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A standardisation framework for bio-logging data to advance ecological research and conservation

Authors :
Michael J. Weise
Melinda Holland
Vardis Tsontos
Francesca Cagnacci
Megan K. McKinzie
Elliott L. Hazen
Adrian C. Gleiss
Robert Harcourt
Samantha E. Simmons
Mônica M. C. Muelbert
Malcolm O'Toole
Peggy Newman
Clint Blight
Brendal Townsend
Jonathan Pye
Frederick G. Whoriskey
Mark A. Hindell
Daniel P. Costa
Ian D. Jonsen
Christian Rutz
Daniel C. Dunn
Chari Pattiaratchi
Theresa R. Keates
Graeme C. Hays
Carlos M. Duarte
Kim N. Holland
David W. Sims
Camrin D. Braun
Fabrice R. A. Jaine
Bill Woodward
Holger Dettki
Ana M. M. Sequeira
Neil Hammerschlag
Ivica Janeković
Víctor M. Eguíluz
Xavier Hoenner
Laura H. McDonnell
Clive R. McMahon
Michelle R. Heupel
Michael A. Fedak
Steven J. Bograd
Sarah C. Davidson
University of St Andrews. Scottish Oceans Institute
University of St Andrews. Sea Mammal Research Unit
University of St Andrews. School of Biology
University of St Andrews. Centre for Biological Diversity
University of St Andrews. Centre for Social Learning & Cognitive Evolution
The Pew Charitable Trusts
Harvard University
Source :
Digital.CSIC. Repositorio Institucional del CSIC, instname
Publication Year :
2021

Abstract

Bio-logging data obtained by tagging animals are key to addressing global conservation challenges. However, the many thousands of existing bio-logging datasets are not easily discoverable, universally comparable, nor readily accessible through existing repositories and across platforms, slowing down ecological research and effective management. A set of universal standards is needed to ensure discoverability, interoperability and effective translation of bio-logging data into research and management recommendations. We propose a standardisation framework adhering to existing data principles (FAIR: Findable, Accessible, Interoperable and Reusable; and TRUST: Transparency, Responsibility, User focus, Sustainability and Technology) and involving the use of simple templates to create a data flow from manufacturers and researchers to compliant repositories, where automated procedures should be in place to prepare data availability into four standardised levels: (a) decoded raw data, (b) curated data, (c) interpolated data and (d) gridded data. Our framework allows for integration of simple tabular arrays (e.g. csv files) and creation of sharable and interoperable network Common Data Form (netCDF) files containing all the needed information for accuracy-of-use, rightful attribution (ensuring data providers keep ownership through the entire process) and data preservation security. We show the standardisation benefits for all stakeholders involved, and illustrate the application of our framework by focusing on marine animals and by providing examples of the workflow across all data levels, including filled templates and code to process data between levels, as well as templates to prepare netCDF files ready for sharing. Adoption of our framework will facilitate collection of Essential Ocean Variables (EOVs) in support of the Global Ocean Observing System (GOOS) and inter-governmental assessments (e.g. the World Ocean Assessment), and will provide a starting point for broader efforts to establish interoperable bio-logging data formats across all fields in animal ecology.<br />A.M.M.S. was funded by a 2020 Pew Fellowship in Marine Conservation, and also supported by AIMS. C.R. was the recipient of a Radcliffe Fellowship at the Radcliffe Institute for Advanced Study, Harvard University.

Details

Language :
English
Database :
OpenAIRE
Journal :
Digital.CSIC. Repositorio Institucional del CSIC, instname
Accession number :
edsair.doi.dedup.....0bc6ecde11036ed250fb2a5e1168dfde