Literature DB >> 28766908

Building essential biodiversity variables (EBVs) of species distribution and abundance at a global scale.

W Daniel Kissling1, Jorge A Ahumada2, Anne Bowser3, Miguel Fernandez4,5,6, Néstor Fernández4,7, Enrique Alonso García8, Robert P Guralnick9, Nick J B Isaac10, Steve Kelling11, Wouter Los1, Louise McRae12, Jean-Baptiste Mihoub13,14, Matthias Obst15,16, Monica Santamaria17, Andrew K Skidmore18, Kristen J Williams19, Donat Agosti20, Daniel Amariles21,22, Christos Arvanitidis23, Lucy Bastin24,25, Francesca De Leo17, Willi Egloff20, Jane Elith26, Donald Hobern27, David Martin19, Henrique M Pereira4,5, Graziano Pesole17,28, Johannes Peterseil29, Hannu Saarenmaa30, Dmitry Schigel27, Dirk S Schmeller13,31, Nicola Segata32, Eren Turak33,34, Paul F Uhlir35, Brian Wee36, Alex R Hardisty37.   

Abstract

Much biodiversity data is collected worldwide, but it remains challenging to assemble the scattered knowledge for assessing biodiversity status and trends. The concept of Essential Biodiversity Variables (EBVs) was introduced to structure biodiversity monitoring globally, and to harmonize and standardize biodiversity data from disparate sources to capture a minimum set of critical variables required to study, report and manage biodiversity change. Here, we assess the challenges of a 'Big Data' approach to building global EBV data products across taxa and spatiotemporal scales, focusing on species distribution and abundance. The majority of currently available data on species distributions derives from incidentally reported observations or from surveys where presence-only or presence-absence data are sampled repeatedly with standardized protocols. Most abundance data come from opportunistic population counts or from population time series using standardized protocols (e.g. repeated surveys of the same population from single or multiple sites). Enormous complexity exists in integrating these heterogeneous, multi-source data sets across space, time, taxa and different sampling methods. Integration of such data into global EBV data products requires correcting biases introduced by imperfect detection and varying sampling effort, dealing with different spatial resolution and extents, harmonizing measurement units from different data sources or sampling methods, applying statistical tools and models for spatial inter- or extrapolation, and quantifying sources of uncertainty and errors in data and models. To support the development of EBVs by the Group on Earth Observations Biodiversity Observation Network (GEO BON), we identify 11 key workflow steps that will operationalize the process of building EBV data products within and across research infrastructures worldwide. These workflow steps take multiple sequential activities into account, including identification and aggregation of various raw data sources, data quality control, taxonomic name matching and statistical modelling of integrated data. We illustrate these steps with concrete examples from existing citizen science and professional monitoring projects, including eBird, the Tropical Ecology Assessment and Monitoring network, the Living Planet Index and the Baltic Sea zooplankton monitoring. The identified workflow steps are applicable to both terrestrial and aquatic systems and a broad range of spatial, temporal and taxonomic scales. They depend on clear, findable and accessible metadata, and we provide an overview of current data and metadata standards. Several challenges remain to be solved for building global EBV data products: (i) developing tools and models for combining heterogeneous, multi-source data sets and filling data gaps in geographic, temporal and taxonomic coverage, (ii) integrating emerging methods and technologies for data collection such as citizen science, sensor networks, DNA-based techniques and satellite remote sensing, (iii) solving major technical issues related to data product structure, data storage, execution of workflows and the production process/cycle as well as approaching technical interoperability among research infrastructures, (iv) allowing semantic interoperability by developing and adopting standards and tools for capturing consistent data and metadata, and (v) ensuring legal interoperability by endorsing open data or data that are free from restrictions on use, modification and sharing. Addressing these challenges is critical for biodiversity research and for assessing progress towards conservation policy targets and sustainable development goals.
© 2017 The Authors. Biological Reviews published by John Wiley & Sons Ltd on behalf of Cambridge Philosophical Society.

Entities:  

Keywords:  big data; biodiversity monitoring; data interoperability; ecological sustainability; environmental policy; global change research; indicators; informatics; metadata; research infrastructures

Mesh:

Year:  2017        PMID: 28766908     DOI: 10.1111/brv.12359

Source DB:  PubMed          Journal:  Biol Rev Camb Philos Soc        ISSN: 0006-3231


  24 in total

Review 1.  NCBI Taxonomy: a comprehensive update on curation, resources and tools.

Authors:  Conrad L Schoch; Stacy Ciufo; Mikhail Domrachev; Carol L Hotton; Sivakumar Kannan; Rogneda Khovanskaya; Detlef Leipe; Richard Mcveigh; Kathleen O'Neill; Barbara Robbertse; Shobha Sharma; Vladimir Soussov; John P Sullivan; Lu Sun; Seán Turner; Ilene Karsch-Mizrachi
Journal:  Database (Oxford)       Date:  2020-01-01       Impact factor: 3.451

Review 2.  Integrating remote sensing with ecology and evolution to advance biodiversity conservation.

