Benthos distribution modelling and its relevance for marine ecosystem management

Author:

Reiss Henning1,Birchenough Silvana2,Borja Angel3,Buhl-Mortensen Lene4,Craeymeersch Johan5,Dannheim Jennifer6,Darr Alexander7,Galparsoro Ibon3,Gogina Mayya7,Neumann Hermann8,Populus Jacques9,Rengstorf Anna M.10,Valle Mireia3,van Hoey Gert11,Zettler Michael L.7,Degraer Steven12

Affiliation:

1. Faculty of Biosciences and Aquaculture, University of Nordland, PO Box 1490, 8049 Bodø, Norway

2. Cefas, The Centre for Environment, Fisheries and Aquaculture Science, Lowestoft Laboratory, Pakefield Road, Lowestoft, Suffolk NR 33 0HT, UK

3. AZTI-Tecnalia, Marine Research Division, Herrera Kaia, Portualdea s/n, 20110 Pasaia, Spain

4. Institute of Marine Research, PB 1870 Nordnes, N-5817 Bergen, Norway

5. IMARES Wageningen UR - Institute for Marine Resources and Ecosystem Studies, PO Box 77, 4400 AB Yerseke, The Netherlands

6. Alfred Wegener Institute, Helmholtz Centre for Polar and Marine Research, PO Box 120161, 27570 Bremerhaven, Germany

7. Leibniz Institute for Baltic Sea Research Warnemünde, Seestr. 15, 18119 Rostock, Germany

8. Senckenberg am Meer, Marine Research Department, Südstrand 40, 26382 Wilhelmshaven, Germany

9. Ifremer Centre de Brest Technopole de Brest-Iroise, PO Box 70, 29280 Plouzané, France

10. Earth and Ocean Sciences, School of Natural Sciences, National University of Ireland, Galway, Ireland

11. Institute for Agriculture and Fisheries Research, Department of Aquatic Environment and Quality, Bio-Environmental Research Group, Ankerstraat 1, 8400 Oostende, Belgium

12. Royal Belgian Institute of Natural Sciences, Operational Directorate Natural Environment, Marine Ecology and Management, Gulledelle 100, 1200 Brussels, Belgium

Abstract

Abstract Marine benthic ecosystems are difficult to monitor and assess, which is in contrast to modern ecosystem-based management requiring detailed information at all important ecological and anthropogenic impact levels. Ecosystem management needs to ensure a sustainable exploitation of marine resources as well as the protection of sensitive habitats, taking account of potential multiple-use conflicts and impacts over large spatial scales. The urgent need for large-scale spatial data on benthic species and communities resulted in an increasing application of distribution modelling (DM). The use of DM techniques enables to employ full spatial coverage data of environmental variables to predict benthic spatial distribution patterns. Especially, statistical DMs have opened new possibilities for ecosystem management applications, since they are straightforward and the outputs are easy to interpret and communicate. Mechanistic modelling techniques, targeting the fundamental niche of species, and Bayesian belief networks are the most promising to further improve DM performance in the marine realm. There are many actual and potential management applications of DMs in the marine benthic environment, these are (i) early warning systems for species invasion and pest control, (ii) to assess distribution probabilities of species to be protected, (iii) uses in monitoring design and spatial management frameworks (e.g. MPA designations), and (iv) establishing long-term ecosystem management measures (accounting for future climate-driven changes in the ecosystem). It is important to acknowledge also the limitations associated with DM applications in a marine management context as well as considering new areas for future DM developments. The knowledge of explanatory variables, for example, setting the basis for DM, will continue to be further developed: this includes both the abiotic (natural and anthropogenic) and the more pressing biotic (e.g. species interactions) aspects of the ecosystem. While the response variables on the other hand are often focused on species presence and some work undertaken on species abundances, it is equally important to consider, e.g. biological traits or benthic ecosystem functions in DM applications. Tools such as DMs are suitable to forecast the possible effects of climate change on benthic species distribution patterns and hence could help to steer present-day ecosystem management.

Publisher

Oxford University Press (OUP)

Subject

Ecology,Aquatic Science,Ecology, Evolution, Behavior and Systematics,Oceanography

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