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Article

Modeling and Numerical Simulation for Covering the Fractional COVID-19 Model Using Spectral Collocation-Optimization Algorithm

1
Department of Mathematics and Statistics, College of Science, Imam Mohammad Ibn Saud Islamic University (IMSIU), Riyadh 11566, Saudi Arabia
2
Department of Mathematics, Faculty of Science, Benha University, Benha 13518, Egypt
3
Department of Mathematics, Faculty of Science, Cairo University, Giza 12613, Egypt
*
Author to whom correspondence should be addressed.
Fractal Fract. 2022, 6(7), 363; https://doi.org/10.3390/fractalfract6070363
Submission received: 26 May 2022 / Revised: 18 June 2022 / Accepted: 27 June 2022 / Published: 29 June 2022
(This article belongs to the Special Issue Recent Advances in Computational Physics with Fractional Application)

Abstract

:
A primary aim of this study is to examine and simulate a fractional Coronavirus disease model by providing an efficient method for solving numerically this important model. In the Liouville-Caputo sense, the examined model consists of five fractional-order differential equations. With the Vieta-Lucas spectral collocation method, the unknown functions can be discretized and fractional derivatives can be obtained. With the system of nonlinear algebraic equations obtained, we can simplify the examined problem. In this system, the unknown coefficients are discovered by constructing and solving it as a restricted optimization problem. Some theoretical investigations are stated to examine the convergence analysis and stability analysis of the proposed approach and model. The results produced using the fractional finite difference technique (FDM), where the fractional differentiation operator was discretized using the Grünwald-Letnikov approach, are compared. The FDM relies heavily upon accurately turning the proposed model into a system of algebraic equations. To assess the algorithm’s correctness and usefulness, a numerical simulation is included.

1. Introduction

Coronavirus infection is one of the most well-known infections nowadays (COVID-19) [1]. This pandemic sickness, which was designated by the World Health Organization (WHO) on March 11, compelled large and small countries to take preventative steps in order to save the lives of its inhabitants and residents. The global economy has suffered as a result of the spread of this pandemic sickness. Companies, colleges, markets, and a variety of other institutions have adopted unusual precautionary steps as a result of this widely spread pandemic sickness. Travel within and outside of the countries has been halted for several months, and curfews have been implemented to reduce crowding and hence disease spread, according to [2]. The danger of this pandemic comes from its incredible ability to spread and the various types of infection that humans can contract.
Mathematical modeling plays an important role in our life [3,4,5]. Mathematical models are crucial not only in the forecast of disease outbreaks, but also in the prevention and treatment of disease outbreaks, according to [6]. One of the most important uses for modeling is to research infectious illnesses and how to develop effective control techniques. Depending on the assumptions made about transmission methods, there are a variety of models. For example, susceptible-infected-susceptible (SIS) systems have been used to model nonlinear occurrence rates and double pandemic theories [7], SIR (susceptible-infected-recovered) models have been used to consider whether or not an individual is aware of the existence of a disease [8], and many other models [9,10,11]. Researchers have been using and constructing mathematical models to gain insight into the pandemic’s mode of spread, propagation, effect, prevention, and control, as well as the effects of preventive measures like handwashing with disinfection and using hand sanitizer, since the debut of COVID-19 [12,13,14,15,16].
In reality, we cannot examine infectious disease dynamical systems using standard derivatives and integrals. Ordinal operators (derivatives and integrals) are not suited when the situation is unexpected, such as in the case of COVID-19, due to uncertainties related to the pandemic. Fractional-order models are more appropriate and accurate than integer-order models because they are more consistent with real-world challenges [17,18].
