Abstract

Abstract As COVID-19 cases continue to rise globally, many researchers have developed mathematical models to help capture the dynamics of the spread of COVID-19. Specifically, the compartmental SEIR model and its variations have been widely employed. These models differ in the type of compartments included, nature of the transmission rates, seasonality, and several other factors. Yet, while the spread of COVID-19 is largely attributed to a wide range of social behaviors in the population, several of these SEIR models do not account for such behaviors. In this project, we consider novel SEIR-based models that incorporate various behaviors. We created a baseline model and explored incorporating both explicit and implicit behavioral changes. Furthermore, using the Next Generation Matrix method, we derive a basic reproduction number, which indicates the estimated number of secondary cases by a single infected individual. Numerical simulations for the various models we made were performed and user-friendly graphical user interfaces were created. In the future, we plan to expand our project to account for the use of face masks, age-based behaviors and transmission rates, and mixing patterns.

Highlights

  • COVID-19 has been a pandemic of monumental proportions

  • While the spread of COVID-19 is largely attributed to a wide range of social behaviors in the population, several of these SEIR models do not account for such behaviors

  • The main goal of this paper is to develop a new mathematical model well adapted to COVID-19 taking into account the the impact of social behavior

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Summary

Introduction

Ever since the identi cation of the cause of the outbreak of COVID-19 in late 2019 and its pandemic designation in March of 2020 [14, 12], research and development activities have been evolving into a broader understanding of the epidemiology of the novel coronavirus as a “super-spreader” of infectious disease. There have been several mathematical models that have been proposed to forecast the spread as well as the future of the coronavirus disease 2019 (COVID19) epidemics in the US and worldwide. Mathematical models have been used by several researchers to study the transmission dynamics of infectious diseases. Ever since the news of COVID-19 was traced back to Wuhan, several researchers tried to model the dynamics using phenomenological models [13] and variations of the SEIR model [6] to analyze this epidemic.

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