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Transient analysis of a resource-limited recovery policy for epidemics: A retrial queueing approach

机译:流行病资源有限的恢复策略的瞬态分析:一种重试排队方法

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Knowledge on the dynamics of standard epidemic models and their variants over complex networks has been well-established primarily in the stationary regime, with relatively little light shed on their transient behavior. In this paper, we analyze the transient characteristics of the classical susceptible-infected (SI) process with a recovery policy modeled as a state-dependent retrial queueing system in which arriving infected nodes, upon finding all the limited number of recovery units busy, join a virtual buffer and try persistently for service in order to regain susceptibility. In particular, we formulate the stochastic SI epidemic model with added retrial phenomenon as a finite continuous-time Markov chain (CTMC) and derive the Laplace transforms of the underlying transient state probability distributions and corresponding moments for a closed population of size N driven by homogeneous and heterogeneous contacts. Our numerical results reveal the strong influence of infection heterogeneity and retrial frequency on the transient behavior of the model for various performance measures.
机译:关于标准流行病模型及其在复杂网络上的变体的动力学的知识主要是在平稳状态下建立的,相对较少地了解它们的瞬态行为。在本文中,我们使用恢复策略建模分析经典易感感染(SI)过程的瞬态特性,该策略建模为状态依赖的重试排队系统,在该策略中,到达感染节点后,发现所有有限数量的恢复单元都忙着加入虚拟缓冲区并持续尝试进行服务,以恢复敏感性。特别是,我们将带有重试现象的随机SI流行病模型公式化为有限连续时间马尔可夫链(CTMC),并针对由均质驱动的大小为N的封闭群体得出潜在瞬态概率分布的Laplace变换和对应矩和异构的联系人。我们的数值结果揭示了感染异质性和重试频率对各种性能指标对模型瞬态行为的强烈影响。

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