Evolution and population dynamics in stochastic environments
被引:68
作者:
Yoshimura, J
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机构:UNIV LONDON IMPERIAL COLL SCI TECHNOL & MED, NERC,CTR POPULAT BIOL, ASCOT SL5 7PY, BERKS, ENGLAND
Yoshimura, J
Jansen, VAA
论文数: 0引用数: 0
h-index: 0
机构:UNIV LONDON IMPERIAL COLL SCI TECHNOL & MED, NERC,CTR POPULAT BIOL, ASCOT SL5 7PY, BERKS, ENGLAND
Jansen, VAA
机构:
[1] UNIV LONDON IMPERIAL COLL SCI TECHNOL & MED, NERC,CTR POPULAT BIOL, ASCOT SL5 7PY, BERKS, ENGLAND
[2] SUNY COLL ENVIRONM SCI & FORESTRY, DEPT ENVIRONM & FOREST BIOL, SYRACUSE, NY 13210 USA
来源:
RESEARCHES ON POPULATION ECOLOGY
|
1996年
/
38卷
/
02期
关键词:
stochastic environments;
adaptation;
geometric mean fitness;
trade offs;
games;
extinction;
D O I:
10.1007/BF02515724
中图分类号:
Q14 [生态学(生物生态学)];
学科分类号:
071012 ;
0713 ;
摘要:
Inter-generational temporal variability of the environment is important in the evolution and adaptation of phenotypic traits. We discuss a population-dynamic approach which plays a central role in the analysis of evolutionary processes. The basic principle is that the phenotypes with the greatest long-term average growth rate will dominate the entire population. The calculation of long-term average growth rates for populations under temporal stochasticity can be highly cumbersome. However, for a discrete non-overlapping population, it is identical to the geometric mean of the growth rates (geometric mean fitness), which is usually different from the simple arithmetic mean of growth rates. Evolutionary outcomes based on geometric mean fitness are often very different from the predictions based on the usual arithmetic mean fitness. In this paper we illustrate the concept of geometric mean fitness in a few simple models. We discuss its implications for the adaptive evolution of phenotypes, e.g. foraging under predation risks and clutch size. Next, we present an application: the risk-spreading egg-laying behaviour of the cabbage white butterfly, and develop a two-patch population dynamic model to show how the optimal solution diverges from the usual arithmetic mean approach. The dynamics of these stochastic models cannot be predicted from the dynamics of simple deterministic models. Thus the inclusion of stochastic factors in the analyses of populations is essential to the understanding of not only population dynamics, but also their evolutionary dynamics.