Modelling of Regional Economic Management in Conditions of Mass Diseases

IF 5.6 2区 经济学 Q1 DEVELOPMENT STUDIES Cambridge Journal of Regions Economy and Society Pub Date : 2023-01-01 DOI:10.17059/ekon.reg.2023-2-1
. И.В.ЛутошкинiD, М. С. Рыбина, . IgorV.LutoshkiniD, Maria S. Rybina
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Abstract

Economic globalisation, logistics intensification, world population growth and increasing mobility lead to the emergence of mass diseases, determining the behaviour of various economic agents. The article offers a new tool for analysing regional economic management in conditions of mass diseases, which combines both socio-biological and economic factors in one economic and mathematical model. The proposed model is based on the description of disease dynamics among various population groups (SIR or SIER compartmental models) and corresponding socio-economic changes. Investments in the improvement of hospital beds, in the construction of new hospitals, and in information campaigns to combat the disease are considered as control actions on the economic system. Thus, the regional management system can apply this tool to quantify and compare possible management decisions, taking into account the mutual influence of biological and socio-economic factors. Mathematical models in population biology and epidemiology were analysed in order to construct the tool and assess its parameters by the methods of regression correlation analysis, simulation modelling, and numerical analysis of the differential equation system. In particular, statistical information on the COVID-19 pandemic in Russia and Ulyanovsk oblast for 2020 was examined during the research. The developed software package was utilised to model the presence or absence of restrictive measures during the reviewed period; then, a comparative analysis of these strategies was conducted. The described tool can be adapted to assess the management strategies of various economic agents. It can be further supplemented with quality criteria and appropriate algorithms for selecting optimal strategies to manage regional economy in conditions of mass diseases.
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群体性疾病条件下的区域经济管理模型
经济全球化、物流集约化、世界人口增长和流动性增加导致大规模疾病的出现,决定了各种经济主体的行为。本文将社会生物学和经济因素结合在一个经济和数学模型中,为分析群体性疾病条件下的区域经济管理提供了一种新的工具。提出的模型是基于对不同人群之间疾病动态的描述(SIR或SIER分区模型)和相应的社会经济变化。在改善医院床位、建设新医院和开展防治疾病的宣传运动方面的投资被视为对经济系统的控制行动。因此,区域管理系统可以应用这一工具来量化和比较可能的管理决策,同时考虑到生物和社会经济因素的相互影响。采用回归相关分析、模拟建模和微分方程组数值分析等方法,分析了种群生物学和流行病学的数学模型,构建了该工具并对其参数进行了评估。研究期间特别审查了2020年俄罗斯和乌里扬诺夫斯克州2019冠状病毒病大流行的统计信息。已开发的软件包用于模拟审查期间是否存在限制措施;然后,对这些策略进行了比较分析。所描述的工具可以用来评估各种经济主体的管理策略。它可以进一步补充质量标准和适当的算法,以选择在群体性疾病条件下管理区域经济的最佳策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.90
自引率
4.50%
发文量
40
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