Quasicycles revisited: apparent sensitivity to initial conditions
Authored by M Pascual, P Mazzega
Date Published: 2003
DOI: 10.1016/s0040-5809(03)00086-8
Sponsors:
James S. McDonnell Foundation
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Model Documentation:
Other Narrative
Mathematical description
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Abstract
Environmental noise is known to sustain cycles by perturbing a
deterministic approach to equilibrium that is itself oscillatory.
Quasicycles produced in this way display a regular period but varied
amplitude. They were proposed by Nisbet and Gurney (Nature 263 (1976)
319) as one possible explanation for population fluctuations in nature.
Here, we revisit quasicyclic dynamics from the perspective of nonlinear
time series analysis. Time series are generated with a predator-prey
model whose prey's growth rate is driven by environmental noise. A
method for the analysis of short and noisy data provides evidence for
sensitivity to initial conditions, with a global Lyapunov exponent often
close to zero characteristic of populations `at the edge of chaos'.
Results with methods restricted to long time series are consistent with
a finite-dimensional attractor on which dynamics are sensitive to
initial conditions. These results are compared with those previously
obtained for quasicycles in an individual-based model with heterogeneous
spatial distributions. Patterns of sensitivity to initial conditions are
shown to differentiate phase-forgetting from phase-remembering
quasicycles involving a periodic driver. The previously reported mode at
zero of Lyapunov exponents in field and laboratory populations may
reflect, in part, quasicyclic dynamics. (C) 2003 Elsevier Inc. All
rights reserved.
Tags
epidemics
models
Chaos
systems
oscillations
Fluctuations
Population-dynamics
Phase
Time-series analysis
Strange attractors