Faculty of Electrical Engineering and Automation, Changshu Institute of Technology, Changshu, 215500, PR China; Institute for Intelligent Systems, Faculty of Engineering and the Built Environment, University of Johannesburg, Johannesburg, 2006, South Africa.
Institute of Artificial Intelligence and Future Networks, Beijing Normal University at Zhuhai; BNU-HKBU United International College, Zhuhai, 519000, PR China.
ISA Trans. 2022 May;124:182-190. doi: 10.1016/j.isatra.2021.01.050. Epub 2021 Jan 28.
The coronavirus disease-2019 (COVID-19) has been spreading rapidly in South Africa (SA) since its first case on 5 March 2020. In total, 674,339 confirmed cases and 16,734 mortality cases were reported by 30 September 2020, and this pandemic has made severe impacts on economy and life. In this paper, analysis and long-term prediction of the epidemic dynamics of SA are made, which could assist the government and public in assessing the past Infection Prevention and Control Measures and designing the future ones to contain the epidemic more effectively. A Susceptible-Infectious-Recovered model is adopted to analyse epidemic dynamics. The model parameters are estimated over different phases with the SA data. They indicate variations in the transmissibility of COVID-19 under different phases and thus reveal weakness of the past Infection Prevention and Control Measures in SA. The model also shows that transient behaviours of the daily growth rate and the cumulative removal rate exhibit periodic oscillations. Such dynamics indicates that the underlying signals are not stationary and conventional linear and nonlinear models would fail for long-term prediction. Therefore, a large class of mappings with rich functions and operations is chosen as the model class and the evolutionary algorithm is utilized to obtain the optimal model for long term prediction. The resulting models on the daily growth rate, the cumulative removal rate and the cumulative mortality rate predict that the peak and inflection point will occur on November 4, 2020 and October 15, 2020, respectively; the virus shall cease spreading on April 28, 2021; and the ultimate numbers of the COVID-19 cases and mortality cases will be 785,529 and 17,072, respectively. The approach is also benchmarked against other methods and shows better accuracy of long-term prediction.
自 2020 年 3 月 5 日南非首例确诊病例以来,2019 年冠状病毒病(COVID-19)在南非迅速蔓延。截至 2020 年 9 月 30 日,共报告确诊病例 674339 例,死亡病例 16734 例,这场大流行对经济和生活造成了严重影响。本文对南非疫情动态进行了分析和长期预测,这有助于政府和公众评估过去的传染病防控措施,并设计出更有效的未来措施来控制疫情。采用易感-感染-恢复模型来分析疫情动态。该模型参数是根据南非数据在不同阶段进行估计的。这些参数表明了在不同阶段 COVID-19 的传染性变化,从而揭示了南非过去传染病防控措施的薄弱环节。该模型还表明,日增长率和累计清除率的暂态行为呈现周期性振荡。这种动态表明潜在信号不稳定,传统的线性和非线性模型在长期预测中将会失效。因此,选择了具有丰富函数和运算的一大类映射作为模型类,并利用进化算法获得长期预测的最优模型。日增长率、累计清除率和累计死亡率的预测模型表明,峰值和拐点将分别出现在 2020 年 11 月 4 日和 2020 年 10 月 15 日;病毒将于 2021 年 4 月 28 日停止传播;COVID-19 病例和死亡病例的最终数量将分别为 785529 例和 17072 例。该方法还与其他方法进行了基准测试,显示出更高的长期预测准确性。