Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ...
No abstracts are to be cited without prior reference to the author. Hierarchical Bayesian methods are suitable for estimating reference points for data-poor stocks, as they can borrow strength from fisheries with more information. That is the case in the restricted whelk (Buccinum undatum) fishery i...
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ftdatacite:10.17895/ices.pub.24753990.v1 2024-02-27T08:41:59+00:00 Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... Jónasson, Jónas P. Woods, Pamela 2024 https://dx.doi.org/10.17895/ices.pub.24753990.v1 https://ices-library.figshare.com/articles/conference_contribution/Bayesian_hierarchical_surplus_production_model_of_whelk_Buccinum_undatum_in_Icelandic_waters_/24753990/1 unknown ASC 2013 - Theme session Q https://ices-library.figshare.com/ICES-ASC-2013/groups https://dx.doi.org/10.17895/ices.pub.24753990 https://ices-library.figshare.com/ICES-ASC-2013/groups ICES Custom Licence https://www.ices.dk/Pages/library_policies.aspx Fisheries and aquaculture Technologies and data CreativeWork Conference contribution Other article 2024 ftdatacite https://doi.org/10.17895/ices.pub.24753990.v110.17895/ices.pub.24753990 2024-02-01T14:39:17Z No abstracts are to be cited without prior reference to the author. Hierarchical Bayesian methods are suitable for estimating reference points for data-poor stocks, as they can borrow strength from fisheries with more information. That is the case in the restricted whelk (Buccinum undatum) fishery in Iceland, which initiated in late 1990 with annual catches from almost zero to 1300 t. Recent recommendations have been based on average historical catch and logbook statistics. To get better estimate of whelk population dynamics, we used monthly-scaled CPUE data as an index of biomass in a Bayesian Schaefer surplus production model. Two models were compared: the first treated the fishery as one unit (“Simple” model), whereas the second analysed the fishery as being composed of 6 spatial sub-units (Hierarchical model). We imposed 3 different levels of fishing mortality to analyse the risk of high population depletion and also compared results when catches were evenly distributed over sub-units compared to status ... Conference Object Iceland DataCite Metadata Store (German National Library of Science and Technology) Schaefer ENVELOPE(166.383,166.383,-71.367,-71.367) |
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DataCite Metadata Store (German National Library of Science and Technology) |
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topic |
Fisheries and aquaculture Technologies and data |
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Fisheries and aquaculture Technologies and data Jónasson, Jónas P. Woods, Pamela Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... |
topic_facet |
Fisheries and aquaculture Technologies and data |
description |
No abstracts are to be cited without prior reference to the author. Hierarchical Bayesian methods are suitable for estimating reference points for data-poor stocks, as they can borrow strength from fisheries with more information. That is the case in the restricted whelk (Buccinum undatum) fishery in Iceland, which initiated in late 1990 with annual catches from almost zero to 1300 t. Recent recommendations have been based on average historical catch and logbook statistics. To get better estimate of whelk population dynamics, we used monthly-scaled CPUE data as an index of biomass in a Bayesian Schaefer surplus production model. Two models were compared: the first treated the fishery as one unit (“Simple” model), whereas the second analysed the fishery as being composed of 6 spatial sub-units (Hierarchical model). We imposed 3 different levels of fishing mortality to analyse the risk of high population depletion and also compared results when catches were evenly distributed over sub-units compared to status ... |
format |
Conference Object |
author |
Jónasson, Jónas P. Woods, Pamela |
author_facet |
Jónasson, Jónas P. Woods, Pamela |
author_sort |
Jónasson, Jónas P. |
title |
Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... |
title_short |
Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... |
title_full |
Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... |
title_fullStr |
Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... |
title_full_unstemmed |
Bayesian hierarchical surplus production model of whelk (Buccinum undatum) in Icelandic waters. ... |
title_sort |
bayesian hierarchical surplus production model of whelk (buccinum undatum) in icelandic waters. ... |
publisher |
ASC 2013 - Theme session Q |
publishDate |
2024 |
url |
https://dx.doi.org/10.17895/ices.pub.24753990.v1 https://ices-library.figshare.com/articles/conference_contribution/Bayesian_hierarchical_surplus_production_model_of_whelk_Buccinum_undatum_in_Icelandic_waters_/24753990/1 |
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ENVELOPE(166.383,166.383,-71.367,-71.367) |
geographic |
Schaefer |
geographic_facet |
Schaefer |
genre |
Iceland |
genre_facet |
Iceland |
op_relation |
https://ices-library.figshare.com/ICES-ASC-2013/groups https://dx.doi.org/10.17895/ices.pub.24753990 https://ices-library.figshare.com/ICES-ASC-2013/groups |
op_rights |
ICES Custom Licence https://www.ices.dk/Pages/library_policies.aspx |
op_doi |
https://doi.org/10.17895/ices.pub.24753990.v110.17895/ices.pub.24753990 |
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1792049364809547776 |