Verifying a stochastic model for the spread of a SARS-CoV-2-like infection: opportunities and limitations

Marco Roveri, Franc Ivankovic, L. Palopoli, D. Fontanelli
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引用次数: 1

Abstract

There is a growing interest in modeling and analyzing the spread of diseases like the SARS-CoV-2 infection using stochastic models. These models are typically analyzed quantitatively and are not often subject to validation using formal verification approaches, nor leverage policy syntheses and analysis techniques developed in formal verification. In this paper, we take a Markovian stochastic model for the spread of a SARSCoV-2-like infection. A state of this model represents the number of subjects in different health conditions. The considered model considers the different parameters that may have an impact on the spread of the disease and exposes the various decision variables that can be used to control it. We show that the modeling of the problem within state-of-the-art model checkers is feasible and it opens several opportunities. However, there are severe limitations due to i) the espressivity of the existing stochastic model checkers on one side, and ii) the size of the resulting Markovian model even for small population sizes.
验证sars - cov -2样感染传播的随机模型:机会和局限性
人们对使用随机模型建模和分析SARS-CoV-2感染等疾病的传播越来越感兴趣。这些模型通常是定量分析的,并且通常不受制于使用正式验证方法的验证,也不利用在正式验证中开发的策略综合和分析技术。在本文中,我们采用了sarscov -2样感染传播的马尔可夫随机模型。该模型的状态表示处于不同健康状态的受试者数量。所考虑的模型考虑了可能对疾病传播产生影响的不同参数,并暴露了可用于控制疾病传播的各种决策变量。我们表明,在最先进的模型检查器中对问题进行建模是可行的,并且它提供了几个机会。然而,由于i)现有随机模型检查器在一方面的表达性,以及ii)即使对于较小的人口规模,所得到的马尔可夫模型的大小,存在严重的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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