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Time varying M with starvation mortality in a state-space stock assessment model: Part 2: Atlantic cod (Gadus morhua) on the southern Grand Bank of Newfoundland
State-space models are now a common tool for modeling time-varying ecological phenomena. This extends to state-space stock assessment models (SSAMs), recognized as pivotal components within the evolving landscape of next-generation stock assessment methodologies. Though methods are rapidly evolving,...
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Published in: | Fisheries research 2024-12, Vol.280, p.107174, Article 107174 |
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creator | Cadigan, Noel G. Weerasekera, S.J.W.W.M.M.P. Regular, Paul M. Rideout, Rick M. |
description | State-space models are now a common tool for modeling time-varying ecological phenomena. This extends to state-space stock assessment models (SSAMs), recognized as pivotal components within the evolving landscape of next-generation stock assessment methodologies. Though methods are rapidly evolving, the estimation of time-varying rates of natural mortality (M) remains a challenge, and the sensitivity of stock assessments and management advice to assumed M values underscores the pressing need for improved estimation methods. Using southern Grand Bank (SGB) Atlantic cod as a case study, we introduce a novel approach to estimate time-varying M. We first convert a length-based starvation M index into an age-based index, which we then include in an age-based SSAM to estimate two components of M: starvation M and a remainder component. This produces a new SGB cod SSAM with time-varying total stock M. This model produces a large decrease (68 %) in the size of the model process errors (i.e., their standard deviation) and better fit compared to a model that did not account for time-varying M, indicating that the starvation M index improves our model of stock productivity. By leveraging readily available information on fish body condition and the proportion of fish in really poor condition, the proposed methods offer a valuable solution to the challenges associated with estimating time-varying M. The proposed methods offer a tractable solution to the common struggles associated with quantifying changes in fish productivity, which is crucial for the management of dynamic systems. |
doi_str_mv | 10.1016/j.fishres.2024.107174 |
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This extends to state-space stock assessment models (SSAMs), recognized as pivotal components within the evolving landscape of next-generation stock assessment methodologies. Though methods are rapidly evolving, the estimation of time-varying rates of natural mortality (M) remains a challenge, and the sensitivity of stock assessments and management advice to assumed M values underscores the pressing need for improved estimation methods. Using southern Grand Bank (SGB) Atlantic cod as a case study, we introduce a novel approach to estimate time-varying M. We first convert a length-based starvation M index into an age-based index, which we then include in an age-based SSAM to estimate two components of M: starvation M and a remainder component. This produces a new SGB cod SSAM with time-varying total stock M. This model produces a large decrease (68 %) in the size of the model process errors (i.e., their standard deviation) and better fit compared to a model that did not account for time-varying M, indicating that the starvation M index improves our model of stock productivity. By leveraging readily available information on fish body condition and the proportion of fish in really poor condition, the proposed methods offer a valuable solution to the challenges associated with estimating time-varying M. 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This model produces a large decrease (68 %) in the size of the model process errors (i.e., their standard deviation) and better fit compared to a model that did not account for time-varying M, indicating that the starvation M index improves our model of stock productivity. By leveraging readily available information on fish body condition and the proportion of fish in really poor condition, the proposed methods offer a valuable solution to the challenges associated with estimating time-varying M. The proposed methods offer a tractable solution to the common struggles associated with quantifying changes in fish productivity, which is crucial for the management of dynamic systems.