Ellie Owen
Royal Society for the Protection of Birds
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Publication
Featured researches published by Ellie Owen.
Ecology and Evolution | 2016
Marianna Chimienti; Thomas Cornulier; Ellie Owen; Mark Bolton; Ian M. Davies; Justin M. J. Travis; Beth E. Scott
Abstract The recent increase in data accuracy from high resolution accelerometers offers substantial potential for improved understanding and prediction of animal movements. However, current approaches used for analysing these multivariable datasets typically require existing knowledge of the behaviors of the animals to inform the behavioral classification process. These methods are thus not well‐suited for the many cases where limited knowledge of the different behaviors performed exist. Here, we introduce the use of an unsupervised learning algorithm. To illustrate the methods capability we analyse data collected using a combination of GPS and Accelerometers on two seabird species: razorbills (Alca torda) and common guillemots (Uria aalge). We applied the unsupervised learning algorithm Expectation Maximization to characterize latent behavioral states both above and below water at both individual and group level. The application of this flexible approach yielded significant new insights into the foraging strategies of the two study species, both above and below the surface of the water. In addition to general behavioral modes such as flying, floating, as well as descending and ascending phases within the water column, this approach allowed an exploration of previously unstudied and important behaviors such as searching and prey chasing/capture events. We propose that this unsupervised learning approach provides an ideal tool for the systematic analysis of such complex multivariable movement data that are increasingly being obtained with accelerometer tags across species. In particular, we recommend its application in cases where we have limited current knowledge of the behaviors performed and existing supervised learning approaches may have limited utility.
Methods in Ecology and Evolution | 2017
Ella Browning; Mark Bolton; Ellie Owen; Akiko Shoji; Tim Guilford; Robin Freeman
To prevent further global declines in biodiversity, identifying and understanding key habitats is crucial for successful conservation strategies. For example, globally, seabird populations are under threat and animal movement data can identify key at-sea areas and provide valuable information on the state of marine ecosystems. To date, in order to locate these areas, studies have used global positioning system (GPS) to record position and are sometimes combined with time–depth recorder (TDR) devices to identify diving activity associated with foraging, a crucial aspect of at-sea behaviour. However, the use of additional devices such as TDRs can be expensive, logistically difficult and may adversely affect the animal. Alternatively, behaviours may be resolved from measurements derived from the movement data alone. However, this behavioural analysis frequently lacks validation data for locations predicted as foraging (or other behaviours). Here, we address these issues using a combined GPS and TDR dataset from 108 individuals by training deep learning models to predict diving in European shags, common guillemots and razorbills. We validate our predictions using withheld data, producing quantitative assessment of predictive accuracy. The variables used to train these models are those recorded solely by the GPS device: variation in longitude and latitude, altitude and coverage ratio (proportion of possible fixes acquired within a set window of time). Different combinations of these variables were used to explore the qualities of different models, with the optimum models for all species predicting non-diving and diving behaviour correctly over 94% and 80% of the time, respectively. We also demonstrate the superior predictive ability of these supervised deep learning models over other commonly used behavioural prediction methods such as hidden Markov models. Mapping these predictions provides useful insights into the foraging activity of a range of seabird species, highlighting important at sea locations. These models have the potential to be used to analyse historic GPS datasets and further our understanding of how environmental changes have affected these seabirds over time.
Ecology and Evolution | 2017
Marianna Chimienti; Thomas Cornulier; Ellie Owen; Mark Bolton; Ian M. Davies; Justin M. J. Travis; Beth E. Scott
Abstract Detailed information acquired using tracking technology has the potential to provide accurate pictures of the types of movements and behaviors performed by animals. To date, such data have not been widely exploited to provide inferred information about the foraging habitat. We collected data using multiple sensors (GPS, time depth recorders, and accelerometers) from two species of diving seabirds, razorbills (Alca torda, N = 5, from Fair Isle, UK) and common guillemots (Uria aalge, N = 2 from Fair Isle and N = 2 from Colonsay, UK). We used a clustering algorithm to identify pursuit and catching events and the time spent pursuing and catching underwater, which we then used as indicators for inferring prey encounters throughout the water column and responses to changes in prey availability of the areas visited at two levels: individual dives and groups of dives. For each individual dive (N = 661 for guillemots, 6214 for razorbills), we modeled the number of pursuit and catching events, in relation to dive depth, duration, and type of dive performed (benthic vs. pelagic). For groups of dives (N = 58 for guillemots, 156 for razorbills), we modeled the total time spent pursuing and catching in relation to time spent underwater. Razorbills performed only pelagic dives, most likely exploiting prey available at shallow depths as indicated by the vertical distribution of pursuit and catching events. In contrast, guillemots were more flexible in their behavior, switching between benthic and pelagic dives. Capture attempt rates indicated that they were exploiting deep prey aggregations. The study highlights how novel analysis of movement data can give new insights into how animals exploit food patches, offering a unique opportunity to comprehend the behavioral ecology behind different movement patterns and understand how animals might respond to changes in prey distributions.
Marine Policy | 2015
Elizabeth A. Masden; Aly McCluskie; Ellie Owen; Rowena H. W. Langston
Marine Biology | 2013
Ellie Owen; Francis Daunt; Colin F. Moffat; David A. Elston; Sarah Wanless; Paul M. Thompson
Climate Research | 2015
M. J. Carroll; Adam Butler; Ellie Owen; S. R. Ewing; T. Cole; Jonathan A. Green; Louise M. Soanes; John P. Y. Arnould; Stephen Newton; J. Baer; Francis Daunt; Sarah Wanless; Mark Newell; Gail S. Robertson; Roderick A. Mavor; Mark Bolton
Ecological Applications | 2017
Ewan D. Wakefield; Ellie Owen; Julia Baer; Matthew J. Carroll; Francis Daunt; Stephen Dodd; Jonathan A. Green; Tim Guilford; Roddy Mavor; Peter I. Miller; Mark Newell; Stephen Newton; Gail S. Robertson; Akiko Shoji; Louise M. Soanes; Stephen C. Votier; Sarah Wanless; Mark Bolton
Journal of Ornithology | 2016
Julian C. Evans; Sasha R. X. Dall; Mark Bolton; Ellie Owen; Stephen C. Votier
Biological Conservation | 2016
Louise M. Soanes; Jennifer A. Bright; Lauren P. Angel; John P. Y. Arnould; Mark Bolton; Maud Berlincourt; Ben Lascelles; Ellie Owen; B. Simon-Bouhet; Jonathan A. Green
Marine Biology | 2014
Akiko Shoji; Ellie Owen; Mark Bolton; Ben Dean; Holly Kirk; Annette L. Fayet; Dave Boyle; Robin Freeman; Christopher M. Perrins; Stéphane Aris-Brosou; Tim Guilford