Title of article :
Stochastic modeling of aphid population growth with nonlinear, power-law dynamics
Author/Authors :
Matis، نويسنده , , James H. and Kiffe، نويسنده , , Thomas R. and Matis، نويسنده , , Timothy I. and Stevenson، نويسنده , , Douglass E.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Pages :
26
From page :
469
To page :
494
Abstract :
This paper develops a deterministic and a stochastic population size model based on power-law kinetics for the black-margined pecan aphid. The deterministic model in current use incorporates cumulative-size dependency, but its solution is symmetric. The analogous stochastic model incorporates the prolific reproductive capacity of the aphid. These models are generalized in this paper to include a delayed feedback mechanism for aphid death. Whereas the per capita aphid death rate in the current model is proportional to cumulative size, delayed feedback is implemented by assuming that the per capita rate is proportional to some power of cumulative size, leading to so-called power-law dynamics. The solution to the resulting differential equations model is a left-skewed abundance curve. Such skewness is characteristic of observed aphid data, and the generalized model fits data well. The assumed stochastic model is solved using Kolmogrov equations, and differential equations are given for low order cumulants. Moment closure approximations, which are simple to apply, are shown to give accurate predictions of the two endpoints of practical interest, namely (1) a point estimate of peak aphid count and (2) an interval estimate of final cumulative aphid count. The new models should be widely applicable to other aphid species, as they are based on three fundamental properties of aphid population biology.
Keywords :
Normal approximation , Moment closure methods , Kolmogrov equations , Pecan aphids , Birth–death processes
Journal title :
Mathematical Biosciences
Serial Year :
2007
Journal title :
Mathematical Biosciences
Record number :
1589082
Link To Document :
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