The multistep Laplace optimized decomposition method for solving fractional-order coronavirus disease model (COVID-19) via the Caputo fractional approach

Author:

Maayah Banan1,Moussaoui Asma1,Bushnaq Samia2,Abu Arqub Omar3

Affiliation:

1. Department of Mathematics, Faculty of Science, The University of Jordan , Amman 11942 , Jordan

2. Department of Basic Sciences, Princess Sumaya University for Technology , Amman 11941 , Jordan

3. Department of Mathematics, Faculty of Science, Al-Balqa Applied University , Salt 19117 , Jordan

Abstract

Abstract COVID-19, a novel coronavirus disease, is still causing concern all over the world. Recently, researchers have been concentrating their efforts on understanding the complex dynamics of this widespread illness. Mathematics plays a big role in understanding the mechanism of the spread of this disease by modeling it and trying to find approximate solutions. In this study, we implement a new technique for an approximation of the analytic series solution called the multistep Laplace optimized decomposition method for solving fractional nonlinear systems of ordinary differential equations. The proposed method is a combination of the multistep method, the Laplace transform, and the optimized decomposition method. To show the ability and effectiveness of this method, we chose the COVID-19 model to apply the proposed technique to it. To develop the model, the Caputo-type fractional-order derivative is employed. The suggested algorithm efficacy is assessed using the fourth-order Runge-Kutta method, and when compared to it, the results show that the proposed approach has a high level of accuracy. Several representative graphs are displayed and analyzed in two dimensions to show the growth and decay in the model concerning the fractional parameter α values. The central processing unit computational time cost in finding graphical results is utilized and tabulated. From a numerical viewpoint, the archived simulations and results justify that the proposed iterative algorithm is a straightforward and appropriate tool with computational efficiency for several coronavirus disease differential model solutions.

Publisher

Walter de Gruyter GmbH

Subject

General Mathematics

Reference38 articles.

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