Migration and stopover in a small pelagic seabird, the Manx shearwaterPuffinus puffinus: insights from machine learning

Author:

Guilford T1,Meade J2,Willis J3,Phillips R.A4,Boyle D5,Roberts S3,Collett M1,Freeman R6,Perrins C.M7

Affiliation:

1. Animal Behaviour Research Group, Department of Zoology, University of OxfordSouth Parks Road, Oxford OX1 3PS, UK

2. Department of Animal and Plant Sciences, University of SheffieldWestern Bank, Sheffield S10 2TN, UK

3. Department of Engineering Science, University of OxfordParks Road, Oxford OX1 3PJ, UK

4. British Antarctic Survey, Natural Environment Research CouncilHigh Cross, Madingley Road, Cambridge CB3 0ET, UK

5. Skomer Island National Nature ReserveMarloes, Nr. Haverfordwest, Pembrokeshire SA62 3BL, UK

6. Computational Ecology and Environmental Science, Microsoft ResearchJJ Thompson Avenue, Cambridge CB3 0FB, UK

7. Edward Grey Institute of Field Ornithology, Department of Zoology, University of OxfordSouth Parks Road, Oxford OX1 3PS, UK

Abstract

The migratory movements of seabirds (especially smaller species) remain poorly understood, despite their role as harvesters of marine ecosystems on a global scale and their potential as indicators of ocean health. Here we report a successful attempt, using miniature archival light loggers (geolocators), to elucidate the migratory behaviour of the Manx shearwaterPuffinus puffinus, a small (400 g) Northern Hemisphere breeding procellariform that undertakes a trans-equatorial, trans-Atlantic migration. We provide details of over-wintering areas, of previously unobserved marine stopover behaviour, and the long-distance movements of females during their pre-laying exodus. Using salt-water immersion data from a subset of loggers, we introduce a method of behaviour classification based on Bayesian machine learning techniques. We used both supervised and unsupervised machine learning to classify each bird's daily activity based on simple properties of the immersion data. We show that robust activity states emerge, characteristic of summer feeding, winter feeding and active migration. These can be used to classify probable behaviour throughout the annual cycle, highlighting the likely functional significance of stopovers as refuelling stages.

Publisher

The Royal Society

Subject

General Agricultural and Biological Sciences,General Environmental Science,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine

Reference26 articles.

1. Bishop C. 2006 Pattern recognition and machine learning New York NY: Springer. (doi:10.1117/1.2819119).

2. Brooke M The Manx shearwater. 1990 London UK:T. & A. D. Poyser.

3. Ocean Surface Winds Drive Dynamics of Transoceanic Aerial Movements

4. THE USE OF MULTIPLE MEASUREMENTS IN TAXONOMIC PROBLEMS

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