Finding a novel fractional derivative with non-singular kernels is critical, according to some writers, to address the demand for mathematical modeling of numerous real-world situations in various sectors of daily life [19,20]. Also, the role of these new operators are appearing in many applications like engineering, chemistry, electricity, and many other applications [21,22]. Because fractional differential equations (FDEs) rarely have a precise solution, they are frequently studied using approximate techniques [23,24,25]. The fractional order will be studied in this article in the Liouville-Caputo meaning (LC).
Definition 1.
The fractional derivative D α of order α in the sense of Liouville-Caputo of a function φ ( t ) is defined as [26]:
D α φ ( t ) = 1 Γ ( m α ) 0 t φ ( m 1 ) ( τ ) ( t τ ) α m + 1 d τ , t > 0 , m 1 < α m , m N .
Following are a few properties of the LC-fractional derivative operator [20].
For some constants c i , i = 0 , 1 , , n , we have:
D α i = 0 n c i ψ i ( t ) = i = 0 n c i D α ψ i ( t ) ,
and
D α t n = Γ ( n + 1 ) Γ ( n + 1 α ) t n α , n > α 1 .
Definition 2.
The shifted Grünwald-Letnikov fractional derivative is defined as [20]:
d α φ ( t ) d t α = lim h 0 1 h α i = 0 [ t h ] + 1 ( 1 ) i α i φ ( t ( i 1 ) h ) , h R is a constant .
Lemma 1. ([27]) Assume that ρ a constant, if  t < ρ and ρ φ ( t ) can be expressed in terms of a power series. Then
D R α φ ( τ ) = 1 h α Δ h α φ ( n h ) + O ( h ) , ( h 0 ) ,
for 0 < α < ρ and a series of step size h, τ h N , where D R α is the RL fractional derivative; and
Δ h α φ ( n h ) = i = 0 n ( 1 ) i α i φ ( t n i ) .
In the instance of LC sense, we can find the following by considering the relation between both definitions [27] for  0 < α 1 :
D α φ ( τ ) = 1 h α Δ h α φ ( n h ) τ α Γ ( 1 α ) φ ( 0 ) + O ( h ) , ( h 0 ) .
For more properties, and theoretical results [19,20].
Many researchers have presented a variety of numerical techniques to study and simulate the behavior of solutions for differential equations, including the finite difference method [25], the finite volume method [28], spectral methods [29], and many others [22,30]. One of the most effective techniques for simulating FDEs is the spectral approaches. The most well-known virtue of these techniques are their capacity to produce reliable results with very low degrees of freedom error [31]. Some polynomials, such as Vieta-Lucas polynomials, have an orthogonality property that can be utilized to estimate functions on the interval [ a , b ] . These polynomials play a crucial part in the FDEs [31] techniques. The Vieta-Lucas spectral collocation approach was used in this research to discretize the unknown functions and fractional derivatives of the proposed model’s solution, and the model under consideration was turned into a simple system of nonlinear algebraic equations using the method.
The fundamental goal of this study, as well as its originality, is to expand the COVID-19 system to a fractional-order model. The numerical solution for the suggested model is derived utilizing the spectral collocation approach to attain this goal. The unknown coefficients of the series-solution are discovered by constructing and solving the obtained nonlinear system of algebraic equations as a restricted optimization problem, substantially simplifying it to find these coefficients and the solution. We also compare the suggested method via fractional FDM to the Grünwald-Letnikov approach. The qualitative analysis of the model is examined. Finally, we present comparison research. We emphasize the study’s fundamental weakness, which is the lack of real data, thus we examine the model from a theoretical standpoint using its equivalent system of ODEs. The manuscript is structured as following: Section 2 contains preliminaries and some concepts concerning the model formulation and proves the nonnegative solutions, equilibrium points, and the stability of the model; in addition it defines some concepts about the introduced polynomials. Section 3 presents an approximate of the LC-derivative and the convergence analysis. Section 4 gives numerical implementation the proposed methods, where we implement the proposed method, and the fractional FDM. In addition, numerical simulation is given in Section 5. Finally, in Section 6, we give the conclusion as well as future work that is planned.

