2024 : 11 : 13
Ali Shokri Shokri

Ali Shokri Shokri

Academic rank: Professor
ORCID:
Education: PhD.
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Faculty: 1
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Research

Title
Analyzing the dynamic patterns of COVID-19 through nonstandard finite difference scheme
Type
JournalPaper
Keywords
Epidemic; Unconditionally stable; Discretized; Differential equations; Establish; Overall behavior; Nonstandard finite difference scheme; COVID-19; Asymptomatic; Symptomatic
Year
2024
Journal Scientific Reports
DOI
Researchers Abeer Aljohani ، Ali Shokri Shokri ، Herbert Mukalazi

Abstract

This paper presents a novel approach to analyzing the dynamics of COVID-19 using nonstandard finite difference (NSFD) schemes. Our model incorporates both asymptomatic and symptomatic infected individuals, allowing for a more comprehensive understanding of the epidemic's spread. We introduce an unconditionally stable NSFD system that eliminates the need for traditional Runge–Kutta methods, ensuring dynamical consistency and numerical accuracy. Through rigorous numerical analysis, we evaluate the performance of different NSFD strategies and validate our analytical findings. Our work demonstrates the benefits of using NSFD schemes for modeling infectious diseases, offering advantages in terms of stability and efficiency. We further illustrate the dynamic behavior of COVID-19 under various conditions using numerical simulations. The results from these simulations demonstrate the effectiveness of the proposed approach in capturing the epidemic's complex dynamics.