Motivated by applications to COVID dynamics, we describe a branching process in random environments model $\{Z_n\}$ whose characteristics change when crossing upper and lower thresholds. This introduces a cyclical path behavior involving periods of increase and decrease leading to supercritical and subcritical regimes. Even though the process is not Markov, we identify subsequences at random time points $\{(\tau_j, \nu_j)\}$ - specifically the values of the process at crossing times, {\it{viz.}}, $\{(Z_{\tau_j}, Z_{\nu_j})\}$ - along which the process retains the Markov structure. Under mild moment and regularity conditions, we establish that the subsequences possess a regenerative structure and prove that the limiting normal distribution of the growth rates of the process in supercritical and subcritical regimes decouple. For this reason, we establish limit theorems concerning the length of supercritical and subcritical regimes and the proportion of time the process spends in these regimes. As a byproduct of our analysis, we explicitly identify the limiting variances in terms of the functionals of the offspring distribution, threshold distribution, and environmental sequences.
翻译:根据对COVID动态的应用,我们描述了随机环境模型中的分支过程,其特点在跨越上限和下限时会发生变化。这引入了周期性路径行为,涉及增加和减少的时期,导致超临界和次临界制度。即使该过程不是Markov,但我们在随机时间点上确定了次序列,即$(tau_j,\nu_j) 美元,特别是该过程在跨越时间的值, {it{viz_ ⁇, $ ⁇ (tau_j}, ⁇ nu_j}) $ $ - 该过程在跨越上限和下限时会改变。在温和常规条件下,我们确定子序列具有再生结构,并证明在超临界和次临界制度下限制该过程的正常增长率分配。为此,我们设定了超临界和次临界制度的时间长度和过程在这些制度中花费的时间比例。作为环境分析的产物,我们明确确定在功能性临界值分配的序列序列中限制差异的分布。