Ndlovu Meshach, Moyo Rodwell, Mpofu Mqhelewenkosi
Gwanda State University, Zimbabwe.
Phys Chem Earth (2002). 2022 Oct;127:103167. doi: 10.1016/j.pce.2022.103167. Epub 2022 May 25.
This paper presents evidence and the existence of seasonality in current existing COVID-19 datasets for three different countries namely Zimbabwe, South Africa, and Botswana. Therefore, we modified the SVIR model through factoring in the seasonality effect by incorporating moving averages and signal processing techniques to the disease transmission rate. The simulation results strongly established the existence of seasonality in COVID-19 dynamics with a correlation of 0.746 between models with seasonality effect at 0.001 significance level. Finally, the model was used to predict the magnitude and occurrence of the fourth wave.
本文展示了来自津巴布韦、南非和博茨瓦纳这三个不同国家的现有新冠疫情数据集中存在季节性的证据。因此,我们通过将移动平均值和信号处理技术纳入疾病传播率来考虑季节性影响,从而对易感-暴露-感染-康复(SVIR)模型进行了修改。模拟结果有力地证实了新冠疫情动态中存在季节性,在0.001显著性水平下,有季节性影响的模型之间的相关性为0.746。最后,该模型被用于预测第四波疫情的规模和发生情况。