1.
Introduction
Human immunodeficiency virus (HIV) is a virus that affects cells that render a person more susceptible to other infections and diseases and helps the body fighting infection. A retrovirus that causes AIDS is the HIV [1]. HIV infects, destroys, and decreases CD4+ T cells, thereby reducing immune system defense [2]. The body gets much highly responsive towards infections and steadily loses its defense. One of today's most severe and fatal diseases is AIDS. In 2019, 38 million individuals worldwide were living with HIV, 1.7 million people got newly infected with HIV, and 690 thousand people died from AIDS-related diseases, as per UNAIDS 2020 annual assessment. No vaccine for HIV has ever been found, despite significant success in handling the disease. Much effort has been made by researchers over the last two decades to develop mathematical models that have a significant rule in studying HIV-related disease control and prevention. The relationship between HIV viruses and uninfected CD4+ cells and the impact of drug treatment on infected cells has usually described by most of these mathematical models. The simplest model is
This model is influenced by Anderson's model and many other models [3,4]. An updated model of Eq (1.1) has introduced by Tuckwell and Wan [5] with three categories: Uninfected cells x, infected CD4+ T-cells y, and plasma virion density z. The proposed ODE-based model with three components is given by:
subject to the I.Cs x(0)= k1, y(0)= k2, and z(0)=k3. The description of the parameters are given in Table 1. When drug treatment is not 100 percent effective, the rate of certain coefficients can vary. Infected cells that produce components of the virus are infected when the drug therapy starts. A part of the infected cells will improve if drug treatment is not successful, and the leftover cells will start developing a virus.
Differential equations in fractional order appear as mathematical modelling in biology and other areas of science. Because the DEs of the variable order save memory and has connected to fractals [16,17]. The field of fractional calculus has earned interest among researchers during the last few decades. It is because fractional calculus can more effectively describe the persistence and inherited features of different components and procedures than ODE based models [6,7]. Various operators have been introduced in fractional calculus concerned with different kernels. In recent decades, mathematicians have investigated the fractional operators from various point of view [8,9]. Fractional operators have been used for modelling various infectious diseases. Shaikh et al. used fractional operator to study dynamical behaviour HIV/AIDS model [10]. Rahman et al. investigated time fractional Φ4 equation under different fractional operators [11]. Various dynamical systems in economics field have also been studied through fractional calculus. For instance, in [12], the authors have investigated reliability index and option pricing formulas of the first-hitting time model based on the uncertain fractional-order differential equation with Caputo type. Many applications of the fractional calculus can be found in the literature. Different analytical and numerical methods have been used for solving nonlinear fractional DEs [13,14,15]. Most of the physical processes are modelled by nonlinear fractional order DEs. Solving nonlinear fractional DEs by analytical methods are very difficult. Therefore, researchers developed many numerical methods to solve fractional DEs numerically. Traditional fractional derivatives, on the other hand, possess a singular kernel that often creates problems with describing some properties. To resolve this, a new definition of fractional integral and derivative has introduced by Caputo and Fabrizio that includes an exponential kernel rather than a singular kernel [18]. Much consideration was also paid to these operators and proved to be better at adopting several real-world problems for mathematical models [19,20,21]. Saifullah et al. investigated Klein-Gordon Equation under nonsingular operators [23]. Ahmad et al. studied the Ambartsumian equation under the Caputo-Fabrizio fractional operator [24]. Moore et al. used the Caputo-Fabrizio fractional derivative to analyze the transmission of HIV disease [25]. Due to the success of this operator, we generalize the model (1.2) as follows
In this paper, we explore an existence theory for the system (1.3) using a fixed point theory to ensure that the proposed model has at least one solution. Also, we utilize Euler method to derive the general procedure of solution to the model (1.3) under the CF derivative. In the literature, the study of oscillatory and chaotic dynamics of the considered model was missing. The most important is: We present the oscillatory and chaotic behaviour of the HIV1 infection for different fractional operator.
2.
Preliminaries
Here we give definitions of CF fractional operators and formula of Laplace transform of CF derivative. Let FI represent the fractional integral.
Definition 2.1. [18] If V(t)∈H1[0,T],T>0,γ∈(0,1], then the CF derivative of V(t) is defined as:
where K(t,χ)=exp[−γt−χ1−γ] and M(γ) represent normalization function such that M(1)=M(0)=1.
Definition 2.2. [19] The FI of V(t) in CF sense is given by:
Definition 2.3 [22] For M(γ)=1, the Laplace transform of [CFDγt[V(t)]] is:
One can be obtain the following results for h=0,1 respectively
3.
Main work
Here, Picard-Lindelof and fixed-point theory have addressed the existence of a unique solution to the proposed model. Also, the stability of the suggested model has proven by using the Picard iteration and fixed point theory. The model's general solution is constructed through Adams-Bashforth method.
