A SIR model assumption for the spread of COVID-19 in different communities
Ian Cooper, Argha Mondal, Chris G. Antonopoulos

TL;DR
This paper develops a modified SIR model for COVID-19 that accounts for fluctuating susceptible populations, providing insights and predictions on the disease's spread across different communities, including Texas and various countries.
Contribution
It introduces a novel SIR model allowing susceptible populations to increase during surges, enhancing understanding of COVID-19 dynamics beyond traditional models.
Findings
The model accurately predicts COVID-19 spread in multiple communities.
Proper restrictions can control the pandemic effectively.
The model highlights the importance of early intervention.
Abstract
In this paper, we study the effectiveness of the modelling approach on the pandemic due to the spreading of the novel COVID-19 disease and develop a susceptible-infected-removed (SIR) model that provides a theoretical framework to investigate its spread within a community. Here, the model is based upon the well-known susceptible-infected-removed (SIR) model with the difference that a total population is not defined or kept constant per se and the number of susceptible individuals does not decline monotonically. To the contrary, as we show herein, it can be increased in surge periods! In particular, we investigate the time evolution of different populations and monitor diverse significant parameters for the spread of the disease in various communities, represented by countries and the state of Texas in the USA. The SIR model can provide us with insights and predictions of the spread of…
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