2. Preliminaries and Some Concepts

2.1. General Notes and Formulation the Fractional COVID-19 Model

Based on the natural death rate of susceptible individuals ϕ , a constant increase ϵ in the susceptible population is maintained. People’s susceptibility will decrease at constant rates γ 1 and γ 2 as they come in contact with exposed or infected individuals, leading to a greater number of exposed individuals. As individuals exposed to COVID-19 become infected, θ + ϕ + ρ 1 decreases and increases; in this formula, θ represents a patient’s recovery rate from exposure to COVID-19, and ρ 1 represents the mortality rate of individuals infected with it. Likewise, as a percentage of recovered individuals die due to natural causes, the number of exposed, infected, and quarantined individuals declines, and others [32,33]. Furthermore, the number of individuals quarantined in relation to the total number of individuals exposed increases by q 1 and decreases at rate ( Λ + ϕ + ρ 2 ) Q , whereas q is the recovery rate from quarantine to recovery and ρ 2 is the death rate of quarantined individuals.
Consider the following classifications in this population:
  • N ( t ) : the whole human population,
  • S ( t ) : Susceptible individuals,
  • E ( t ) : Exposed individuals,
  • I ( t ) : Infected individuals,
  • Q ( t ) : Quarantined persons,
  • R ( t ) : Those who have recovered/removed themselves from COVID-19.
As a result of these considerations, the following nonlinear system of FDEs is proposed as a mathematical model to characterize COVID-19 propagation dynamics ( t 0 ):
D ν S ( t ) = ϵ γ 1 I ( t ) + γ 2 E ( t ) S ( t ) ϕ S ( t ) , D ν E ( t ) = γ 1 I ( t ) + γ 2 E ( t ) S ( t ) q 1 + ω + α + ϕ E ( t ) , D ν I ( t ) = α E ( t ) θ + ϕ + ρ 1 I ( t ) , D ν Q ( t ) = q 1 E ( t ) Λ + ϕ + ρ 2 Q ( t ) , D ν R ( t ) = ω E ( t ) + θ I ( t ) + Λ Q ( t ) ϕ R ( t ) .
The SEIQR model’s employed coefficients (parameters) are defined as follows and Figure 1 [34]: γ 1 and γ 2 are contact rates of susceptible individuals with infected individuals and susceptible individuals with exposed individuals, respectively; q 1 and q 2 are the quarantined rates of exposed individuals and infected individuals, respectively; Λ , ω and θ are the recovery rates of quarantine to recovered, exposed individuals due to immunity during the latent period, and of exposed individuals due to immunity, respectively; ρ 2 and ρ 1 are the death rates caused by COVID-19 in confined individuals and infected individuals, respectively; α represent the rate at which people who have been exposed to the virus get infected following a latent period; ϵ and ϕ represent the recruitment rate of individuals and the natural death rate of individuals, respectively.
The total population is N ( t ) = S ( t ) + E ( t ) + I ( t ) + Q ( t ) + R ( t ) . Let S 0 , E 0 , I 0 , Q 0 and R 0 reflect the original sizes of the subpopulations vulnerable, exposed, infected, quarantined, and recovered. In addition, the following requirements are met:
S ( 0 ) = S 0 , E ( 0 ) = E 0 , I ( 0 ) = I 0 , Q ( 0 ) = Q 0 , R ( 0 ) = R 0 .
Using this model (6) in its fractional version, we may more clearly assess the impact of the COVID-19 pandemic’s transmission in the future and in past, thanks to the memory effect of fractional derivatives. While mathematical models with integer derivatives are crucial for understanding the dynamics of epidemiological systems, they have certain limits because these systems lack memory or non-local effects, and hence these models in their current state are not always appropriate. As a result, in order to effectively examine various natural phenoms, it is important to convert several epidemiological models into FDEs. FDEs are extensively used in the study of unusual events in nature and the theory of complex systems in general, and they take into account the curve’s characteristics to a large extent. Finally, it can explain temporal delays, fractal features, and other phenomena.
The following two cases are considered [34] to derive and compute the reproductive number R 0 :
(1)
In the absence of COVID-19, the system ξ 0 = S 0 , E 0 , I 0 , Q 0 , R 0 = ( α / ϕ , 0 , 0 , 0 , 0 ) as equilibrium point.
(2)
Otherwise, the equilibrium assumes the form ξ 1 = S 1 , E 1 , I 1 , Q 1 , R 1 , where
S 1 = q 1 + ω + α + ϕ θ + ϕ + ρ 1 γ 1 α + γ 2 θ + ϕ + ρ 1 , E 1 = ϵ ϕ S 1 θ + ϕ + ρ 1 γ 1 α + γ 2 θ + ϕ + ρ 1 S 1 ,
I 1 = α E 1 θ + ϕ + ρ 1 , Q 1 = q 1 E 1 Λ + ϕ + ρ 2 , R 1 = ω E 1 + θ I 1 + Λ Q 1 ϕ .
The Jacobian matrix of the system (6) in the cases of  ξ 0 and ξ 1 are, respectively [34]:
F = γ 2 ϵ ϕ γ 1 ϵ ϕ 0 0 0 0 0 0 0 0 0 0 0 0 0 0 , V = ω + α + ϕ + q 1 0 0 0 α θ + ϕ + ρ 1 0 0 q 1 0 Λ + ϕ + ρ 2 0 ω θ Λ ϕ .
The basic reproductive number is calculated by R 0 = ρ F V 1 and is defined as the average number of secondary infections created when one sick individual is introduced into a group of susceptible people [34], where ρ stands for the spectral radius of the generation matrix F V 1 of the model structure (6) and take the following formula [35]:
R 0 = ϵ γ 2 θ + ϕ + ρ 1 + γ 1 α ω + α + ϕ + q 1 θ + ϕ + ρ 1 .

