School of Marxism, Chang'an University, Xi'an 710064, China.
School of Automobile, Chang'an University, Xi'an 710064, China.
Int J Environ Res Public Health. 2022 Oct 27;19(21):13956. doi: 10.3390/ijerph192113956.
The coronavirus disease 2019 (COVID-19) pandemic has posed a severe threat to public health and economic activity. Governments all around the world have taken positive measures to, on the one hand, contain the epidemic spread and, on the other hand, stimulate the economy. Without question, tightened anti-epidemic policy measures restrain people's mobility and deteriorate the levels of social and economic activity. Meanwhile, loose policy measures bring little harm to the economy temporarily but could accelerate the transmission of the virus and ultimately wreck social and economic development. Therefore, these two kinds of governmental decision-making behaviors usually conflict with each other. With the purpose of realizing optimal socio-economic benefit over the full duration of the epidemic and to provide a helpful suggestion for the government, a trade-off is explored in this paper between the prevention and control of the epidemic, and economic stimulus. First, the susceptible-infectious-recovered (SIR) model is introduced to simulate the epidemic dynamics. Second, a state equation is constructed to describe the system state variable-the level of socio-economic activity dominated by two control variables. Specifically, these two variables are the strengths of the measures taken for pandemic prevention and control, and economic stimulus. Then, the objective function used to maximize the total socio-economic benefit over the epidemic's duration is defined, and an optimal control problem is developed. The statistical data of the COVID-19 epidemic in Wuhan are used to validate the SIR model, and a COVID-19 epidemic scenario is used to evaluate the proposed method. The solution is discussed in both static and dynamic strategies, according to the knowledge of the epidemic's duration. In the static strategy, two scenarios with different strengths (in terms of anti-epidemic and economic stimulus measures) are analyzed and compared. In the dynamic strategy, two global optimization algorithms, including the dynamic programming (DP) and Pontryagin's minimum principle (PMP), respectively, are used to acquire the solutions. Moreover, a sensitivity analysis of model parameters is conducted. The results demonstrate that the static strategy, which is independent of the epidemic's duration and can be easily solved, is capable of finding the optimal strengths of both policy measures. Meanwhile, the dynamic strategy, which generates global optimal trajectories of the control variables, can provide the path that leads to attaining the optimal total socio-economic benefit. The results reveal that the optimal total socio-economic benefit of the dynamic strategy is slightly higher than that of the static strategy.
2019 年冠状病毒病(COVID-19)大流行对公共卫生和经济活动构成了严重威胁。世界各国政府都采取了积极措施,一方面控制疫情传播,另一方面刺激经济。毫无疑问,收紧的防疫政策措施限制了人们的流动性,降低了社会和经济活动水平。同时,宽松的政策措施暂时对经济几乎没有危害,但可能会加速病毒传播,最终破坏社会和经济发展。因此,这两种政府决策行为通常相互冲突。为了在整个疫情期间实现最佳的社会经济效益,并为政府提供有益的建议,本文探讨了在疫情防控和经济刺激之间的权衡。首先,引入易感-感染-恢复(SIR)模型来模拟疫情动态。其次,构建一个状态方程来描述系统状态变量,该变量主要由两个控制变量决定,具体来说,这两个变量是疫情防控措施和经济刺激措施的力度。然后,定义了用于最大化疫情期间总社会效益的目标函数,并开发了一个最优控制问题。使用武汉 COVID-19 疫情的统计数据验证了 SIR 模型,并使用 COVID-19 疫情场景评估了所提出的方法。根据对疫情持续时间的了解,讨论了静态和动态策略下的解决方案。在静态策略中,分析并比较了两种不同强度(在疫情防控和经济刺激措施方面)的场景。在动态策略中,分别使用动态规划(DP)和庞特里亚金最小原理(PMP)两种全局优化算法获取解决方案。此外,还进行了模型参数的敏感性分析。结果表明,静态策略不依赖于疫情持续时间,易于求解,可以找到两种政策措施的最优力度。同时,动态策略生成控制变量的全局最优轨迹,可以提供实现最佳总社会效益的路径。结果表明,动态策略的最佳总社会效益略高于静态策略。