</description><subject>Atlantic cod</subject><subject>Southern Grand Bank</subject><subject>Starvation mortality</subject><subject>State-space stock assessment model</subject><subject>Time-varying natural mortality</subject><issn>0165-7836</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2024</creationdate><recordtype>article</recordtype><recordid>eNqFkE1PAyEQhvegifXjJ5jMUQ9bgbLL1otRo9XEr0M9ExYGS23BAG3jv_GnSlPvnmYyM--TyVNVp5QMKaHtxXxoXZpFTENGGC8zQQXfqwZl19SiG7UH1WFKc0KIEC0dVD9Tt0RYq_jt_Ac8w8blGaSs4lplFzwsQ8xq4fI3OA9qu8lYpy-lsfRBf4JKCVNaos_l1uDiEt5UzMAu4TovlM9Ogw4GzibKrNIWN1upcyjkPCuIsColephE5Q3cKP8JwcILbmxYeVPy5rjat2qR8OSvHlXv93fT24f66XXyeHv9VGvaiVxronVjhW3GY973I42MCdqKrm96xnpFGelGWoy7llFuTdsgas55YzgzTW81Hx1VzY6rY0gpopVf0S2LF0mJ3KqVc_mnVm7Vyp3akrva5bA8t3YYZdIOvUbjIuosTXD_EH4BvSaJnQ</recordid><startdate>202412</startdate><enddate>202412</enddate><creator>Cadigan, Noel G.</creator><creator>Weerasekera, S.J.W.W.M.M.P.</creator><creator>Regular, Paul M.</creator><creator>Rideout, Rick M.</creator><general>Elsevier B.V</general><scope>6I.</scope><scope>AAFTH</scope><scope>AAYXX</scope><scope>CITATION</scope></search><sort><creationdate>202412</creationdate><title>Time varying M with starvation mortality in a state-space stock assessment model: Part 2: Atlantic cod (Gadus morhua) on the southern Grand Bank of Newfoundland</title><author>Cadigan, Noel G. ; Weerasekera, S.J.W.W.M.M.P. ; Regular, Paul M. ; Rideout, Rick M.</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c187t-c0cc5f7f5994bb3ce2271678b5b22ba12083c7986214fd65eec4445d42d5bfc43</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2024</creationdate><topic>Atlantic cod</topic><topic>Southern Grand Bank</topic><topic>Starvation mortality</topic><topic>State-space stock assessment model</topic><topic>Time-varying natural mortality</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Cadigan, Noel G.</creatorcontrib><creatorcontrib>Weerasekera, S.J.W.W.M.M.P.</creatorcontrib><creatorcontrib>Regular, Paul M.</creatorcontrib><creatorcontrib>Rideout, Rick M.</creatorcontrib><collection>ScienceDirect Open Access Titles</collection><collection>Elsevier:ScienceDirect:Open Access</collection><collection>CrossRef</collection><jtitle>Fisheries research</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Cadigan, Noel G.</au><au>Weerasekera, S.J.W.W.M.M.P.</au><au>Regular, Paul M.</au><au>Rideout, Rick M.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Time varying M with starvation mortality in a state-space stock assessment model: Part 2: Atlantic cod (Gadus morhua) on the southern Grand Bank of Newfoundland</atitle><jtitle>Fisheries research</jtitle><date>2024-12</date><risdate>2024</risdate><volume>280</volume><spage>107174</spage><pages>107174-</pages><artnum>107174</artnum><issn>0165-7836</issn><abstract>State-space models are now a common tool for modeling time-varying ecological phenomena. This extends to state-space stock assessment models (SSAMs), recognized as pivotal components within the evolving landscape of next-generation stock assessment methodologies. Though methods are rapidly evolving, the estimation of time-varying rates of natural mortality (M) remains a challenge, and the sensitivity of stock assessments and management advice to assumed M values underscores the pressing need for improved estimation methods. Using southern Grand Bank (SGB) Atlantic cod as a case study, we introduce a novel approach to estimate time-varying M. We first convert a length-based starvation M index into an age-based index, which we then include in an age-based SSAM to estimate two components of M: starvation M and a remainder component. This produces a new SGB cod SSAM with time-varying total stock M. This model produces a large decrease (68 %) in the size of the model process errors (i.e., their standard deviation) and better fit compared to a model that did not account for time-varying M, indicating that the starvation M index improves our model of stock productivity. By leveraging readily available information on fish body condition and the proportion of fish in really poor condition, the proposed methods offer a valuable solution to the challenges associated with estimating time-varying M. The proposed methods offer a tractable solution to the common struggles associated with quantifying changes in fish productivity, which is crucial for the management of dynamic systems.</abstract><pub>Elsevier B.V</pub><doi>10.1016/j.fishres.2024.107174</doi><oa>free_for_read</oa></addata></record> |
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subjects | Atlantic cod Southern Grand Bank Starvation mortality State-space stock assessment model Time-varying natural mortality |
title | Time varying M with starvation mortality in a state-space stock assessment model: Part 2: Atlantic cod (Gadus morhua) on the southern Grand Bank of Newfoundland |
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