2.2. Nonnegative Solutions, Stability and Equilibrium Points

Assume that R + 5 = { X R 5 : X 0 } and X ( t ) = ( x 1 ( t ) , x 2 ( t ) , x 3 ( t ) , x 4 ( t ) , x 5 ( t ) ) T , and for 0 < ν 1 , let f ( x ) , D ν f ( x ) C [ a , b ] , then from the generalized mean value theorem (GMVT) [36], we have [37]:
f ( x ) = f ( a ) + 1 Γ ( ν ) D ν f ( δ ) ( x a ) ν , with 0 δ x , x [ a , b ] .
In view of GMVT, if  D ν f ( x ) 0 , x ( 0 , b ) then f ( x ) is increasing ∀ x [ 0 , b ]   and if  D ν f ( x ) 0 , x ( 0 , b ) then f ( x ) is decreasing ∀ x [ 0 , b ] .
Theorem 1
([38]). ( S ( t ) , E ( t ) , I ( t ) , Q ( t ) , R ( t ) ) T a unique solution of (6) and remains in  R + 5 .
Theorem 2
([39,40]). For the following fractional nonlinear dynamical system:
D ν x i ( t ) = f i ( x 1 , x 2 , x 3 , x 4 , x 5 ) , i = 1 , 2 , 3 , 4 , 5 , 0 < ν 1 ,
with x 1 ( 0 ) = x 10 , x 2 ( 0 ) = x 20 , x 3 ( 0 ) = x 30 , x 4 ( 0 ) = x 40 , x 5 ( 0 ) = x 50 , the equilibrium point χ = ( x 1 , x 2 , x 3 , x 4 , x 5 ) is locally asymptotically stable if the Matignon’s conditions [40] given by:
| arg ( λ i ) | > π 2 ν , i = 1 , 2 , 3 , 4 , 5 ,
are satisfied, where λ i are the eigen-values of the Jacobian matrix J evaluated at the equilibrium point χ . The equilibrium points are obtained by setting the right hand sides of the model system (6) to zero, i.e.,
D ν S ( t ) = 0 , D ν E ( t ) = 0 , D ν I ( t ) = 0 , D ν Q ( t ) = 0 , D ν R ( t ) = 0 ,
as a result, we have the following system of algebraic equations:
ϵ γ 1 I ( t ) + γ 2 E ( t ) S ( t ) ϕ S ( t ) = 0 , γ 1 I ( t ) + γ 2 E ( t ) S ( t ) q 1 + ω + α + ϕ E ( t ) = 0 , α E ( t ) θ + ϕ + ρ 1 I ( t ) = 0 , q 1 E ( t ) Λ + ϕ + ρ 2 Q ( t ) = 0 , ω E ( t ) + θ I ( t ) + Λ Q ( t ) ϕ R ( t ) = 0 .
If I = 0 the system (9) has a disease-free equilibrium point ξ 0 = ϵ ϕ , 0 , 0 , 0 , 0 . The Jacobian matrix J ( ξ 0 ) for the system given in (9) evaluated at the disease-free equilibrium point ξ 0 as:
J ( ξ 0 ) = ϕ γ 2 ϵ ϕ γ 1 ϵ ϕ 0 0 0 γ 2 ϵ ϕ ( q 1 + ω + α + ϕ ) γ 1 ϵ ϕ 0 0 0 α ( θ + ϕ + ρ 1 ) 0 0 0 q 1 0 ( Λ + ϕ + ρ 2 ) 0 0 ω θ Λ ϕ .
Theorem 3.
If R 0 < 1 , then ξ 0 = ( S 0 , E 0 , I 0 , Q 0 , R 0 ) is locally asymptotically stable.
Theorem 4.
The endemic equilibrium point ξ 1 = ( S 1 , E 1 , I 1 , Q 1 , R 1 ) of the system given by (9) is locally asymptotically stable iff R 0 > 1 .
The proof of the two Theorems 3 and 4 can be done in details as in [39].
Theorem 5.
  • The equilibrium point ξ 0 is globally asymptotically stable iff R 0 < 1 .
  • If R 0 > 1 , then ξ 1 is globally asymptotically stable, and it is unstable otherwise.
Parameterizations of the model (6) are based on literature values and the least curve fitting method is employed to fit or estimate parameters given the data from Wuhan, China, between 21–28 January. The real data is available starting from 21 January 2020, and extending to 28 January 2020 [41], see Table 1.
The goal is the development of a numerical scheme for numerically simulating and solving the coronavirus mathematical model, as well as making the necessary comparisons. By solving this model, we can predict the number of infected persons and the projected number of infections with this disease owing to infection spread, as well as the number of infections after recovery, which greatly aids in the health and economic management of this disease.

2.3. Shifted Vieta-Lucas Polynomials

In this subsection, we’re looking for a class of orthogonal polynomials which will be used to create a set of orthogonal polynomials called Vieta-Lucas polynomials on the interval [ 2 , 2 ] by using their recurrence relations and its analytical formula. The Vieta-Lucas polynomials; VL m ( z ) of degree m N 0 is defined by [31]:
VL m ( z ) = 2 cos ( m arccos 0.5 z ) , 2 z 2 .
Using the transformation z = 4 t 2 , we can generate a new class of orthogonal polynomials on the interval [ 0 , 1 ] , which are the shifted Vieta-Lucas polynomials (SVLPs), and it will be denoted by VL m s ( t ) and can be obtained as follows:
VL m s ( t ) = VL m ( 4 t 2 ) .
It easy to see that   VL 0 ( t ) = 2 , VL 1 ( t ) = 4 t 2 . Also, we find VL m s ( 0 ) = 2 ( 1 ) m and VL m s ( 1 ) = 2 , m = 0 , 1 , 2 , .
Let v ( t ) L 2 [ 0 , 1 ] , then v ( t ) can be written in terms of  VL m s ( t ) as follows:
v ( t ) = j = 0 κ j VL j ( t ) ,
where κ j are constants. By considering first the  m + 1 terms only of Equation (10), then
v m ( t ) = j = 0 m κ j VL j ( t ) ,
where the coefficients κ j , j = 0 , 2 , , m can be estimated with the help of the orthogonal property of the SVLPs.

