can be reconstructed from high-frequency sampling (kDl ( t), but not when one has bursty inter-event times, because during the numerous extreme events constituting the long tail of the distribution P(D) the information on the movements is simply absent.…”
Section: Discussionmentioning
confidence: 99%
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