On Evolution of Migrating Population with Two Competing Species

A computer experiment study of population evolution and its dynamics is pre- sented for two competing species (A and B) which share two habitats (1 and 2) of a limited environmental capacity. The Penna model of biological aging, based on the concept of defective mutation accumulation, was adopted for mi- grating population. In this paper, we assume and concentrate on the case when only one species (A) is mobile. For isolated habitats and for any initial popu- lation, we get at equilibrium spatial population distribution (A, B) in which A occupies location '1' only, while B-species is the ultimate winner in '2'. This is achieved by suitable choice of model parameters so habitat '1' is more at- tractive for species 'A' while location '2' is more advantageous to 'B'. However, population distribution begins to dier when migration between habitats is al-

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