Space and stochasticity in population dynamics
Authored by Otso Ovaskainen, Stephen J Cornell
Date Published: 2006
DOI: 10.1073/pnas.0603994103
Sponsors:
Academy of Finland
Platforms:
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Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Organisms interact with each other mostly over local scales, so the
local density experienced by an individual is of greater importance than
the mean density in a population. This simple observation poses a
tremendous challenge to theoretical ecology, and because nonlinear
stochastic and spatial models cannot be solved exactly, much effort has
been spent in seeking effective approximations. Several authors have
observed that spatial population systems behave like deterministic
nonspatial systems if dispersal averages the dynamics over a
sufficiently large scale. We exploit this fact to develop an exact
series expansion, which allows one to derive approximations of
stochastic individual-based models without resorting to heuristic
assumptions. Our approach makes it possible to calculate the corrections
to mean-field models in the limit where the interaction range is large, and it provides insight into the performance of moment closure methods.
With this approach, we demonstrate how the buildup of spatiotemporal
correlations slows down the spread of an invasion, prolongs time lags
associated with extinction debt, and leads to locally oscillating but
globally stable coexistence of a host and a parasite.
Tags
epidemics
models
Dispersal
Spread
Spatial scale
Moment equations
Extinction debt
Intermediate-scale
Determinism
Boreal forests