Frank T D
Dept of Psychology and Dept of Physics, University of Connecticut, Storrs, CT, 06269, USA.
Chaos Solitons Fractals. 2020 Nov;140:110194. doi: 10.1016/j.chaos.2020.110194. Epub 2020 Aug 11.
Taking a dynamical systems perspective, COVID-19 infections are assumed to spread out in a human population via an instability. Conversely, government interventions to reduce the spread of the disease and the number of fatalities may induce a bifurcation that stabilizes a desirable state with low numbers of COVID-19 cases and associated deaths. The key characteristic feature of an infection dynamical system in this context is the eigenvalue that determines the stability of the states under consideration and is known in synergetics as the order parameter eigenvalue. Using a SEIR-like infection disease model, the relevant order parameter and its eigenvalue are determined. A three stage methodology is proposed to track and estimate the eigenvalue through time. The method is applied to COVID-19 infection data reported from 20 European countries during the period of January 1, 2020 to June 15. It is shown that in 15 out of the 20 countries the eigenvalue switched its sign suggesting that during the reporting period an intervention bifurcation took place that stabilized the desirable low death state. It is shown that the eigenvalue analysis also allows for a ranking of countries by the degree of the stability of the infection-free state. For the investigated countries, Ireland was found to exhibit the most stable infection-free state. Finally, a six point classification scheme is suggested with groups 5 and 6 including countries that failed to stabilize the desirable infection-free low death state. In doing so, tools for assessing the effectiveness of government interventions are provided that are at the heart of bifurcation theory, in general, and synergetics, in particular.
从动力系统的角度来看,假设新冠病毒感染是通过一种不稳定性在人群中传播的。相反,政府为减少疾病传播和死亡人数而采取的干预措施可能会引发一种分岔,从而使新冠病例数和相关死亡人数处于较低水平的理想状态趋于稳定。在这种情况下,感染动力系统的关键特征是特征值,它决定了所考虑状态的稳定性,在协同学中被称为序参量特征值。利用一个类似SEIR的传染病模型,确定了相关的序参量及其特征值。提出了一种三阶段方法来随时间跟踪和估计特征值。该方法应用于2020年1月1日至6月15日期间20个欧洲国家报告的新冠病毒感染数据。结果表明,在20个国家中的15个国家,特征值改变了符号,这表明在报告期内发生了干预分岔,使理想的低死亡状态趋于稳定。结果表明,特征值分析还可以根据无感染状态的稳定程度对各国进行排名。在所调查的国家中,爱尔兰被发现呈现出最稳定的无感染状态。最后,提出了一种六点分类方案,其中第5组和第6组包括未能使理想的无感染低死亡状态趋于稳定的国家。这样做提供了评估政府干预有效性的工具,这些工具是一般分岔理论尤其是协同学的核心。