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Title

Bio-Inspired Numerical Analysis of COVID-19 with Fuzzy Parameters.

Authors

Allehiany, F. M.; Dayan, Fazal; Al-Harbi, F. F.; Althobaiti, Nesreen; Ahmed, Nauman; Rafiq, Muhammad; Raza, Ali; Elamin, Mawahib

Abstract

Fuzziness or uncertainties arise due to insufficient knowledge, experimental errors, operating conditions and parameters that provide inaccurate information. The concepts of susceptible, infectious and recovered are uncertain due to the different degrees in susceptibility, infectivity and recovery among the individuals of the population. The differences can arise, when the population groups under the consideration having distinct habits, customs and different age groups have different degrees of resistance, etc. More realistic models are needed which consider these different degrees of susceptibility infectivity and recovery of the individuals. In this paper, a Susceptible, Infected and Recovered (SIR) epidemic model with fuzzy parameters is discussed. The infection, recovery and death rates due to the disease are considered as fuzzy numbers. Fuzzy basic reproduction number and fuzzy equilibrium points have been derived for the studied model. Themodel is then solved numerically with three different techniques, forward Euler, Runge-Kutta fourth order method (RK-4) and the nonstandard finite difference (NSFD) methods respectively. The NSFD technique becomes more efficient and reliable among the others and preserves all the essential features of a continuous dynamical system.

Subjects

NUMERICAL analysis; BASIC reproduction number; FINITE differences; COVID-19; DYNAMICAL systems; FUZZY numbers

Publication

Computers, Materials & Continua, 2022, Vol 72, Issue 2, p3213

ISSN

1546-2218

Publication type

Academic Journal

DOI

10.32604/cmc.2022.025811

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