Please use this identifier to cite or link to this item: https://accedacris.ulpgc.es/jspui/handle/10553/156564
Title: A Bayesian spatial approach for predicting seagrass occurrence
Authors: March, D.
Alós, J.
Cabanellas-Reboredo, M.
Infantes Oanes, Eduardo 
Jordi, A.
Palmer, M.
UNESCO Clasification: 251004 Botánica marina
120803 Aplicación de la probabilidad
Keywords: Seagrass
Geographical
Distribution modeling
Bayesian hierarchical model
Spatial autocorrelation
Issue Date: 2013
Journal: Estuarine, Coastal and Shelf Science 
Abstract: We implement a Bayesian spatial approach to predict and map the probability of occurrence of seagrass Posidonia oceanica at high spatial resolution based environmental variables. We found that depth, near-bottom orbital velocities and a spectral pattern of Landsat imagery were relevant environmental variables, although there was no effect of slope or water residence time. We generated a data inventory of P. oceanica samples at Palma Bay, NW Mediterranean, from three main sources: side scan sonar, aerial imagery and a customized drop-camera system. A hierarchical Bayesian spatial model for non-Gaussian data was used to relate presence-absence data of P. oceanica with environmental variables in the presence of spatial autocorrelation (SA). A spatial dimension reduction method, the predictive process approach, was implemented to overcome computational constraints for moderately large datasets. Our results suggest that incorporating spatial random effects removes SA from the residuals and improves model fit compared to non-spatial regression models. The main products of this work were probability and uncertainty model maps, which could benefit seagrass management and the assessment of the ecological status of seagrass meadows.
URI: https://accedacris.ulpgc.es/jspui/handle/10553/156564
ISSN: 0272-7714
DOI: 10.1016/j.ecss.2013.08.009
Source: Estuarine, Coastal and Shelf Science [ISSN 0272-7714], v. 131, p. 206-212 (Octubre 2013)
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