An individual-based stochastic hazard model of eastern king prawn (Melicertus plebejus) migration with spatially and temporally varying fishing effort
Authored by Michael O'Callaghan, G N G Gordon
Date Published: 2008
DOI: 10.1016/j.ecolmodel.2008.06.034
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Abstract
This paper describes an individual-based stochastic model of eastern
king prawn migration along the eastern Australian coast. Migration is
treated as one-dimensional diffusion with drift. Capture of a prawn is
seen as a failure event driven by movement through a spatially and
temporally variable fishing mortality hazard. This hazard is combined
with a uniforrn natural mortality hazard. We use a Monte Carlo method to
estimate parameters by comparing expected numbers of tag-returns
predicted from the model with previously published tag-release data. As
the previous study used a discrete compartmental model, with
compartments corresponding to zones of constant fishing effort, we used
the same zones and fishing effort in our comparison. The marginal
distribution of yield in each zone per single recruit is determined, providing more information compared with the deterministic approach to
yield-per-recruit. Using our model we also derive the constant fishing
mortality rate equivalent to a spatially variable fishing mortality rate
in its impact on the proportion of prawns surviving the migration to
reach spawning grounds. Determination of this proportion could
contribute significantly to a sustainability assessment of the fishery.
It is demonstrated using the AIC that better fits to the data of the
previous study and greater parsimony are obtained using our model than
were found in the deterministic compartmental analysis of that study.
This improvement results from the ability of our model to account
separately for average speed of movement and average dispersal rate, whereas in the previous deterministic compartmental model, movement is
governed by just one parameter. Our individual-based model includes a
parameter that explicitly accounts for dispersal of prawns in migration, so it can distinguish between speed effects and dispersal effects in the
data. It also models both types of mortality as processes distinct from
those of movement. This enables it to better separate movement and
mortality effects compared to the compartmental approach, in which
movement and mortality are treated as similar departure processes from a
compartment. This separation reduces confounding of movement and
mortality effects when parameters are estimated. (C) 2008 Elsevier B.V
All rights reserved.
Tags
Fishery
compartmental model
Australia
Simplex-method
Hess
Shrimp