Awasthi Arti
Applied Mathematics and Statistics, School of Liberal Studies, University of Petroleum and Energy Studies, Dehradun, Uttarakhand India.
Eur Phys J Plus. 2023;138(3):285. doi: 10.1140/epjp/s13360-023-03866-w. Epub 2023 Mar 27.
In this paper, a mathematical model of COVID-19 has been proposed to study the transmission dynamics of infection by taking into account the role of symptomatic and asymptomatic infected individuals. The model has also considered the effect of non-pharmaceutical interventions (NPIs) in controlling the spread of virus. The basic reproduction number ( ) has been computed and the analysis shows that for , the disease-free state becomes globally stable. The conditions of existence and stability for two other equilibrium states have been obtained. Transcritical bifurcation occurs when basic reproduction number is one (i.e. ). It is found that when asymptomatic cases get increased, infection will persist in the population. However, when symptomatic cases get increased as compared to asymptomatic ones, the endemic state will become unstable and infection may eradicate from the population. Increasing NPIs decrease the basic reproduction number and hence, the epidemic can be controlled. As the COVID-19 transmission is subject to environmental fluctuations, the effect of white noise has been considered in the deterministic model. The stochastic differential equation model has been solved numerically by using the Euler-Maruyama method. The stochastic model gives large fluctuations around the respective deterministic solutions. The model has been fitted by using the COVID-19 data of three waves of India. A good match is obtained between the actual data and the predicted trajectories of the model in all three waves of COVID-19. The findings of this model may assist policymakers and healthcare professionals in implementing the most effective measures to prevent the transmission of COVID-19 in different settings.
在本文中,提出了一个新冠病毒疾病(COVID-19)的数学模型,以研究考虑有症状和无症状感染者作用情况下的感染传播动力学。该模型还考虑了非药物干预措施(NPIs)在控制病毒传播方面的作用。计算了基本再生数( ),分析表明,当 时,无病状态全局稳定。得到了另外两个平衡态的存在性和稳定性条件。当基本再生数为1(即 )时发生跨临界分岔。研究发现,当无症状病例增加时,感染将在人群中持续存在。然而,当有症状病例相对于无症状病例增加时,地方病状态将变得不稳定,感染可能会从人群中根除。增加非药物干预措施会降低基本再生数,因此,可以控制疫情。由于新冠病毒疾病传播受到环境波动影响,在确定性模型中考虑了白噪声的影响。使用欧拉-丸山方法对随机微分方程模型进行了数值求解。随机模型在各自的确定性解周围给出了较大的波动。利用印度三波新冠病毒疾病数据对该模型进行了拟合。在新冠病毒疾病的所有三波疫情中,实际数据与模型预测轨迹之间都获得了良好的匹配。该模型的研究结果可能有助于政策制定者和医疗保健专业人员在不同环境中实施最有效的措施来预防新冠病毒疾病的传播。