Adaptation of a population to a changing environment in the light of quasi-stationarity

Pub Date : 2023-08-30 DOI:10.1017/apr.2023.28
Aurélien Velleret
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Abstract

We analyze the long-term stability of a stochastic model designed to illustrate the adaptation of a population to variation in its environment. A piecewise deterministic process modeling adaptation is coupled to a Feller logistic diffusion modeling population size. As the individual features in the population become further away from the optimal ones, the growth rate declines, making population extinction more likely. Assuming that the environment changes deterministically and steadily in a constant direction, we obtain the existence and uniqueness of the quasi-stationary distribution, the associated survival capacity, and the Q-process. Our approach also provides several exponential convergence results (in total variation for the measures). From this synthetic information, we can characterize the efficiency of internal adaptation (i.e. population turnover from mutant invasions). When the latter is lacking, there is still stability, but because of the high level of population extinction. Therefore, any characterization of internal adaptation should be based on specific features of this quasi-ergodic regime rather than the mere existence of the regime itself.
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准平稳性:根据准平稳性,种群对环境变化的适应
我们分析了一个随机模型的长期稳定性,该模型旨在说明种群对其环境变化的适应。将分段确定性过程模型的自适应与Feller logistic扩散模型的总体大小相结合。随着种群中的个体特征越来越远离最优特征,增长率下降,使种群灭绝的可能性更大。假设环境在恒定方向上的确定性稳定变化,我们得到了拟平稳分布的存在唯一性、相关的生存能力和q过程。我们的方法还提供了几个指数收敛结果(测量的总变化)。从这些综合信息中,我们可以描述内部适应的效率(即突变入侵的种群更替)。当缺乏后者时,仍然存在稳定性,但由于人口的高水平灭绝。因此,任何内部适应的表征都应该基于这种准遍历制度的具体特征,而不仅仅是制度本身的存在。
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