Block G L, Allen L J
Department of Mathematics and Science, Missouri Valley College, Marshall 65340, USA.
Bull Math Biol. 2000 Mar;62(2):199-228. doi: 10.1006/bulm.1999.0147.
Density-independent and density-dependent, stochastic and deterministic, discrete-time, structured models are formulated, analysed and numerically simulated. A special case of the deterministic, density-independent, structured model is the well-known Leslie age-structured model. The stochastic, density-independent model is a multitype branching process. A review of linear, density-independent models is given first, then nonlinear, density-dependent models are discussed. In the linear, density-independent structured models, transitions between states are independent of time and state. Population extinction is determined by the dominant eigenvalue lambda of the transition matrix. If lambda < or = 1, then extinction occurs with probability one in the stochastic and deterministic models. However, if lambda > 1, then the deterministic model has exponential growth, but in the stochastic model there is a positive probability of extinction which depends on the fixed point of the system of probability generating functions. The linear, density-independent, stochastic model is generalized to a nonlinear, density-dependent one. The dependence on state is in terms of a weighted total population size. It is shown for small initial population sizes that the density-dependent, stochastic model can be approximated by the density-independent, stochastic model and thus, the extinction behavior exhibited by the linear model occurs in the nonlinear model. In the deterministic models there is a unique stable equilibrium. Given the population does not go extinct, it is shown that the stochastic model has a quasi-stationary distribution with mean close to the stable equilibrium, provided the population size is sufficiently large. For small values of the population size, complete extinction can be observed in the simulations. However, the persistence time increases rapidly with the population size.
构建、分析并对密度无关和密度依赖、随机和确定性、离散时间、结构化模型进行数值模拟。确定性、密度无关、结构化模型的一个特殊情况是著名的莱斯利年龄结构模型。随机、密度无关模型是一个多类型分支过程。首先给出线性、密度无关模型的综述,然后讨论非线性、密度依赖模型。在线性、密度无关的结构化模型中,状态之间的转换与时间和状态无关。种群灭绝由转移矩阵的主导特征值λ决定。如果λ≤1,那么在随机和确定性模型中灭绝以概率1发生。然而,如果λ>1,那么确定性模型有指数增长,但在随机模型中有一个取决于概率生成函数系统不动点的灭绝正概率。线性、密度无关的随机模型被推广到非线性、密度依赖模型。对状态的依赖是根据加权总种群大小。对于小初始种群大小,表明密度依赖的随机模型可以由密度无关的随机模型近似,因此线性模型表现出的灭绝行为也出现在非线性模型中。在确定性模型中有一个唯一的稳定平衡点。假设种群不会灭绝,表明如果种群大小足够大,随机模型有一个均值接近稳定平衡点的准平稳分布。对于小种群大小的值,在模拟中可以观察到完全灭绝。然而,持续时间随着种群大小迅速增加。