论文标题
使用改良的SIR模型对Covid-19引起的各种社区的感染状况的动态分析
Dynamical analysis of the infection status in diverse communities due to COVID-19 using a modified SIR model
论文作者
论文摘要
在本文中,我们模拟和研究了Covid-19在德国,日本,印度以及印度受影响高的国家(即德里,马哈拉施特拉邦,西孟加拉邦,喀拉拉邦和卡纳塔克邦)的传播。我们考虑了从2020年4月至2021年7月在Worldometers和Covid-19印度网站上发布的记录数据,其中包括这些国家和州受到大流行严重打击的关注时期。我们的方法基于经典的易感感染的(SIR)模型,可以跟踪社区中感染的演变,我们(a)允许易感和感染的人群在有时会在记录的数据集中出现在记录的数据集中的爆发,爆发或次要波的时间,(b)考虑有效的传输速率,并考虑有效的传输速度,并考虑有效的传输率,并考虑有效的传输率,并考虑有效的传输率,并考虑有效的传输率,并考虑有效的传输速度,并考虑有效的传输率。具有记录数据集的模型解决方案,可以在连续的潮流,爆发或次要波之间近似它们,从而提供了更准确的估计值。我们报告这些国家和州当前感染的状况,以及印度和日本的感染和死亡。我们的模型可以适应记录的数据,可用于解释它们,重要的是,以预测感染,恢复,删除和死亡的个体的数量,并且可以估计有效的感染和恢复率作为时间的功能,假设在给定时间发生疫情。后者可用于预测未来的繁殖数量,并与被感染和死亡的人的数量预测,我们的方法可用于建议实施干预策略和缓解政策,以使受感染和死亡的人的数量保持范围。这可以帮助减少世界各地的传播的影响,并改善人们的福祉。
In this article, we model and study the spread of COVID-19 in Germany, Japan, India and highly impacted states in India, i.e., in Delhi, Maharashtra, West Bengal, Kerala and Karnataka. We consider recorded data published in Worldometers and COVID-19 India websites from April 2020 to July 2021, including periods of interest where these countries and states were hit severely by the pandemic. Our methodology is based on the classic susceptible-infected-removed (SIR) model and can track the evolution of infections in communities, where we (a) allow for the susceptible and infected populations to be reset at times where surges, outbreaks or secondary waves appear in the recorded data sets, (b) consider the parameters in the SIR model that represent the effective transmission and recovery rates to be functions of time and (c) estimate the number of deaths by combining the model solutions with the recorded data sets to approximate them between consecutive surges, outbreaks or secondary waves, providing a more accurate estimate. We report on the status of the current infections in these countries and states, and the infections and deaths in India and Japan. Our model can adapt to the recorded data and can be used to explain them and importantly, to forecast the number of infected, recovered, removed and dead individuals, as well as it can estimate the effective infection and recovery rates as functions of time, assuming an outbreak occurs at a given time. The latter can be used to forecast the future reproduction number and together with the forecast on the number of infected and dead individuals, our approach can be used to suggest the implementation of intervention strategies and mitigation policies to keep at bay the number of infected and dead individuals. This can help reduce the impact of the spread around the world and improve the wellbeing of people.