论文标题
通过基于模型的预测进行动态跟踪,以预测COVID-19大流行
Dynamic tracking with model-based forecasting for the spread of the COVID-19 pandemic
论文作者
论文摘要
在本文中,易感感染的(SIR)模型已被用来跟踪Covid-19病毒在四个感兴趣的国家中传播的演变。特别是,取决于某些基本特征的流行病模型已应用于对意大利,印度,韩国和伊朗疾病的时间演变进行建模。病毒传播的经济,社会和健康后果是灾难性的。因此,至关重要的是,可以开发并使用可用的数学模型来进行比较,以在已发布的数据集和模型预测之间进行比较。从这里的SIR模型估算的预测可以用于扩散的定性和定量分析。它可以深入了解病毒的传播,仅通过发布的数据就无法通过每天更新模型来做到这一点。例如,可以使用我们的建模方法检测感染中尖峰的早期发作或第二波的发展。我们考虑了从2020年3月至6月的数据,当时不同的社区受到严重影响。我们证明了预测,具体取决于模型的参数与Covid-19直到2020年9月的传播有关。通过比较已发布的数据和模型结果,我们得出结论,以这种方式,可以更好地反映政府和个人实施的适当度量的成功或失败,以减轻和控制当前的PANDEMIC。
In this paper, a susceptible-infected-removed (SIR) model has been used to track the evolution of the spread of the COVID-19 virus in four countries of interest. In particular, the epidemic model, that depends on some basic characteristics, has been applied to model the time evolution of the disease in Italy, India, South Korea and Iran. The economic, social and health consequences of the spread of the virus have been cataclysmic. Hence, it is essential that available mathematical models can be developed and used for the comparison to be made between published data sets and model predictions. The predictions estimated from the SIR model here, can be used in both the qualitative and quantitative analysis of the spread. It gives an insight into the spread of the virus that the published data alone cannot do by updating them and the model on a daily basis. For example, it is possible to detect the early onset of a spike in infections or the development of a second wave using our modeling approach. We considered data from March to June, 2020, when different communities are severely affected. We demonstrate predictions depending on the model's parameters related to the spread of COVID-19 until September 2020. By comparing the published data and model results, we conclude that in this way, it may be possible to better reflect the success or failure of the adequate measures implemented by governments and individuals to mitigate and control the current pandemic.