Department of Mathematics, Central University of Rajasthan, Bandar Sindri, Kishangarh-305817, Ajmer, Rajasthan, India.
School of Mathematics, Taiyuan University of Technology, Taiyuan, 030024, China.
Math Biosci Eng. 2020 Sep 10;17(5):5961-5986. doi: 10.3934/mbe.2020318.
An outbreak of rapidly spreading coronavirus established human to human transmission and now became a pandemic across the world. The new confirmed cases of infected individuals of COVID-19 are increasing day by day. Therefore, the prediction of infected individuals has become of utmost important for health care arrangements and to control the spread of COVID-19. In this study, we propose a compartmental epidemic model with intervention strategies such as lockdown, quarantine, and hospitalization. We compute the basic reproduction number (), which plays a vital role in mathematical epidemiology. Based on , it is revealed that the system has two equilibrium, namely disease-free and endemic. We also demonstrate the non-negativity and boundedness of the solutions, local and global stability of equilibria, transcritical bifurcation to analyze its epidemiological relevance. Furthermore, to validate our system, we fit the cumulative and new daily cases in India. We estimate the model parameters and predict the near future scenario of the disease. The global sensitivity analysis has also been performed to observe the impact of different parameters on . We also investigate the dynamics of disease in respect of different situations of lockdown, e.g., complete lockdown, partial lockdown, and no lockdown. Our analysis concludes that if there is partial or no lockdown case, then endemic level would be high. Along with this, the high transmission rate ensures higher level of endemicity. From the short time prediction, we predict that India may face a crucial phase (approx 6000000 infected individuals within 140 days) in near future due to COVID-19. Finally, numerical results show that COVID-19 may be controllable by reducing the contacts and increasing the efficacy of lockdown.
一场迅速蔓延的冠状病毒爆发确立了人际传播,现在已在全球范围内成为大流行。COVID-19 感染个体的新确诊病例每天都在增加。因此,预测感染个体对于医疗保健安排和控制 COVID-19 的传播变得至关重要。在这项研究中,我们提出了一个带有干预策略(如封锁、隔离和住院治疗)的传染病模型。我们计算了基本繁殖数(),它在数学流行病学中起着至关重要的作用。基于,揭示了该系统有两个平衡点,即无病和地方病。我们还证明了解的非负性和有界性、平衡点的局部和全局稳定性、跨越临界的分岔,以分析其流行病学相关性。此外,为了验证我们的系统,我们拟合了印度的累积和新的每日病例。我们估计模型参数并预测疾病的近期情况。还进行了全局敏感性分析,以观察不同参数对的影响。我们还研究了在不同封锁情况下疾病的动态,例如完全封锁、部分封锁和无封锁。我们的分析得出的结论是,如果存在部分或无封锁情况,那么地方病水平将会很高。此外,高传播率确保了更高的地方病水平。从短期预测来看,我们预测印度在不久的将来可能会面临一个关键阶段(在 140 天内约有 600 万感染个体),这是由于 COVID-19 引起的。最后,数值结果表明,通过减少接触和提高封锁的效果,COVID-19 可能是可控的。