3. An Approximate of the LC-Derivative and the Convergence Analysis

This section will offer an approximate fractional derivative formula using SVLPs, as well as a convergence analysis using the proposed approximation’s error estimate.
Theorem 6.
The LC-fractional-order derivative can be approximated as [26]:
D ν v m ( t ) = j = ν m s = 0 j ν κ j χ j , s ( ν ) t j s ν ,
where
χ j , s ( ν ) = ( 1 ) s 4 j s ( 2 j ) Γ ( 2 j s ) Γ ( j s + 1 ) Γ ( s + 1 ) Γ ( 2 j 2 s + 1 ) Γ ( j s + 1 ν ) .
Theorem 7.
Assume that v ( t ) L 2 [ 0 , 1 ] concerning the weight function in the orthogonality relation of  VL m s ( t ) on  [ 0 , 1 ] ; w ( t ) = 1 t t 2 , and assume v ( t ) < . Then v ( t ) can be approximated by v m ( t ) and written as a linear combination of  m + 1 terms only of  VL m s ( t ) , as in Equation (11). Also, this series converges uniformly to the function v ( t ) as  m , and its coefficients are bounded, i.e.
κ j 4 j j 2 1 , j > 2 .
In addition, in the case, v ( t ) is an m-times continuously differentiable on  [ 0 , 1 ] , then the norm of the error ( L w 2 [ 0 , 1 ] -norm), and the absolute error bound are estimated by the following, respectively:
v ( t ) v m ( t ) w < 12 m 3 .
v ( t ) v m ( t ) Δ Ω m + 1 ( m + 1 ) ! π ,
where
Δ = max t [ 0 , 1 ] v ( m + 1 ) ( t ) , and Ω = max 1 t 0 , t 0 .

4. Numerical Studies

4.1. Implementation of the Proposed Method

We will use the spectral collocation approach, which is based on the summation of SVLPs, to convert the system of ODEs that describes the proposed model (6) into an algebraic equations system The unknown coefficients in the sequence of solutions are obtained by optimizing this system as a restricted optimization problem. The VLSCOM is the name given to the coupling of two well-known approaches. The following steps will be used as algorithm to solve the given problem (6) numerically using this technique:
  • The solution for the problem (6) can be expressed and approximated as a finite series of SVLPs, namely,
    S m ( t ) = j = 0 m a j VL j ( t ) , E m ( t ) = j = 0 m b j VL j ( t ) , I m ( t ) = j = 0 m c j VL j ( t ) , Q m ( t ) = j = 0 m d j VL j ( t ) , R m ( t ) = j = 0 m e j VL j ( t ) .
  • We substitute from (13) and (12) in (6) to obtain:
    j = ν m s = 0 j ν a j χ j , s ( ν ) t j s ν = ϵ ϕ + γ 1 j = 0 m c j VL j ( t ) + γ 2 j = 0 m b j VL j ( t ) j = 0 m a j VL j ( t ) ,
    j = ν m s = 0 j ν b j χ j , s ( ν ) t j s ν = γ 1 j = 0 m c j VL j ( t ) + γ 2 j = 0 m b j VL j ( t ) j = 0 m a j VL j ( t ) q 1 + ω + α + ϕ j = 0 m b j VL j ( t ) ,
    j = ν m s = 0 j ν c j χ j , s ( ν ) t j s ν = α j = 0 m b j VL j ( t ) θ + ϕ + ρ 1 j = 0 m c j VL j ( t ) ,
    j = ν m s = 0 j ν d j χ j , s ( ν ) t j s ν = q 1 j = 0 m b j VL j ( t ) Λ + ϕ + ρ 2 j = 0 m d j VL j ( t ) ,
    j = ν m s = 0 j ν e j χ j , s ( ν ) t j s ν = ω j = 0 m b j VL j ( t ) + θ j = 0 m c j VL j ( t ) + Λ j = 0 m d j VL j ( t ) ϕ j = 0 m e j VL j ( t ) .
  • The corresponding initial conditions of the model (6) can be approximated as follows:
    j = 0 m 2 ( 1 ) j a j = S 0 , j = 0 m 2 ( 1 ) j b j = E 0 , j = 0 m 2 ( 1 ) j c j = I 0 , j = 0 m 2 ( 1 ) j d j = Q 0 , j = 0 m 2 ( 1 ) j e j = R 0 .
  • Then, (14)–(19) will be collocated at  m + 1 of nodes at  t k , k = 0 , 1 , 2 , , m to obtain a nonlinear system of  5 ( m + 1 ) algebraic equations.
  • The problem defined by (14)–(19) is expressed as a restricted optimization problem with the cost functions (CFs) as follows:
    C F 1 = k = 0 n | j = ν m s = 0 j ν a j χ j , s ( ν ) t k j s ν ϵ + ϕ + γ 1 j = 0 m c j VL j ( t k ) + γ 2 j = 0 m b j VL j ( t k ) j = 0 m a j VL j ( t k ) | ,
    C F 2 = k = 0 n | j = ν m s = 0 j ν b j χ j , s ( ν ) t k j s ν γ 1 j = 0 m c j VL j ( t k ) + γ 2 j = 0 m b j VL j ( t k ) . j = 0 m a j VL j ( t k ) + q 1 + ω + α + ϕ j = 0 m b j VL j ( t k ) | ,
    C F 3 = k = 0 n | j = ν m s = 0 j ν c j χ j , s ( ν ) t k j s ν α j = 0 m b j VL j ( t k ) + θ + ϕ + ρ 1 j = 0 m c j VL j ( t k ) | ,
    C F 4 = k = 0 n | j = ν m s = 0 j ν d j χ j , s ( ν ) t k j s ν q 1 j = 0 m b j VL j ( t k ) + Λ + ϕ + ρ 2 j = 0 m d j VL j ( t k ) | ,
    C F 5 = k = 0 n | j = ν m s = 0 j ν e j χ j , s ( ν ) t k j s ν ω j = 0 m b j VL j ( t k ) θ j = 0 m c j VL j ( t k ) Λ j = 0 m d j VL j ( t k ) + ϕ j = 0 m e j VL j ( t k ) | ,
    and the constraints (Cons)
    Cons = | j = 0 m 2 ( 1 ) j a j S 0 | + | j = 0 m 2 ( 1 ) j b j E 0 | + | j = 0 m 2 ( 1 ) j c j I 0 | + | j = 0 m 2 ( 1 ) j d j Q 0 | + | j = 0 m 2 ( 1 ) j e j R 0 | .
  • For the unknowns a j , b j , c j , d j , e j , j = 0 , 1 , 2 , , m , we apply the Penalty Leap Frog approach [42] to solve the restricted optimization problem (20)–(25). Then, using the formula, we may construct an approximation solution (13).
The approach for the approximate solution is now summarized using the Algorithm 1.
Algorithm 1:
  • Expand in terms of VL m s ( t ) on the solution as a linear combination.
  • Substitute this expansion and the presented approximate formula of the LC-derivatives to convert the given problem to a system of nonlinear algebraic equations.
  • Collocate such a system by using appropriate collocation points.
  • Express the resulting system as a cost-function-constrained optimization problem.
  • Get the required coefficients by solving the resulting solution using the Penalty Leap Frog approach, and then get the approximate solution.

