Zhang Lei, Ullah Saif, Alwan Basem Al, Alshehri Ahmed, Sumelka Wojciech
Department of Mathematics, Hanshan Normal University, Chaozhou, 521041, China.
Department of Mathematics, University of Peshawar, Khyber Pakhtunkhwa, Pakistan.
Results Phys. 2021 Dec;31:104971. doi: 10.1016/j.rinp.2021.104971. Epub 2021 Nov 12.
The coronavirus infectious disease (COVID-19) is a novel respiratory disease reported in 2019 in China. The COVID-19 is one of the deadliest pandemics in history due to its high mortality rate in a short period. Many approaches have been adopted for disease minimization and eradication. In this paper, we studied the impact of various constant and time-dependent variable control measures coupled with vaccination on the dynamics of COVID-19. The optimal control theory is used to optimize the model and set an effective control intervention for the infection. Initially, we formulate the mathematical epidemic model for the COVID-19 without variable controls. The model basic mathematical assessment is presented. The nonlinear least-square procedure is utilized to parameterize the model from actual cases reported in Pakistan. A well-known technique based on statistical tools known as the Latin-hypercube sampling approach (LHS) coupled with the partial rank correlation coefficient (PRCC) is applied to present the model global sensitivity analysis. Based on global sensitivity analysis, the COVID-19 vaccine model is reformulated to obtain a control problem by introducing three time dependent control variables for isolation, vaccine efficacy and treatment enhancement represented by , and , respectively. The necessary optimality conditions of the control problem are derived via the optimal control theory. Finally, the simulation results are depicted with and without variable controls using the well-known Runge-Kutta numerical scheme. The simulation results revealed that time-dependent control measures play a vital role in disease eradication.
冠状病毒感染疾病(COVID-19)是2019年在中国报告的一种新型呼吸道疾病。由于其在短时间内的高死亡率,COVID-19是历史上最致命的大流行病之一。为了将疾病最小化并根除,人们采用了许多方法。在本文中,我们研究了各种固定和随时间变化的变量控制措施以及疫苗接种对COVID-19动态的影响。最优控制理论用于优化模型,并为感染设定有效的控制干预措施。首先,我们建立了无变量控制的COVID-19数学流行模型,并给出了模型的基本数学评估。利用非线性最小二乘法根据巴基斯坦报告的实际病例对模型进行参数化。应用一种基于统计工具的著名技术,即拉丁超立方抽样方法(LHS)结合偏秩相关系数(PRCC),对模型进行全局敏感性分析。基于全局敏感性分析,通过分别引入表示隔离、疫苗效力和治疗增强的三个随时间变化的控制变量,对COVID-19疫苗模型进行重新构建以获得一个控制问题。通过最优控制理论推导控制问题的必要最优性条件。最后,使用著名的龙格-库塔数值格式描绘有无变量控制时的模拟结果。模拟结果表明,随时间变化的控制措施在根除疾病方面起着至关重要的作用。