| Literature DB >> 34347854 |
Auriane Virgili1, Laura Hedon1, Matthieu Authier1,2, Beatriz Calmettes3, Diane Claridge4, Tim Cole5, Peter Corkeron5, Ghislain Dorémus1, Charlotte Dunn4, Tim E Dunn6, Sophie Laran1, Patrick Lehodey3, Mark Lewis5, Maite Louzao7, Laura Mannocci8, José Martínez-Cedeira9, Pascal Monestiez10,11, Debra Palka5, Emeline Pettex2,12, Jason J Roberts13, Leire Ruiz14, Camilo Saavedra15, M Begoña Santos15, Olivier Van Canneyt1, José Antonio Vázquez Bonales16, Vincent Ridoux1,11.
Abstract
In habitat modelling, environmental variables are assumed to be proxies of lower trophic levels distribution and by extension, of marine top predator distributions. More proximal variables, such as potential prey fields, could refine relationships between top predator distributions and their environment. In situ data on prey distributions are not available over large spatial scales but, a numerical model, the Spatial Ecosystem And POpulation DYnamics Model (SEAPODYM), provides simulations of the biomass and production of zooplankton and six functional groups of micronekton at the global scale. Here, we explored whether generalised additive models fitted to simulated prey distribution data better predicted deep-diver densities (here beaked whales Ziphiidae and sperm whales Physeter macrocephalus) than models fitted to environmental variables. We assessed whether the combination of environmental and prey distribution data would further improve model fit by comparing their explanatory power. For both taxa, results were suggestive of a preference for habitats associated with topographic features and thermal fronts but also for habitats with an extended euphotic zone and with large prey of the lower mesopelagic layer. For beaked whales, no SEAPODYM variable was selected in the best model that combined the two types of variables, possibly because SEAPODYM does not accurately simulate the organisms on which beaked whales feed on. For sperm whales, the increase model performance was only marginal. SEAPODYM outputs were at best weakly correlated with sightings of deep-diving cetaceans, suggesting SEAPODYM may not accurately predict the prey fields of these taxa. This study was a first investigation and mostly highlighted the importance of the physiographic variables to understand mechanisms that influence the distribution of deep-diving cetaceans. A more systematic use of SEAPODYM could allow to better define the limits of its use and a development of the model that would simulate larger prey beyond 1,000 m would probably better characterise the prey of deep-diving cetaceans.Entities:
Mesh:
Year: 2021 PMID: 34347854 PMCID: PMC8336804 DOI: 10.1371/journal.pone.0255667
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240