4.2. Implementation of the Fractional FDM

First, for system (6), we consider:
D ν S n ( t ) = ϵ γ 1 I n ( t ) + γ 2 E n ( t ) S n ( t ) ϕ S n ( t ) , D ν E n ( t ) = γ 1 I n ( t ) + γ 2 E n ( t ) S n ( t ) q 1 + ω + α + ϕ E n ( t ) , D ν I n ( t ) = α E n ( t ) θ + ϕ + ρ 1 I n ( t ) , D ν Q n ( t ) = q 1 E n ( t ) Λ + ϕ + ρ 2 Q n ( t ) , D ν R n ( t ) = ω E n ( t ) + θ I n ( t ) + Λ Q n ( t ) ϕ R n ( t ) .
Second, we use t n = n h , where n = 0 , 1 , , M , M h = T and the abbreviations S n , E n , I n , Q n , and R n , for approximation of the true solutions S ( t n ) , E ( t n ) , I ( t n ) , Q ( t n ) , and R ( t n ) , in the grid point t n .
By applying the Equations (5)–(26), we obtain:
1 h α i = 0 n + 1 ( 1 ) i ψ i α S n + 1 i ( n h ) α Γ ( 1 α ) S 0 = ϵ γ 1 I n ( t ) + γ 2 E n ( t ) S n ( t ) ϕ S n ( t ) ,
1 h α i = 0 n + 1 ( 1 ) i ψ i α E n + 1 i ( n h ) α Γ ( 1 α ) E 0 = γ 1 I n ( t ) + γ 2 E n ( t ) S n ( t ) q 1 + ω + α + ϕ E n ( t ) ,
1 h α i = 0 n + 1 ( 1 ) i ψ i α I n + 1 i ( n h ) α Γ ( 1 α ) I 0 = α E n ( t ) θ + ϕ + ρ 1 I n ( t ) ,
1 h α i = 0 n + 1 ( 1 ) i ψ i α Q n + 1 i ( n h ) α Γ ( 1 α ) Q 0 = q 1 E n ( t ) Λ + ϕ + ρ 2 Q n ( t ) ,
1 h α i = 0 n + 1 ( 1 ) i ψ i α R n + 1 i ( n h ) α Γ ( 1 α ) R 0 = ω E n ( t ) + θ I n ( t ) + Λ Q n ( t ) ϕ R n ( t ) ,
where ψ i α = α i .

