Estimation of returning Atlantic salmon stock from rod exploitation rate for principal salmon rivers in England & Wales

Author:

Gregory Stephen D123ORCID,Gillson Jonathan P4ORCID,Whitlock Katie5,Barry Jon4ORCID,Gough Peter6,Hillman Robert J5,Mee David6,Peirson Graeme5,Shields Brian A5,Talks Lawrence5,Toms Simon5,Walker Alan M4ORCID,Wilson Ben6,Davidson Ian C6

Affiliation:

1. Salmon & Trout Research Centre, Game and Wildlife Conservation Trust , East Stoke BH20 6BB , UK

2. Centre for Environment, Fisheries and Aquaculture Science , Barrack Road, Weymouth DT4 8UB , UK

3. Centre for Conservation Ecology and Environmental Sciences, Faculty of Science and Technology, Bournemouth University , Talbot Campus, Poole, Dorset BH12 5BB , UK

4. Centre for Environment, Fisheries and Aquaculture Science , Pakefield Road, Lowestoft NR33 0HT , UK

5. Environment Agency , Horizon House, Deanery Rd, Bristol BS1 5AH , UK

6. Natural Resources Wales , Ty Cambria, 29 Newport Rd, Cardiff CF24 0TP , UK

Abstract

Abstract For effective fishery management, estimated stock sizes, along with their uncertainties, should be accurate, precise, and unbiased. Atlantic salmon Salmo salar stock assessment in England and Wales (and elsewhere across the Atlantic) estimate returning salmon stocks by applying a measure of rod exploitation rate (RER), derived from less abundant fishery-independent stock estimates, to abundant fishery-dependent data. Currently, RER estimates are generated for individual principal salmon rivers based on available local data and assumptions. We propose a single, consistent, transparent, and statistically robust method to estimate salmon stocks that transfers strength of information from “data-rich” rivers, i.e. those with fisheries-independent data, to “data-poor” rivers without such data. We proposed, fitted, simplified, and then validated a Beta–Binomial model of RER, including covariates representing angler and fish behaviours, river flow, and random effects to control for nuisance effects. Our “best” model revealed covariate effects in line with our hypotheses and generalized to data not used to train it. We used this model to extrapolate stock estimates from 12 data-rich to 52 data-poor rivers, together with their uncertainties. The resulting river-specific salmon stock estimates were judged to be useful and can be used as key inputs to river-specific, national, and international salmon stock assessments.

Funder

Department for Environment, Food and Rural Affairs, UK Government

European Regional Development Fund

Publisher

Oxford University Press (OUP)

Subject

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

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