4.6 Article Proceedings Paper

Time-varying natural mortality in fisheries stock assessment models: identifying a default approach

Journal

ICES JOURNAL OF MARINE SCIENCE
Volume 72, Issue 1, Pages 137-150

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/icesjms/fsu055

Keywords

model misspecification; natural mortality; population models; reference points; simulation; Stock Synthesis; time-varying

Funding

  1. Joint Institute for the Study of the Atmosphere and Ocean (JISAO) under NOAA Cooperative Agreement [NA10OAR4320148]
  2. World Conference on Stock Assessment Methods travel bursary
  3. Fullbright Canada
  4. NSERC
  5. Washington Sea Grant
  6. Exxon Valdez Oil Spill Trustee Council [13120111-Q]
  7. CONICYT
  8. Eunice Kennedy Schriver National Institute of Child Health and Human Development [R24 HD042828]

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Atypical assumption used inmost fishery stock assessments is that natural mortality (M) is constant across time and age. However, M is rarely constant in reality as a result of the combined impacts of exploitation history, predation, environmental factors, and physiological trade-offs. Misspecification or poor estimation of M can lead to bias in quantities estimated using stock assessment methods, potentially resulting in biased estimates of fishery reference points and catch limits, with the magnitude of bias being influenced by life history and trends in fishing mortality. Monte Carlo simulations were used to evaluate the ability of statistical age-structured population models to estimate spawning-stock biomass, fishing mortality, and total allowable catch when the true M was age-invariant, but time-varying. Configurations of the stock assessment method, implemented in Stock Synthesis, included a single age-and time-invariant M parameter, specified at one of the three levels (high, medium, and low) or an estimated M. The min-max (i.e. most robust) approach to specifying M when it is thought to vary across time was to estimate M. The least robust approach for most scenarios examined was to fix M at a high value, suggesting that the consequences of misspecifying M are asymmetric.

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