4.6 Article

A new approach for estimating stock status from length frequency data

期刊

ICES JOURNAL OF MARINE SCIENCE
卷 75, 期 6, 页码 2004-2015

出版社

OXFORD UNIV PRESS
DOI: 10.1093/icesjms/fsy078

关键词

biomass depletion; data-poor stocks; healthy size structure; length frequency analysis; M/K; MSFD; proxies for MSY

资金

  1. German Federal Ministry for the Environment, Nature Conservation, Building and Nuclear Safety [FKZ 3512-82-0300]
  2. Sobey Fund for Oceans
  3. Transatlantic Ocean System Science and Technology (TOSST) School
  4. Nova Scotia Research and Innovation Graduate Scholarship
  5. Oak
  6. Marisla

向作者/读者索取更多资源

This study presents a new method (LBB) for the analysis of length frequency data from commercial catches. LBB works for species that grow throughout their lives, such as most commercially-important fish and invertebrates, and requires no input in addition to length frequency data. It estimates asymptotic length, length at first capture, relative natural mortality, and relative fishing mortality. Standard fisheries equations can then be used to approximate current exploited biomass relative to unexploited biomass. In addition, these parameters allow the estimation of length at first capture that would maximize catch and biomass for a given fishing effort, and estimation of a proxy for the relative biomass capable of producing maximum sustainable yields. Relative biomass estimates of LBB were not significantly different from the true values in simulated data and were similar to independent estimates from full stock assessments. LBB also presents a new indicator for assessing whether an observed size structure is indicative of a healthy stock. LBB results will obviously be misleading if the length frequency data do not represent the size composition of the exploited size range of the stock or if length frequencies resulting from the interplay of growth and mortality are masked by strong recruitment pulses.

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