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Analyzing Social Distancing and Seasonality of COVID-19 with Mean Field Evolutionary Dynamics

机译:平均现场进化动态分析Covid-19的社会疏散和季节性

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The outbreak of the coronavirus pandemic since the end of 2019 has been declared as a world health emergency by the World Health organization, which raised the importance of an accurate mathematical epidemiological dynamic model to predict the evolution of COVID-19. Replicator dynamics (RDs) are exclusively applied to many epidemic models, but they fail to satisfy the Nash stationarity and can only describe a unidirectional population flow between different states. In this paper, we proposed mean field evolutionary dynamics (MFEDs), inspired by the optimal transport theory and mean field games on graphs, to model epidemic dynamics. We compare the MFEDs with RDs theoretically. In particular, we also show the efficiency of MFEDs by modeling the evolution of COVID-19 in Wuhan, China. Furthermore, we analyze the effect of one-time social distancing as well as the seasonality of COVID-19 through the post-pandemic period.
机译:自2019年底以来冠心病大流行爆发已被世界卫生组织宣布为世界卫生紧急情况,这提出了一种准确的数学流行病学动态模型来预测Covid-19的演变的重要性。 Replicator Dynamics(RDS)专门应用于许多疫情模型,但它们未能满足纳什平稳性,并且只能描述不同状态之间的单向群体流量。在本文中,我们提出了平均现场进化动态(MFED),灵感来自图中的最佳运输理论和平均田间游戏,以模拟流行性动态。我们理论上将MFED与RDS进行比较。特别是,我们还通过在中国武汉的Covid-19演变来展示MFEDS的效率。此外,我们通过大流行后期分析一次性社会疏散以及Covid-19季节性的影响。

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