Authors:  Jeannine Cavender-Bares; Fabian D Schneider; Maria João Santos; Amanda Armstrong; Ana Carnaval; Kyla M Dahlin; Lola Fatoyinbo; George C Hurtt; David Schimel; Philip A Townsend; Susan L Ustin; Zhihui Wang; Adam M Wilson
Journal:  Nat Ecol Evol       Date:  2022-03-24       Impact factor: 15.460

3.  An open-source, citizen science and machine learning approach to analyse subsea movies.

Authors:  Victor Anton; Jannes Germishuys; Per Bergström; Mats Lindegarth; Matthias Obst
Journal:  Biodivers Data J       Date:  2021-02-24

Review 4.  Priority list of biodiversity metrics to observe from space.

Authors:  Andrew K Skidmore; Nicholas C Coops; Elnaz Neinavaz; Abebe Ali; Michael E Schaepman; Marc Paganini; W Daniel Kissling; Petteri Vihervaara; Roshanak Darvishzadeh; Hannes Feilhauer; Miguel Fernandez; Néstor Fernández; Noel Gorelick; Ilse Geijzendorffer; Uta Heiden; Marco Heurich; Donald Hobern; Stefanie Holzwarth; Frank E Muller-Karger; Ruben Van De Kerchove; Angela Lausch; Pedro J Leitão; Marcelle C Lock; Caspar A Mücher; Brian O'Connor; Duccio Rocchini; Claudia Roeoesli; Woody Turner; Jan Kees Vis; Tiejun Wang; Martin Wegmann; Vladimir Wingate
Journal:  Nat Ecol Evol       Date:  2021-05-13       Impact factor: 19.100

5.  Satellite sensor requirements for monitoring essential biodiversity variables of coastal ecosystems.

Authors:  Frank E Muller-Karger; Erin Hestir; Christiana Ade; Kevin Turpie; Dar A Roberts; David Siegel; Robert J Miller; David Humm; Noam Izenberg; Mary Keller; Frank Morgan; Robert Frouin; Arnold G Dekker; Royal Gardner; James Goodman; Blake Schaeffer; Bryan A Franz; Nima Pahlevan; Antonio G Mannino; Javier A Concha; Steven G Ackleson; Kyle C Cavanaugh; Anastasia Romanou; Maria Tzortziou; Emmanuel S Boss; Ryan Pavlick; Anthony Freeman; Cecile S Rousseaux; John Dunne; Matthew C Long; Eduardo Klein; Galen A McKinley; Joachim Goes; Ricardo Letelier; Maria Kavanaugh; Mitchell Roffer; Astrid Bracher; Kevin R Arrigo; Heidi Dierssen; Xiaodong Zhang; Frank W Davis; Ben Best; Robert Guralnick; John Moisan; Heidi M Sosik; Raphael Kudela; Colleen B Mouw; Andrew H Barnard; Sherry Palacios; Collin Roesler; Evangelia G Drakou; Ward Appeltans; Walter Jetz
Journal:  Ecol Appl       Date:  2018-03-06       Impact factor: 4.657

6.  A new method to control error rates in automated species identification with deep learning algorithms.

Authors:  Sébastien Villon; David Mouillot; Marc Chaumont; Gérard Subsol; Thomas Claverie; Sébastien Villéger
Journal:  Sci Rep       Date:  2020-07-03       Impact factor: 4.379

7.  A story of data won, data lost and data re-found: the realities of ecological data preservation.

Authors:  Alison Specht; Matthew P Bolton; Bryn Kingsford; Raymond L Specht; Lee Belbin
Journal:  Biodivers Data J       Date:  2018-11-07

8.  Assessing the multi-scale predictive ability of ecosystem functional attributes for species distribution modelling.

Authors:  Salvador Arenas-Castro; João Gonçalves; Paulo Alves; Domingo Alcaraz-Segura; João P Honrado
Journal:  PLoS One       Date:  2018-06-18       Impact factor: 3.240

9.  eDNA sampled from stream networks correlates with camera trap detection rates of terrestrial mammals.

Authors:  Arnaud Lyet; Loïc Pellissier; Alice Valentini; Tony Dejean; Abigail Hehmeyer; Robin Naidoo
Journal:  Sci Rep       Date:  2021-06-15       Impact factor: 4.379

10.  Climatic niche and potential distribution of Tithonia diversifolia (Hemsl.) A. Gray in Africa.

Authors:  Maxwell C Obiakara; Yoan Fourcade
Journal:  PLoS One       Date:  2018-09-05       Impact factor: 3.240

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.