Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.

Simple models of insect populations with non-overlapping generations have been instrumental in understanding the mechanisms behind population cycles, including wild (chaotic) fluctuations. The presence of deterministic chaos in natural populations, however, has never been unequivocally accepted. Rec...

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Main Authors: Brajendra K Singh, Paul E Parham, Chin-Kun Hu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3176270?pdf=render
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spelling doaj-f1d3ac0e6ede4787a85032d9982f58792020-11-25T01:21:52ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0169e2420010.1371/journal.pone.0024200Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.Brajendra K SinghPaul E ParhamChin-Kun HuSimple models of insect populations with non-overlapping generations have been instrumental in understanding the mechanisms behind population cycles, including wild (chaotic) fluctuations. The presence of deterministic chaos in natural populations, however, has never been unequivocally accepted. Recently, it has been proposed that the application of chaos control theory can be useful in unravelling the complexity observed in real population data. This approach is based on structural perturbations to simple population models (population skeletons). The mechanism behind such perturbations to control chaotic dynamics thus far is model dependent and constant (in size and direction) through time. In addition, the outcome of such structurally perturbed models is [almost] always equilibrium type, which fails to commensurate with the patterns observed in population data.We present a proportional feedback mechanism that is independent of model formulation and capable of perturbing population skeletons in an evolutionary way, as opposed to requiring constant feedbacks. We observe the same repertoire of patterns, from equilibrium states to non-chaotic aperiodic oscillations to chaotic behaviour, across different population models, in agreement with observations in real population data. Model outputs also indicate the existence of multiple attractors in some parameter regimes and this coexistence is found to depend on initial population densities or the duration of transient dynamics. Our results suggest that such a feedback mechanism may enable a better understanding of the regulatory processes in natural populations.http://europepmc.org/articles/PMC3176270?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Brajendra K Singh
Paul E Parham
Chin-Kun Hu
spellingShingle Brajendra K Singh
Paul E Parham
Chin-Kun Hu
Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
PLoS ONE
author_facet Brajendra K Singh
Paul E Parham
Chin-Kun Hu
author_sort Brajendra K Singh
title Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
title_short Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
title_full Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
title_fullStr Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
title_full_unstemmed Structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
title_sort structural perturbations to population skeletons: transient dynamics, coexistence of attractors and the rarity of chaos.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description Simple models of insect populations with non-overlapping generations have been instrumental in understanding the mechanisms behind population cycles, including wild (chaotic) fluctuations. The presence of deterministic chaos in natural populations, however, has never been unequivocally accepted. Recently, it has been proposed that the application of chaos control theory can be useful in unravelling the complexity observed in real population data. This approach is based on structural perturbations to simple population models (population skeletons). The mechanism behind such perturbations to control chaotic dynamics thus far is model dependent and constant (in size and direction) through time. In addition, the outcome of such structurally perturbed models is [almost] always equilibrium type, which fails to commensurate with the patterns observed in population data.We present a proportional feedback mechanism that is independent of model formulation and capable of perturbing population skeletons in an evolutionary way, as opposed to requiring constant feedbacks. We observe the same repertoire of patterns, from equilibrium states to non-chaotic aperiodic oscillations to chaotic behaviour, across different population models, in agreement with observations in real population data. Model outputs also indicate the existence of multiple attractors in some parameter regimes and this coexistence is found to depend on initial population densities or the duration of transient dynamics. Our results suggest that such a feedback mechanism may enable a better understanding of the regulatory processes in natural populations.
url http://europepmc.org/articles/PMC3176270?pdf=render
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AT chinkunhu structuralperturbationstopopulationskeletonstransientdynamicscoexistenceofattractorsandtherarityofchaos
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