4.5 Article

The effect of length bin width on growth estimation in integrated age-structured stock assessments

Journal

FISHERIES RESEARCH
Volume 180, Issue -, Pages 103-112

Publisher

ELSEVIER
DOI: 10.1016/j.fishres.2015.11.002

Keywords

Fisheries stock assessment; Simulation testing; Somatic growth; Stock synthesis; ss3sim

Categories

Funding

  1. Center for the Advancement of Population Assessment Methodology (CAPAM) in La Jolla CA, USA
  2. Joint Institute for the Study of the Atmosphere and Ocean (JISAO) under NOAA [NA10OAR4320148, 2478]
  3. Sea Grant/NOAA Fisheries Population Dynamics Fellowships
  4. NSF Integrative Graduate Education Research Traineeship (IGERT) Program on Ocean Change
  5. Eunice Kennedy Schriver National Institute of Child Health and Human Development [R24HD042828]
  6. Conicyt

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Analysts conducting stock assessments using integrated, age-structured models must discretize length data into a limited number of bins (data bins). Furthermore, some modeling frameworks also allow users to specify a distinct structure for how lengths of fish are represented in the model (model bins). The effect of choices regarding the number and width of these bins on model output is unclear, and these choices are made inconsistently in assessments across regions and species. Here, we used the stock synthesis modeling framework, and the ss3sim stock assessment simulation package, to explore the effects of choices about length discretization on stock assessment performance for three fish life-history types and four data cases. We found that, with all other aspects of a model fixed, increasing the model bin width tended to increase estimates of spawning biomass, but this effect depended on the shape of length based processes (e.g., growth, maturity, and selectivity). Thus, we suggest analysts using model bins wider than 1 cm explore the effect of this decision on derived management quantities. In the context of estimation, there generally was a predictable tradeoff between estimation accuracy and model run time, with finer model and data bins always improving estimation accuracy and model convergence, but increasing run time. In some cases, wider data bins reduced run time (by up to 50%) with little sacrifice in model estimation performance, particularly those using conditional age-at-length data. This study identifies key aspects to consider when binning length, and provides pertinent information for stock assessment best practice guidelines. (C) 2015 Elsevier B.V. All rights reserved.

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