Predicting Yellow Perch Population Responses Using a Density-Dependent Age-Structured Matrix Projection Model: How Many Annual Data Points Are Needed?
Authored by Kenneth A Rose, Shaye E Sable
Date Published: 2010
DOI: 10.1577/t09-201.1
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Abstract
Density-dependent matrix projection models are commonly used to simulate
fish population dynamics. Much of the data needed to specify the
density-dependent relationships are annual; thus, determining how many
years of data are needed to accurately specify these relationships is
critical. We used 200 years of simulated output from an individual-based
model (IBM) as ``data,{''} and we estimated density-dependent age-0
survival, yearling survival, and adult growth (affected maturity and
fecundity) for an age-structured matrix projection model. We divided the
200-year baseline simulation into 34 data sequences: three 60-year
sequences, four 40-year sequences, nine 20-year sequences, and eighteen
10-year sequences. We refitted the density-dependent survival and growth
functions to each reduced data sequence and compared their shapes; we
then substituted the refitted functions into a matrix model specific to
each data sequence. We compared key output variables for the baseline
simulations and the responses to decreased egg survival among the IBM, the matrix model based on 200 years, and the 34 matrix models based on
the different data sequences. The variation in shape and the number of
sequences that resulted in density-independent survival and depensatory
growth increased greatly for the 20- and 10-year sequences. Predicted
population dynamics under baseline and predicted responses to reduced
egg survival were reasonably similar to those under the IBM and matrix
model based on 200 years for the 60- and 40-year sequences but showed
increasing divergence for the 20- and 10-year sequences. We suggest that
40 or more years of annual data will allow for reasonable estimation of
density-dependent relationships in age-structured matrix projection
models. Many applications of similar models used in management are based
on fewer than 40 years of data, and yet their use is intended to
generate predictions with sufficient precision and accuracy to resolve
differences between relatively small changes in survival rates.
Tags
Individual-based model
growth
Fish populations
Oneida lake
New-york
Pollock theragra-chalcogramma
Bering-sea
Flavescens
Striped bass
Walleye