Do models parameterized with observations from the system predict larval yellow perch (Perca flavescens) growth performance better in Lake Erie?
Authored by Kevin L Pangle, Stuart A Ludsin, Jose R Marin Jarrin, Timothy B Johnson, Julie M Reichert
Date Published: 2018
DOI: 10.1139/cjfas-2016-0392
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Abstract
Growth performance can influence survival during early life. As such, a
range of statistical to mechanistic modeling approaches has been used to
predict growth performance, with few studies evaluating prediction
accuracy. We tested the ability of three models to estimate observed
larval yellow perch (Perca flavescens) growth and length in western Lake
Erie (United States - Canada). We found that a general linear model
developed using yellow perch data from western Lake Erie performed best
followed closely by a semimechanistic individual-based model (IBM)
specific to Lake Erie yellow perch and worse by a general multispecies
IBM. We suspect that the statistical model performed better because,
unlike IBMs, it does not require prey availability data, probably poorly
represented by zooplankton samples, and because the IBMs are imperfectly
parameterized. Our findings indicate that caution should be exercised
when using general IBMs given that the models parameterized with
observations from the system of interest outperformed the general IBM in
providing accurate fish growth and length estimates, pointing to the
need for research that can improve existing mechanism-based models of
larval growth.
Tags
Individual-based model
Mortality
population
Prey
Recruitment
Climate-change
Fish
Size
Bioenergetics model
Nursery
areas