3.1. Existence and uniqueness results
Consider the right hand sides of (1.2) as
So the system (1.3) gets the form
let
with
Assume a uniform norm on C[d,bn] as:
Applying CFIγt to (3.1), one can achieve
Define the Picard operator Φ:C(G,G1,G2,G3)→C(G,G1,G2,G3) as
where
Assume that the proposed model obeys:
Let Δ=max{Δ1,Δ2,Δ3} and there exits t0=max{t∈D} so that t0≥t, one get
where d=1+γt0M(γ), and satisfies d<d′Δ. Also to evaluate the following equality
Using definition of Picard operator, we proceed as
with ϑ<1. For Φ to fulfill contraction condition we must have dϑ<1. Thus the Picard operator Φ obeys the contraction condition. Therefore, the proposed model posses a unique solution.
3.2. Stability of the proposed model
Here, we will demonstrate the Picard type stability by using fixed point theory. Applying CFIγt on (1.3), we obtain
Let x0(t)=k1,y0(t)=k2 and z0(t)=k3; then the Picard iteration is defined as:
Definition 3.1. [26] Let (B,‖.‖) represents a Banach space and Φ be a self mapping of B with the inequality:
∀ x,y∈B,where L≥0 and 0≤l≤1. Then Φ is Picard Φ-stable.
Now, let us consider the recursive formula for the proposed model (1.3) as:
Theorem 3.2. If Φ be a self mapping such that
Then the iteration (3.9) is Φ-stable if
Proof. First, we need to show that Φ has a fixed point. For this, we compute Φ(xi(t))−Φ(xj(t)) for all (i,j)∈N×N as follows:
Now, applying norm to Eq (3.2), one can obtain
Due to the same role of both solutions, we assume that
From Eqs (3.14) and (3.15), we get
Since xi,xj, zi and zj are convergent sequences, there exists constants C1,C2, C3 and C4 for all t such that
Thus, Eq (3.14) becomes
Similarly, we have
where Υm for m=1,2,⋯,6, are functions obtained from L−1[s+γ(1−s)sL[∗]]. Now under the condition
The operator Φ fulfills the condition of contraction mapping, so the operator Φ must have a fixed point. Now, we prove that Φ fulfills the theorem (1) conditions. To do so, we assume that
Then all conditions of theorem (1) are satisfied. Hence, Φ is the Picard Φ-stable.
4.
Numerical method
Here we solve the considered model numerically using three step Adam-Bashforth technique. For the sake of convenience we consider the model (1.3) as
where Λ=(x,y,z)∈R3+, Λ0=(x0,y0,z0) are the initial values. Using the definition of CF derivative the above Eq (4.1) becomes
Now, Eq (4.2) implies that
so that
also we have
on subtraction of Eq (4.4) from Eq (4.5), we obtain
in previous equation, the integral ∫tn+1tnΞ(t,Λ(t))dt is given by
Thus,
Equation (4.8) implies that
Hence we have,
which is the required obtained numerical solution using three step ABM scheme. In Eq (4.10), we have
where P=maxχ∈[0,t]||Ξ4(χ)||∞.
5.
Numerical simulations and discussion
Now, we use the stated numerical scheme as presented in the previous section to get the approximate solutions of the considered system as proposed in the current investigation using the fractional Caputo-Fabrizio operator.
We take I.Cs as (100, 0, 1) for the simulation in Figures 1–3. In this section, we have presented the three compartments of the proposed model graphically via Matlab at fractional-order γ=0.85,0.9,0.95,1. From the figures, we conclude that when the uninfected cells x(t) going on decreasing, then the infected CD4+ T-cells y(t) and plasma virion density z(t) is going to increase. Also, we see that smaller the fractional-order, faster the decay and growth process, and when the fractional order tends to 1, the fractional-order curve goes to the integer-order curve. Figures 4–5 represent the complex behaviour of the proposed model. We have used the following parameters values for studying oscillatory and chaotic behaviour
The oscillatory and chaos behaviour is presented in the Figures 4 and 5, respectively. Thus fractional-order model extends the model defined by integer order operator. So from the above discussion, we reach to decide that mathematical modelling of real phenomena under Caputo-Fabrizio derivative is better for modelling the infectious diseases.
6.
Conclusions
In this paper, we looked at the Caputo-Fabrizio fractional model of HIV-1 infection and how antiviral medication therapy affected it. The existence theory of the suggested model was built using a fixed point technique. We have presented the Picard stability of the suggested model through fixed point theory. In order to obtain the necessary numerical scheme for the model considered under CF operator, we have used Adams-Bashforth numerical method. We have depicted the results graphically to study the dynamics of the different classes for various fractional orders. Through graphical representation, we have presented the complex behavior of the model for different fractional orders. In the last, we have studied the limit cycle oscillations and chaos behavior of different compartments of the suggested model. In future, one can study the HIV model with control strategies under generalized operators.
Conflict of interest
The authors declare that there are no conflicts of interest.