Selecting parameters for calibration via sensitivity analysis: An indlividual-based model of mosquitofish population dynamics
Authored by Vincent Ginot, Remy Beaudouin, Gilles Monod
Date Published: 2008
DOI: 10.1016/j.ecolmodel.2008.06.033
Sponsors:
French National Institute for Agricultural Research (INRA)
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Pseudocode
Mathematical description
Model Code URLs:
Model code not found
Abstract
A stochastic individual-based model (IBM) of mosquitofish population
dynamics in experimental ponds was constructed in order to increase, virtually, the number of replicates of control populations in an
ecotoxicology trial, and thus to increase the statistical power of the
experiments. In this context, great importance had to be paid to model
calibration as this conditions the use of the model as a reference for
statistical comparisons. Accordingly, model calibration required that
both mean behaviour and variability behaviour of the model were in
accordance with real data. Currently, identifying parameter values from
observed data is still an open issue for IBMs, especially when the
parameter space is large. our model included 41 parameters: 30 driving
the model expectancy and 11 driving the model variability. Under these
conditions, the use of ``Latin hypercube{''} sampling would most
probably have ``missed{''} some important combinations of parameter
values. Therefore, complete factorial design was preferred.
Unfortunately, due to the constraints of the computational capacity, cost-acceptable ``complete designs{''} were limited to no more than nine
parameters, the calibration question becoming a parameter selection
question. In this study, successive ``complete designs{''} were
conducted with different sets of parameters and different parameter
values, in order to progressively narrow the parameter space. For each
``complete design{''}, the selection of a maximum of nine parameters and
their respective n values was carefully guided by sensitivity analysis.
Sensitivity analysis was decisive in selecting parameters that were both
influential and likely to have strong interactions. According to this
strategy, the model of mosquitofish population dynamics was calibrated
on real data from two different years of experiments, and validated on
real data from another independent year. This model includes two
categories of agents; fish and their living environment. Fish agents
have four main processes: growth, survival, puberty and reproduction.
The outputs of the model are the length frequency distribution of the
population and the 16 scalar variables describing the fish populations.
In this study, the length frequency distribution was parameterized by 10
scalars in order to be able to perform calibration. The recently
suggested notion of ``probabilistic distribution of the
distributions{''} was also applied to our case study, and was shown to
be very promising for comparing length frequency distributions (as
such). (C) 2008 Elsevier B.V. All rights reserved.
Tags
Individual-based model
Size
Life-history
Responses
Fresh-water
Trout
Spatially
explicit
Gambusia-holbrooki
Pcbs
Affinis