Elsevier

Safety Science

Volume 136, April 2021, 105164
Safety Science

Diagnostic model for the society safety under COVID-19 pandemic conditions

https://doi.org/10.1016/j.ssci.2021.105164Get rights and content

Abstract

The aim of this paper is to develop an information-modeling method for assessing and predicting the consequences of the COVID-19 pandemic. To this end, a detailed analysis of official statistical information provided by global and national organizations is carried out. The developed method is based on the algorithm of multi-channel big data processing considering the demographic and socio-economic information. COVID-19 data are analyzed using an instability indicator and a system of differential equations that describe the dynamics of four groups of people: susceptible, infected, recovered and dead. Indicators of the global sustainable development in various sectors are considered to analyze COVID-19 data. Stochastic processes induced by COVID-19 are assessed with the instability indicator showing the level of stability of official data and the reduction of the level of uncertainty. It turns out that the number of deaths is rising with the Human Development Index. It is revealed that COVID-19 divides the global population into three groups according to the relationship between Gross Domestic Product and the number of infected people. The prognosis for the number of infected people in December 2020 and January-February 2021 shows negative events which will decrease slowly.

Keywords

COVID-19
Pandemic
Indicator
Model
Algorithm
Prognosis
Population safety

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This article is part of the special issue “Nudges and Choice Architecture in Organizations,” Edited by Todd Rogers, Gretchen Chapman, Katherine Milkman and David G. Rand.

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