Ensemble modelling to predict the distribution of vulnerable marine ecosystems indicator taxa on data‐limited seamounts of Cabo Verde (NW Africa)

Author:

Vinha Beatriz1ORCID,Murillo Francisco Javier2,Schumacher Mia3,Hansteen Thor H.3,Schwarzkopf Franziska U.3,Biastoch Arne34,Kenchington Ellen2ORCID,Piraino Stefano156,Orejas Covadonga7,Huvenne Veerle A. I.8

Affiliation:

1. Dipartimento di Scienze e Tecnologie Biologiche e Ambientali (DiSTeBA) Università del Salento Lecce Italy

2. Ocean and Ecosystem Sciences Division, Department of Fisheries and Oceans Bedford Institute of Oceanography Halifax Canada

3. GEOMAR Helmholtz Centre for Ocean Research Kiel Kiel Germany

4. Kiel University Kiel Germany

5. Consorzio Nazionale Interuniversitario per le Scienze del Mare (CoNISMa) Rome Italy

6. National Biodiversity Future Center (NBFC) Palermo Italy

7. Instituto Español de Oceanografía, Centro Oceanográfico de Gijón (IEO‐CSIC) Gijón Spain

8. Ocean BioGeosciences National Oceanography Centre Southampton UK

Abstract

AbstractAimSeamounts are conspicuous geological features with an important ecological role and can be considered vulnerable marine ecosystems (VMEs). Since many deep‐sea regions remain largely unexplored, investigating the occurrence of VME taxa on seamounts is challenging. Our study aimed to predict the distribution of four cold‐water coral (CWC) taxa, indicators for VMEs, in a region where occurrence data are scarce.LocationSeamounts around the Cabo Verde archipelago (NW Africa).MethodsWe used species presence–absence data obtained from remotely operated vehicle (ROV) footage collected during two research expeditions. Terrain variables calculated using a multiscale approach from a 100‐m‐resolution bathymetry grid, as well as physical oceanographical data from the VIKING20X model, at a native resolution of 1/20°, were used as environmental predictors. Two modelling techniques (generalized additive model and random forest) were employed and single‐model predictions were combined into a final weighted‐average ensemble model. Model performance was validated using different metrics through cross‐validation.ResultsTerrain orientation, at broad scale, presented one of the highest relative variable contributions to the distribution models of all CWC taxa, suggesting that hydrodynamic–topographic interactions on the seamounts could benefit CWCs by maximizing food supply. However, changes at finer scales in terrain morphology and bottom salinity were important for driving differences in the distribution of specific CWCs. The ensemble model predicted the presence of VME taxa on all seamounts and consistently achieved the highest performance metrics, outperforming individual models. Nonetheless, model extrapolation and uncertainty, measured as the coefficient of variation, were high, particularly, in least surveyed areas across seamounts, highlighting the need to collect more data in future surveys.Main ConclusionsOur study shows how data‐poor areas may be assessed for the likelihood of VMEs and provides important information to guide future research in Cabo Verde, which is fundamental to advise ongoing conservation planning.

Funder

Horizon 2020 Framework Programme

Ministerio de Ciencia e Innovación

Regione Puglia

Publisher

Wiley

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