5. Numerical Simulation

In this part of the work, we will present some numerical simulations for the studied model (6) with distinct values of ϵ , γ 1 , γ 2 , ϕ , q 1 , ω , ρ 1 , ρ 2 , α , θ , Λ , and the initial conditions S 0 , E 0 , I 0 , Q 0 , R 0 . The numerical simulation for the analyzed model using the proposed technique is shown in Figure 2, Figure 3, Figure 4, Figure 5, Figure 6 and Figure 7 as following:
  • Figure 2 depicts the behavior of the approximate solution for various values of ν = 1.0 , 0.9 , 0.85 ; in ( 0 , 40 ) and m = 6 , with S 0 = 0.5 , E 0 = 0.2 , I 0 = Q 0 = R 0 = 0.1 , and the parameters ϵ = 0.5 , γ 1 = 1.05 , γ 2 = 0.005 , ϕ = 0.5 , q 1 = 0.001 , ω = 0.00398 , ρ 1 = 0.0047876 , ρ 2 = 0.000001231 , α = 0.085432 , θ = 0.09871 , Λ = 0.1243 . Where in this case, R 0 = 0.130112 < 1 , and we can also see that the disease-free equilibrium point ξ 0 is locally asymptotically stable, according to Theorem 3.
    Because the recovered population expands substantially, we can see and confirm that the majority of the population will recover from the COVID-19 dynamics in this image (see Figure 7e). In addition, as shown in Figure 7b–d, we can see and confirm that the number of infected and exposed people has decreased considerably. This suggests that the majority of the population will be recovered, resulting in a reduction in COVID-19-related mortality. We can check that the disease’s expected behavior has occurred, presenting a clear replication of the model. Also, knowing the behavior of all the components (stats) of the model with varied values of the derivatives, not just with ν = 1 , is essential for a solid physical interpretation of these numerical results.
  • With the initial conditions S 0 = 0.6 , E 0 = 0.5 , I 0 = 0.4 , Q 0 = 0.3 , R 0 = 0.2 , and parameters as in Figure 2, we show the behavior of the approximate solution using different values of the approximation-order m = 5 (Figure 3a) and m = 7 (Figure 3b) in the interval ( 0 , 40 ) and ν = 0.9 in Figure 3.
  • Figure 4 shows the behavior of the approximate solution with different initial conditions with m = 6 , α = 0.95 in the range ( 0 , 40 ) and the parameters ϵ = 0.5 , γ 1 = 1.05 , γ 2 = 0.005 , ϕ = 0.5 , q 1 = 0.001 , ω = 0.00398 , ρ 1 = 0.0047876 , ρ 2 = 0.000001231 , α = 0.085432 , θ = 0.09871 , Λ = 0.1243 ; where S ( t ) , E ( t ) , I ( t ) , Q ( t ) , R ( t ) are presented in Figure 4a–e, respectively. In this special case, we take the following different cases:
    i.
    S 0 = 0.5 , E 0 = 0.2 , I 0 = Q 0 = R 0 = 0.1 ;
    ii.
    S 0 = 0.6 , E 0 = 0.3 , I 0 = Q 0 = R 0 = 0.2 ;
    iii.
    S 0 = 0.7 , E 0 = 0.4 , I 0 = Q 0 = R 0 = 0.3 .
    In all these cases, we note that R 0 < 1 .
  • The behavior of the approximate solution via distinct values of q 1 with m = 5 , ν = 0.98 , S 0 = 0.5 , E 0 = 0.2 , I 0 = Q 0 = R 0 = 0.1 in the interval ( 0 , 40 ) is presented in Figure 5, and in this case, we take the following cases:
    (1)
    q 1 = 0.1 , R 0 = 0.11143 ;
    (2)
    q 1 = 0.5 , R 0 = 0.070515 ;
    (3)
    q 1 = 0.9 , R 0 = 0.051577 .
  • Furthermore, Figure 6 introduces the residual error function (REF) with m = 7 , ν = 0.96 , and the same conditions and parameters as Figure 2.
  • Finally, for ν = 0.95 and h = 0.05 , we showed a comparison between the numerical solution generated by the VLSCOM and the fractional FDM in Figure 7. With the same parameters as in Figure 4, and the same initial conditions as in Figure 4, S 0 = 0.5 , E 0 = 0.2 , I 0 = Q 0 = R 0 = 0.1 . We can see from this diagram that the theoretical results on stability acquired in the preceding section are correct.
    The behavior of the numerical solution is dependent on the values of ν , m, the initial conditions, and the included parameters ϵ , γ 1 , γ 2 , ϕ , q 1 , ω , ρ 1 , ρ 2 , α , θ , Λ as shown in Figure 2, Figure 3, Figure 4, Figure 5 and Figure 6 and this demonstrates that the proposed method is well-implemented for tackling the proposed fractional derivatives problem.
Based on the results, we can see that people’s susceptibility will decrease at constant rates as they come in contact with exposed or infected individuals, leading to a greater number of exposed individuals. As individuals exposed to COVID-19 become infected, decreases and increases. Likewise, as a percentage of recovered individuals die due to natural causes, the number of exposed, infected, and quarantined individuals declines. Furthermore, the number of individuals quarantined in relation to the total number of individuals exposed increases and decreases.

