新型冠状病毒SIRV模型Lyapunov稳定性分析

D. Mahayana
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引用次数: 1

摘要

到目前为止,尚不清楚印度尼西亚的COVID-19大流行何时结束。随着新冠肺炎病例的持续增加,预测新冠肺炎感染人数对制定控制策略以减少疾病传播具有重要意义。到2020年底,几家制造商宣布COVID-19候选疫苗的高效率。疫苗一直被认为是改善人口健康的重要工具,从而可以在不阻碍经济增长的情况下控制疾病的传播。传染病的数学模型是预测疾病传播动态的重要工具。它可用于预测潜在疫情的未来情况,并评估减少疫情传播的最佳策略。有许多类型的数学模型来预测传染病在人与人之间传播的行为。其中一种常用的被称为隔间模型。在本文中,我们使用一个带有疫苗接种的改进SIR模型来预测疫苗接种后疾病传播的行为。从理论上讲,一个成功的疫苗接种计划应该会减缓病毒的传播速度。采用带疫苗接种的改进SIR模型预测冠状病毒的传播。在此,我们利用Lyapunov函数证明了当接种率大于零时,模型具有全局渐近稳定的唯一平衡点。否则,如果不接种疫苗,只有当感染的繁殖数小于1时,平衡点才稳定。此外,该模型将实施到印度尼西亚的数据,以预测疫苗接种计划后疾病的传播行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lyapunov Stability Analysis of Covid-19 SIRV Model
Until now, it is not known when the COVID-19 pandemic in Indonesia will end. As COVID-19 cases continue to increase, predicting the number of cases infected with COVID-19 is very important to design a control strategy to reduce the disease spread. Towards the end of 2020, several manufacturers announced high efficacy rates of COVID-19 vaccine candidates. Vaccines have been believed to be an important tool for improving the health of the population so that the disease spread can be controlled without hindering economic growth. A Mathematical model of infectious diseases is an important tool that has been focused on predicting the dynamics of the disease spread. It can be used to predict the future situation of a potential outbreak and evaluate the best strategy to reduce the spread of the outbreak. There are many types of mathematical models to predict the behavior of an infectious disease that is transmitted from human to human. One of the commonly used is called the compartment model. In this paper, we use a modified SIR model with vaccination to predict the behavior of the disease spread after vaccination. Theoretically, a successful vaccination program should slow down the rate of the virus spread. The modified SIR model with vaccination is adopted to predict the spread of coronavirus. Here, we proof that the model has a unique equilibrium point that is globally asymptotically stable by using Lyapunov function if the vaccination rate is greater than zero. Otherwise, if there is no vaccination is done, the equilibrium points only stable if reproduction number of infection is less than one. Further, the model will be implemented to Indonesia data to predict the behavior of the spread of the disease after the vaccination program.
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