Journal of Mathematical Biology

, Volume 64, Issue 7, pp 1189–1223 | Cite as

Evolution of species trait through resource competition

  • Sepideh Mirrahimi
  • Benoît Perthame
  • Joe Yuichiro Wakano
Article

Abstract

To understand the evolution of diverse species, theoretical studies using a Lotka–Volterra type direct competition model had shown that concentrated distributions of species in continuous trait space often occurs. However, a more mechanistic approach is preferred because the competitive interaction of species usually occurs not directly but through competition for resource. We consider a chemostat-type model where species consume resource that are constantly supplied. Continuous traits in both consumer species and resource are incorporated. Consumers utilize resource whose trait values are similar with their own. We show that, even when resource-supply has a continuous distribution in trait space, a positive continuous distribution of consumer trait is impossible. Self-organized generation of distinct species occurs. We also prove global convergence to the evolutionarily stable distribution.

Keywords

Adaptive dynamics Continuous trait Ecological competition for resource Dirac concentrations Asymptotic methods 

Mathematics Subject Classification (2000)

35B25 35B40 47G20 92D15 

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Copyright information

© Springer-Verlag 2011

Authors and Affiliations

  • Sepideh Mirrahimi
    • 1
  • Benoît Perthame
    • 1
    • 2
  • Joe Yuichiro Wakano
    • 3
  1. 1.Laboratoire Jacques-Louis LionsUniversité P. et M. Curie Paris 06, CNRS UMR 7598Paris cedex 05France
  2. 2.Institut Universitaire de FranceParisFrance
  3. 3.Meiji Institute for Advanced Study of Mathematical Sciences and PRESTOJapan Science and Technology AgencySaitamaJapan

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