Combining fishery data through integrated species distribution models

Author:

Paradinas Iosu12ORCID,Illian Janine B3,Alonso-Fernändez Alexandre4ORCID,Pennino Maria Grazia5ORCID,Smout Sophie1

Affiliation:

1. Scottish Oceans Institute. University of St Andrews , East Sands, St Andrews, KY16 8LB , UK

2. AZTI, Txatxarramendi Ugartea z/g , 48395 Sukarrieta, Bizkaia , Spain

3. School of Mathematics and Statistics, University of Glasgow , Glasgow G12 8QQ , UK

4. Instituto de Investigaciones Marinas (IIM-CSIC), Eduardo Cabello 6 , 36208 Vigo, Pontevedra , Spain

5. Instituto Español de Oceanografía (IEO-CSIC), Centro Oceanográfico de Vigo , Subida a Radio Faro 50-52, 36390 Vigo, Pontevedra , Spain

Abstract

Abstract Species Distribution Models are pivotal for fisheries management. There has been an increasing number of fishery data sources available, making data integration an attractive way to improve model predictions. A wide range of methods have been applied to integrate different datasets in different disciplines. We focus on the use of Integrated Species Distribution Models (ISDMs) due to their capacity to formally accommodate different types of data and scale proportional gear efficiencies. ISDMs use joint modelling to integrate information from different data sources to improve parameter estimation by fitting shared environmental, temporal and spatial effects. We illustrate this method first using a simulated example, and then apply it to a case study that combines data coming from a fishery-independent trawl survey and a fishery-dependent trammel net observations on Solea solea. We explore the sensitivity of model outputs to several weightings for the commercial data and also compare integrated model results with ensemble modelling to combine population trends in the case study. We obtain similar results but discuss that ensemble modelling requires both response variables and link functions to be the same across models. We conclude by discussing the flexibility and requirements of ISDMs to formally combine different fishery datasets.

Funder

European Commission

IMPRESS

ERDF

Ministry of Science, Innovation and Universities

Publisher

Oxford University Press (OUP)

Subject

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

Reference43 articles.

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