Detecting regime shifts in fish stock dynamics
Authored by Tommi Perala, Anna Kuparinen
Date Published: 2015
DOI: 10.1139/cjfas-2014-0406
Sponsors:
Academy of Finland
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Environmental factors such as water temperature, salinity, and the
abundance of zooplankton can have major effects on certain fish stocks'
ability to produce juveniles and, thus, stock renewal ability. This
variability in stock productivity manifests itself as different
productivity regimes. Here, we detect productivity regime shifts by
analyzing recruit-per-spawner time series with Bayesian online change
point detection algorithm. The algorithm infers the time since the last
regime shift (change in mean or variance or both) as well as the
parameters of the data-generating process for the current regime
sequentially. We demonstrate the algorithm's performance using simulated
recruitment data from an individual-based model and further apply the
algorithm to stock assessment estimates for four Atlantic cod (Gadus
morhua) stocks obtained from RAM legacy database. Our analysis shows
that the algorithm performs well when the variability between the
regimes is high enough compared with the variability within the regimes.
The algorithm found several productivity regimes for all four cod
stocks, and the findings suggest that the stocks are currently in low
productivity regimes, which have started during the 1990s and 2000s.
Tags
Productivity
population
fisheries
Recruitment
Consequences
Cod gadus-morhua
Atlantic cod
North-sea
St-lawrence
Climate regime