论文标题
评估时间依赖性限制和控制措施的影响,以使哈萨克斯坦Covid-19的曲线变平
Assessing the effects of time-dependent restrictions and control actions to flatten the curve of COVID-19 in Kazakhstan
论文作者
论文摘要
本文介绍了时间依赖的国家级限制和控制作用及其在与19009年大流行作斗争中的影响。通过分析该国第一波COVID-19期间的传输动力学,可以更好地量化和理解用于弄平曲线的各种控制动作的有效性。反过来,这可以帮助相关当局更好地计划和控制随后的大流行浪潮。为了实现这一目标,首先开发出了大流行的确定性人群模型,以考虑模型参数的时间依赖性特征,尤其是在繁殖数量的不断发展的价值上,这是描述该大流行的传输动态的关键措施之一。然后,可以通过使用数值优化技术将模型拟合到现实世界数据或诱导新闻平台中记录的临时控制操作来估算模型的其他关键参数。在本文中,使用基于哈萨克斯坦共和国第一波Covid-19的数据的案例研究对模型进行了验证。该模型适合在模拟中为两个设置提供估计。时间不变和时变(带有界限)参数。最后,使用四个方案和时间依赖的控制措施进行一些预测,以确定哪些情况可以更好地反映实际情况。
This paper presents the assessment of time-dependent national-level restrictions and control actions and their effects in fighting the COVID-19 pandemic. By analysing the transmission dynamics during the first wave of COVID-19 in the country, the effectiveness of the various levels of control actions taken to flatten the curve can be better quantified and understood. This in turn can help the relevant authorities to better plan for and control the subsequent waves of the pandemic. To achieve this, a deterministic population model for the pandemic is firstly developed to take into consideration the time-dependent characteristics of the model parameters, especially on the ever-evolving value of the reproduction number, which is one of the critical measures used to describe the transmission dynamics of this pandemic. The reproduction number alongside other key parameters of the model can then be estimated by fitting the model to real-world data using numerical optimisation techniques or by inducing ad-hoc control actions as recorded in the news platforms. In this paper, the model is verified using a case study based on the data from the first wave of COVID-19 in the Republic of Kazakhstan. The model is fitted to provide estimates for two settings in simulations; time-invariant and time-varying (with bounded constraints) parameters. Finally, some forecasts are made using four scenarios with time-dependent control measures so as to determine which would reflect on the actual situations better.