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Habitat predictive modelling of demersal fish species in the Azores

dc.contributor.advisorGomes, Telmo Alexandre Fernandes Morato
dc.contributor.advisorMenezes, Gui Manuel Machado
dc.contributor.advisorTempera, Fernando
dc.contributor.authorParra, Hugo Alexandre Esteves
dc.date.accessioned2014-07-01T16:12:43Z
dc.date.available2014-07-01T16:12:43Z
dc.date.issued2013-03-25
dc.descriptionDissertação de Mestrado, Estudos Integrados dos Oceanos, 25 de Março de 2013, Universidade dos Açores.por
dc.description.abstractSpecies distribution modelling of the marine environment has been extensively used to assess species–environment relationships to predict fish spatial distributions accurately. In this study we explored the application of two distinct modelling techniques, maximum entropy model (MaxEnt) and generalized linear models (GLMs) for predicting the potential distribution in the Azores economic exclusive zone (EEZ) of four economically important demersal fish species: blackbelly rosefish, Helicolenus dactylopterus dactylopterus, forkbeard, Phycis phycis, wreckfish, Polyprion americanus and offshore rockfish, Pontinus kuhlii. Models were constructed based on 13 years of fish presence/absence data derived from bottom longline surveys performed in the study area combined with high resolution (300 m) topographic and biogeochemical habitat seafloor variables. The most important predictors were depth and slope followed by sediment type, oxygen saturation and salinity, with relative contributions being similar among species. GLMs provided ‘outstanding’ model predictions (AUC>0.9) for two of the four fish species while MaxEnt provided ‘excellent’ model predictions (AUC=0.8–0.9) for three of four species. The level of agreement between observed and predicted presence/absence sites for both modelling techniques was ‘moderate’ (K=0.4–0.6) for three of the four species with P. americanus models presenting the lowest level of agreement (K<0.1). For the scope of this study, both modelling approaches presented here were determined to produce viable presence/absence maps which represent a snap–shot of the potential distributions of the investigated species. This information provides a better description of demersal fish spatial ecology and can be of a great deal of interest for future fisheries management and conservation planning.en
dc.identifier.citationParra, Hugo Alexandre Esteves. "Habitat predictive modelling of demersal fish species in the Azores". 2013. 41 p.. (Dissertação de Mestrado em Estudos Integrados dos Oceanos). Horta: Universidade dos Açores, 2012.por
dc.identifier.urihttp://hdl.handle.net/10400.3/3092
dc.language.isoporpor
dc.subjectModelos de Distribuição das Espéciespor
dc.subjectModelos Lineares Generalizadospor
dc.subjectPeixes Demersaispor
dc.subjectDemersal Fishen
dc.subjectGeneralized Linear Modelsen
dc.subjectMaxenten
dc.subjectSpecies Distribution Modelsen
dc.subjectAzoresen
dc.titleHabitat predictive modelling of demersal fish species in the Azoresen
dc.typemaster thesis
dspace.entity.typePublication
oaire.citation.conferencePlaceHortapor
oaire.citation.titleHabitat predictive modelling of demersal fish species in the Azoresen
rcaap.rightsopenAccesspor
rcaap.typemasterThesispor

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