The first 100 days: modeling the evolution of the COVID-19 pandemic

Cargando...
Miniatura

Fecha

Fecha

2020

Director de trabajo de grado

Título de la revista

Abrir versión en línea

ISSN de la revista

Título del volumen

Editor

Chaos, Solitons and Fractals

Resumen

A simple analytical model for modeling the evolution of the 2020 COVID-19 pandemic is presented. The model is based on the numerical solution of the widely used Susceptible-Infectious-Removed (SIR) populations model for describing epidemics. We consider an expanded version of the original KermackMcKendrick model, which includes a decaying value of the parameter β (the effective contact rate) due to externally imposed conditions, to which we refer as the forced-SIR (FSIR) model. We introduce an approximate analytical solution to the differential equations that represent the FSIR model which gives very reasonable fits to real data for a number of countries over a period of 100 days (from the first onset of exponential increase, in China). The proposed model contains 3 adjustable parameters which are obtained by fitting actual data (up to April 28, 2020). We analyze these results to infer the physical meaning of the parameters involved. We use the model to make predictions about the total expected number of infections in each country as well as the date when the number of infections will have reached 99% of this total. We also compare key findings of the model with recently reported results on the high contagiousness and rapid spread of the disease.

Descripción

Palabras clave

COVID-19, Compartmental model, Modeling pandemic evolution

Citación

Aprobación

Revisión

Complementado por

Referenciado por