6. Conclusions

The properties of the SVLPs were applied with the SCM to reduce the studied model for the fractional COVID-19 to the solution for a nonlinear system of algebraic equations. The unknown coefficients can be obtained by constructing and solving the resulting system as a restricted optimization problem. The analysis of the convergence of the approximation solution, and the upper bound of the error are stated. The investigated problem’s answers show that the offered technique is quite suitable for studying this topic efficiently. We can also confirm that adding extra terms from the approximate solution’s series reduces the mistakes. Finally, numerical solutions with various values of the included parameters and variables, as well as the REF, are computed to ensure that the suggested technique is valid for such models. Mathematica was used to obtain all numerical results.
We can deduce the following from the numerical simulation presented:
  • The proposed method is more reliable and efficient.
  • The capacity to obtain accurate results by applying a minimal number of series solution terms.
  • This method has various advantages for dealing with problems like this, where the coefficients may be discovered using the Penalty Leap Frog method, and then the approximate solution can be obtained.
Furthermore, we can suggest that by raising public knowledge and encouraging people to follow the government’s instructions, the number of people who are vulnerable to infection is reduced and the number of people who are infected is increased, which helps to lower the severity of infection. Finally, because most numerical methods have restrictions, the fractional FDM has some shortcomings because we can’t assess the solution at any place but the nodes of the provided domain, and it isn’t unconditionally stable. We intend to complete certain future projects, such as:
  • Using several techniques to solve the same model;
  • Optimal control of the solutions that result;
  • Theoretical research to describe the COVID-19 model in depth;
  • Change the fractional derivative’s sense to variable-order, for example.

Author Contributions

Data curation, M.M.K.; Formal analysis, M.A. and M.M.K.; Methodology, M.M.K. and M.M.K.; Project administration, M.M.K.; Resources, M.A.; Software, M.M.K.; Writing-original draft, M.M.K. and M.A.; Writing review and editing, M.M.K. and M.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by the Deanship of Scientific Research, Imam Mohammad Ibn Saud Islamic University (IMSIU), Saudi Arabia, Grant No. (21-13-18-071).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

All data and material are available for everyone.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
COVID-19Coronavirus Disease 2019
VLSCOMVieta-Lucas spectral collocation-optimization method
SVLPsshifted Vieta-Lucas polynomials
FDMfinite difference method
FDEfractional differential equation
DFEdisease-free equilibrium

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Figure 1. Flowchart depicting the kinetics of COVID-19 propagation in an SEIQR model.
Figure 1. Flowchart depicting the kinetics of COVID-19 propagation in an SEIQR model.
Fractalfract 06 00363 g001
Figure 2. Behavior of the approximate solution via different values of ν .
Figure 2. Behavior of the approximate solution via different values of ν .
Fractalfract 06 00363 g002
Figure 3. Behavior of the approximate solution via different values of m.
Figure 3. Behavior of the approximate solution via different values of m.
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Figure 4. Behavior of the approximate solution via different values of initial values.
Figure 4. Behavior of the approximate solution via different values of initial values.
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Figure 5. Behaviorof the approximate solution via different values of q 1 .
Figure 5. Behaviorof the approximate solution via different values of q 1 .
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Figure 6. The REF of the solutions with ν = 0.96 .
Figure 6. The REF of the solutions with ν = 0.96 .
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Figure 7. Comparison the solution obtained by VLSCOM and FDM at ν = 0.96 .
Figure 7. Comparison the solution obtained by VLSCOM and FDM at ν = 0.96 .
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Table 1. Fitted and estimated parameter values [41] for (6).
Table 1. Fitted and estimated parameter values [41] for (6).
ParameterValueSource
ϵ 0.5Estimated
q 1 0.001Fitted
ω 0.00398Fitted
α 0.085432Fitted
ϕ 0.5Estimated
θ 0.09871Fitted
ρ 1 0.0047876Fitted
ρ 2 0.000001231Fitted
Λ 0.1243Fitted
γ 1 1.05Fitted
γ 2 0.005 ξ 0 Fitted
1.05 ξ 1 Fitted
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Khader, M.M.; Adel, M. Modeling and Numerical Simulation for Covering the Fractional COVID-19 Model Using Spectral Collocation-Optimization Algorithm. Fractal Fract. 2022, 6, 363. https://doi.org/10.3390/fractalfract6070363

AMA Style

Khader MM, Adel M. Modeling and Numerical Simulation for Covering the Fractional COVID-19 Model Using Spectral Collocation-Optimization Algorithm. Fractal and Fractional. 2022; 6(7):363. https://doi.org/10.3390/fractalfract6070363

Chicago/Turabian Style

Khader, Mohamed M., and Mohamed Adel. 2022. "Modeling and Numerical Simulation for Covering the Fractional COVID-19 Model Using Spectral Collocation-Optimization Algorithm" Fractal and Fractional 6, no. 7: 363. https://doi.org/10.3390/fractalfract6070363

APA Style

Khader, M. M., & Adel, M. (2022). Modeling and Numerical Simulation for Covering the Fractional COVID-19 Model Using Spectral Collocation-Optimization Algorithm. Fractal and Fractional, 6(7), 363. https://doi.org/10.3390/fractalfract6070363

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