Butt Azhar Iqbal Kashif, Ahmad Waheed, Rabbani Hafiz Ghulam, Rafiq Muhammad, Ahmad Shehbaz, Ahmad Naeed, Malik Saira
Department of Mathematics and Statistics, College of Science, King Faisal University, 31982, Al-Ahsa, Saudi Arabia.
Department of Mathematics, GC University, Lahore, Pakistan.
Sci Rep. 2024 Dec 30;14(1):31617. doi: 10.1038/s41598-024-80218-3.
In this article, a nonlinear fractional bi-susceptible [Formula: see text] model is developed to mathematically study the deadly Coronavirus disease (Covid-19), employing the Atangana-Baleanu derivative in Caputo sense (ABC). A more profound comprehension of the system's intricate dynamics using fractional-order derivative is explored as the primary focus of constructing this model. The fundamental properties such as positivity and boundedness, of an epidemic model have been proven, ensuring that the model accurately reflects the realistic behavior of disease spread within a population. The asymptotic stabilities of the dynamical system at its two main equilibrium states are determined by the essential conditions imposed on the threshold parameter. The analytical results acquired are validated and the significance of the ABC fractional derivative is highlighted by employing a recently proposed Toufik-Atangana numerical technique. A quantitative analysis of the model is conducted by adjusting vaccination and hospitalization rates using constant control techniques. It is suggested by numerical experiments that the Covid-19 pandemic elimination can be expedited by adopting both control measures with appropriate awareness. The model parameters with the highest sensitivity are identified by performing a sensitivity analysis. An optimal control problem is formulated, accompanied by the corresponding Pontryagin-type optimality conditions, aiming to ascertain the most efficient time-dependent controls for susceptible and infected individuals. The effectiveness and efficiency of optimally designed control strategies are showcased through numerical simulations conducted before and after the optimization process. These simulations illustrate the effectiveness of these control strategies in mitigating both financial expenses and infection rates. The novelty of the current study is attributed to the application of the structure-preserving Toufik-Atangana numerical scheme, utilized in a backward-in-time manner, to comprehensively analyze the optimally designed model. Overall, the study's merit is found in its comprehensive approach to modeling, analysis, and control of the Covid-19 pandemic, incorporating advanced mathematical techniques and practical implications for disease management.
在本文中,开发了一个非线性分数双易感[公式:见原文]模型,以数学方式研究致命的冠状病毒病(新冠肺炎),采用卡普托意义下的阿坦加纳 - 巴莱亚努导数(ABC)。利用分数阶导数对系统复杂动力学进行更深入的理解是构建该模型的主要重点。已经证明了流行病模型的诸如正性和有界性等基本性质,确保该模型准确反映疾病在人群中传播的现实行为。动态系统在其两个主要平衡状态的渐近稳定性由对阈值参数施加的基本条件确定。通过采用最近提出的图菲克 - 阿坦加纳数值技术对获得的分析结果进行验证,并突出ABC分数导数的重要性。使用常数控制技术通过调整疫苗接种率和住院率对模型进行定量分析。数值实验表明,通过适当认识并采用这两种控制措施,可以加快新冠肺炎大流行的消除。通过进行敏感性分析确定具有最高敏感性的模型参数。制定了一个最优控制问题,并伴随着相应的庞特里亚金型最优性条件,旨在确定针对易感个体和感染个体的最有效的时间相关控制。通过在优化过程前后进行的数值模拟展示了最优设计控制策略的有效性和效率。这些模拟说明了这些控制策略在减轻财务费用和感染率方面的有效性。当前研究的新颖之处在于应用了以时间反向方式使用的保结构图菲克 - 阿坦加纳数值格式,以全面分析最优设计的模型。总体而言,该研究的优点在于其对新冠肺炎大流行的建模、分析和控制的综合方法,结合了先进的数学技术和疾病管理的实际意义。