Resolving discrepancies between deterministic population models and individual-based simulations
Authored by WG Wilson
Date Published: 1998
DOI: 10.1086/286106
Sponsors:
No sponsors listed
Platforms:
No platforms listed
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
This work ties together two distinct modeling frameworks for population
dynamics: an individual-based simulation and a set of coupled
integrodifferential equations involving population densities. The
simulation model represents an idealized predator-prey system formulated
at the scale of discrete individuals, explicitly incorporating their
mutual interactions, whereas the population-level framework is a
generalized version of reaction-diffusion models that incorporate
population densities coupled to one another by interaction rates. Here I
use various combinations of long-range dispersal for both the offspring
and adult stages of both prey and predator species, providing a broad
range of spatial and temporal dynamics, to compare and contrast the two
model frameworks. Taking the individual-based modeling results as given, two examinations of the reaction-dispersal model are made: Linear
stability analysis of the deterministic equations and direct numerical
solution of the model equations. I also modify the numerical solution in
two ways to account for the stochastic nature of individual-based
processes, which include independent, local perturbations in population
density and a minimum population density within integration cells, below
which the population is set to zero. These modifications introduce new
parameters into the population-level model, which I adjust to reproduce
the individual-based model results. The individual-based model is then
modified to minimize the effects of stochasticity, producing a match of
the predictions from the numerical integration of the population-level
model without stochasticity.
Tags
Dynamics
Coexistence
Dispersal
systems
diffusion-controlled reactions
stability
Variability
Consequences
Persistence
Predator-prey interactions