Individual based modeling and parameter estimation for a Lotka-Volterra system
Authored by J Waniewski, W Jedruch
Date Published: 1999
DOI: 10.1016/s0025-5564(98)10075-5
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Abstract
Stochastic component, inevitable in biological systems, makes
problematic the estimation of the model parameters from a single
sequence of measurements, despite the complete knowledge of the system.
We studied the problem of parameter estimation using individual-based
computer simulations of a `Lotka-Volterra world'. Two kinds (species) of
particles - X (preys) and Il(predators) - moved on a sphere according to
deterministic rules and at the collision (interaction) of X and Y the
particle X was changed to a new particle Y. Birth of preys and death of
predators were simulated by addition of X and removal of Y, respectively, according to exponential probability distributions. With
this arrangement of the system, the numbers of particles of each kind
might be described by the Lotka-Volterra equations. The simulations of
the system with low (200-400 particles on average) number of individuals
showed unstable oscillations of the population size. In some simulation
runs one of the species became extinct. Nevertheless, the oscillations
had some generic properties (e.g. mean, in one simulation run.
oscillation period, mean ratio of the amplitudes of the consecutive
maxima of X and Y numbers, etc.) characteristic for the solutions of the
Lotka-Volterra equations. This observation made it possible to estimate
the four paramters of the Lotka-Volterra model with high accuracy and
good precision. The estimation was performed using the integral form of
the Lotka-Volterra equations and two parameter linear regression for
each oscillation cycle separately. We conclude that in spite of the
irregular time course of the number of individuals in each population
due to stochastic intraspecies component, the generic features of the
simulated system evolution can provide enough information for
quantitative estimation of the system parameters. (C) 1999 Elsevier
Science Inc. All rights reserved.
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