2020
DOI: 10.1111/ddi.13130
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Environmental drivers of movement in a threatened seabird: insights from a mechanistic model and implications for conservation

Abstract: Aim Determining the drivers of movement of different life‐history stages is crucial for understanding age‐related changes in survival rates and, for marine top predators, the link between fisheries overlap and incidental mortality (bycatch), which is driving population declines in many taxa. Here, we combine individual tracking data and a movement model to investigate the environmental drivers and conservation implications of divergent movement patterns in juveniles (fledglings) and adults of a threatened seab… Show more

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Cited by 24 publications
(13 citation statements)
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References 109 publications
(166 reference statements)
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“…warping measures how much an entire spawning phenology trajectory must be stretched or compressed in time to match that of another fish. As such, spawning run phenologies that are alike in shape, extent, and destination, but offset in time are clustered together [51,52]; Fig 2). The iterative clustering procedure, utilizing dynamic time warping and performed with the dtw [53] and dtwclust [54] packages in R, solved for maximum within-cluster similarity and minimum between-cluster similarity.…”
Section: Plos Onementioning
confidence: 98%
See 1 more Smart Citation
“…warping measures how much an entire spawning phenology trajectory must be stretched or compressed in time to match that of another fish. As such, spawning run phenologies that are alike in shape, extent, and destination, but offset in time are clustered together [51,52]; Fig 2). The iterative clustering procedure, utilizing dynamic time warping and performed with the dtw [53] and dtwclust [54] packages in R, solved for maximum within-cluster similarity and minimum between-cluster similarity.…”
Section: Plos Onementioning
confidence: 98%
“…equivalent, and does not have the requirement of equal-length time series [48]. Developed as a machine learning tool in speech recognition applications, it has received scant attention by movement ecologists [51,52]. In its application to inverted U-shaped spawning run behavior, the algorithm performed well, summarizing time series that ranged between 16 and 70 days in duration, and time series that deviated from symmetry and often showed multiple up-estuary excursions (Figs 2 and 4).…”
Section: Plos Onementioning
confidence: 99%
“…Our observed movement associations with underlying vorticity and at a distance, positive divergence, might offer some insight into the visual sensory ecology of terns, as localized and ephemeral by nature, these features could be regarded as direct cues for enhanced prey accessibility through physical accumulation. The physical environment affects signal properties and without quantifying the different kinds of information that an animal can extract information from, it is challenging to obtain a mechanistic understanding of foraging behaviour [ 53 , 54 ]. Ultimately, investigating how an animal's perceptual abilities determine how it extracts information from the environment is an essential component of their foraging ability and thus, the animal's ecological function [ 55 ].…”
Section: Discussionmentioning
confidence: 99%
“…The major diving hotspot of white‐chinned petrels in the study overlapped with these fishing areas, confirming their susceptibility to bycatch during incubation. The majority of the South Georgia population also uses this productive region during the pre‐laying exodus and nonbreeding season (Phillips et al, 2006), and so is susceptible to bycatch for much more of the year than other procellariform species from South Georgia (Phillips et al, 2016; Clay et al, 2019; Frankish et al, 2020). Therefore, although dive capabilities (maximum depth and descent rates) may vary somewhat among seasons (Rollinson, Dilley & Ryan, 2014), recorded dive characteristics in this study provide a relevant baseline for assessing the design and implementation of effective mitigation measures in the south‐west Atlantic.…”
Section: Discussionmentioning
confidence: 99%
“…The major diving hotspot of white-chinned petrels in the study overlapped with these fishing areas, confirming their susceptibility to bycatch during incubation. The majority of the South Georgia population also uses this productive region during the pre-laying exodus and nonbreeding season (Phillips et al, 2006), and so is susceptible to bycatch for much more of the year than other procellariform species from South Georgia (Phillips et al, 2016;Clay et al, 2019;Frankish et al, 2020).…”
Section: Relevance Of Diving Behaviour For the Design Of Bycatch Mitigation Measuresmentioning
confidence: 99%