Mathematical Epidemiology Model Analysis on the Dynamics of COVID-19 Pandemic

Abayneh Fentie Bezabih, G. K. Edessa, P. Koya
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引用次数: 7

Abstract

In the present work, Susceptible-Exposed-Infected-Recovered-Susceptible (SEIRS) mathematical model for COVID-19 Pandemic is formulated and analyzed. The positivity, boundedness, and existence of the solutions of the model are proved. The Disease-free equilibrium point and endemic equilibrium points are identified. Local Stability of disease-free Equilibrium point is checked with the help of Next generation matrix. Global stability of endemic equilibrium point is proved using the Concept of Liapunove function. The basic reproduction number for Novel Corona virus pandemic is computed as R0 = (αβΛ) ⁄ [(δ + μ) (β + δ + μ) (γ + δ + μ)] which depend on six different parameters. It is observed that if basic reproduction number is less than one, then number of cases decrease over time and eventually the disease dies out, and if the basic reproduction number is equals to one, then number of cases are stable. On the other hand, if the basic reproduction number is greater than one, then the number of cases increase over time gets worth. Sensitivity analysis of the basic reproduction number is done with respect to each parameter. It is observed that only some parameters Λ, α, β have high impact on the basic reproduction number. Consequently, with real data on the parameter it is helpful to predict the disease persistence or decline in the present situation. Lastly, numerical simulations are given using DEDiscover software to illustrate analytical results.
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COVID-19大流行动态的数学流行病学模型分析
本文建立了COVID-19大流行的易感-暴露-感染-恢复-易感(SEIRS)数学模型并进行了分析。证明了模型解的正性、有界性和存在性。确定了无病平衡点和地方性平衡点。利用下一代矩阵验算了无病平衡点的局部稳定性。利用Liapunove函数的概念证明了局部平衡点的全局稳定性。新型冠状病毒大流行的基本繁殖数计算为R0 = (αβΛ)⁄[(δ + μ) (β + δ + μ) (γ + δ + μ)],取决于6个不同的参数。观察到,当基本繁殖数小于1时,病例数随着时间的推移而减少,最终死亡;当基本繁殖数等于1时,病例数保持稳定。另一方面,如果基本复制数大于1,那么随着时间的推移,案例的数量会增加。对各参数进行了基本再现数的敏感性分析。观察到,只有一些参数Λ、α、β对基本繁殖数有较大影响。因此,有了关于该参数的真实数据,就有助于预测当前情况下疾病的持续或下降。最后,利用DEDiscover软件进行数值模拟来说明分析结果。
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