Novel Computations of the Time-Fractional Fisher’s Model via Generalized Fractional Integral Operators by Means of the Elzaki Transform

: The present investigation dealing with a hybrid technique coupled with a new iterative transform method, namely the iterative Elzaki transform method (IETM), is employed to solve the nonlinear fractional Fisher’s model. Fisher’s equation is a precise mathematical result that arose in population dynamics and genetics, speciﬁcally in chemistry. The Caputo and Antagana-Baleanu fractional derivatives in the Caputo sense are used to test the intricacies of this mechanism numerically. In order to examine the approximate ﬁndings of fractional-order Fisher’s type equations, the IETM solutions are obtained in series representation. Moreover, the stability of the approach was demonstrated using ﬁxed point theory. Several illustrative cases are described that strongly agree with the precise solutions. Moreover, tables and graphs are included in order to conceptualize the inﬂuence of the fractional order and on the previous ﬁndings. The projected technique illustrates that only a few terms are sufﬁcient for ﬁnding an approximate outcome, which is computationally appealing and accurate to analyze. Additionally, the offered procedure is highly robust, explicit, and viable for nonlinear fractional PDEs, but it could be generalized to other complex physical phenomena.


Introduction
Researchers from various domains have been interested in fractional differential equations (FDEs) due to their wide applicability, and they are considered to be a handy tool for simulating the behaviour of several complex processes that have ramifications in specified disciplines of the physical sciences. Interestingly, it has boosted tremendous applications in autocatalytic reactions, anomalous diffusion process, viscoelastic damping, Maxwell fluid, virology, advection-diffusion process, thermal sciences, kinetics, optics, hydrodynamics, and epidemic diseases; different fractional calculus formulations are where ζ, σ, θ are parameters and 0 < α ≤ 1. (1) plays a vital role in fluid dynamics models, heat conduction, elasticity, and capillary-gravity waves. When ζ = 0 and β = 1 (1) are transformed into a Fisher's type equation, the derivative in (1) is a Caputo/AB-fractional derivative of order α. Specifically, if ζ = 0 and σ = θ = 1, the generalized time-fractional Fisher's biological population diffusion equation [18] is presented as follows: where f(x 1 ,t) refers the population density andt > 0, x 1 ∈ R, and F (f) is a continuous nonlinear function fulfilling the following hypothesis: F (0) = F (1) = 0, and F (1) < 0 < F (0). Equation (1) transformed into the logistic equation if α = 1, ζ = 0 and the confluence of the diffusion equation has the diffusion factor σ and the birth rate θ. The coordinates (x 1 ,t) specified by f(x 1 ,t) provide the state evolution across the spatial-temporal domain. Fisher's equation is used in many fields, including chemical kinetics [21], Neolithic transitions [22], branching Brownian motion [23], epidemics and bacteria [24], and many others. Wazwaz and Gorguis [11] used the ADM to solve Fisher's equation and demonstrated their convergence. Dag et al. [25] contemplated the B-spline Galerkin method for Fisher's equation. Bastani and Salkuyeh [26] adopted the compact finite difference approach in association with the third-order Runge-Kutta method to obtain Fisher's equation. For further investigations into linear and nonlinear Fisher's equations, see [27,28].
In 2001, Elzaki [29] expounded a new transform in order to facilitate the process of solving ODEs and PDEs in the time domain. This novel transform is the generalization of existing transforms (Laplace and Sumudu) that can contribute to in an analogous way to the Laplace and Sumudu transformations in order to determine the analytical solutions to the PDEs.
In [30], Daftardar-Gejji and Jafari suggested a new iterative approach (NITM) for solving functional equations, with the results reported in series form. Decomposing the nonlinear terms constitutes the foundation for the formulation of an iterative technique. Jafari et al. [16], first coupled the Laplace transform in the NITM and then they generated a novel recursive approach, namely ILTM, for obtaining the numerical consequences of FPDEs. Later, this approach has been correlated with different transformations (e.g., Sumudu transform, Aboodh transform, Elzaki transform, and Mohand transform) (see [31][32][33][34]). This methodology is incredibly pragmatic, and it does not entail the inclusion of an unconditioned matrix, convoluted integrals, or infinite series expressions. This approach avoids the demand for any explicit problematic configurations. NITM has been employed to solve PDEs in multiple investigations, including the KdV equation [35], Fornberg-Whitham equation [36], and Klein-Gordon equations [37].
Considering the substantial literature on fractional PDE frameworks, determining the analytical results of the underlying PDE is not an inexpensive procedure. In this perspective, we intend to design an appropriate technique for evaluating the numerical solution to Fisher's, the generic Fisher equation, and nonlinear diffusion equations of the Fisher type that depict the complexities of the mechanism under consideration by utilizing NITM. The Elzaki transform (ET) is merged with the NITM, and the proactive concept is said to be the iterative Elzaki transform method (IETM). This novel method is applied to examining fractional-order Fisher's models. In order to illustrate the capability of the recommended methodology, the findings of certain experimental examples were analysed. New strategies are applied to establish the results of the fractional-order and closed form results. An evaluation of IETM's convergence and uniqueness is also supplied. We test the superiority and practicality of the described algorithmic strategies for generating the analytical results in a numerical simulation leveraging fabricated trajectories inferred from Fisher's model. Additionally, other fractional-orders of linear and non-linear PDEs can be handled by the expounded approach.

Preliminaries
In this section, we will discus some basic preliminaries, definitions, and fractional frameworks of derivatives with power-law and Mittag-Leffler functions in their kernels, as well as the ET and fractional integrals.

Definition 3 ([2]
). The fractional integral of the ABC-operator is stated as follows. ABC Definition 4 ([29]). A set M containing exponential mapping is presented as follows: where z is a finite number, but p 1 , p 2 may be finite or infinite.
Definition 5 ([29,35]). The ET of a given mapping f(t) is stated as follows.
Definition 6 ( [36]). The Elzaki transform of the CFD is presented as follows.

Application of Caputo-Liouville and ABC Fractional Derivatives to the Non-Linear Fisher's Model
In this note, we analyze time fractional Caputo-Liouville and the ABC fractional derivative operator in order to analyze the non-linear Fisher's equation [18]. The model under consideration is presented as follows: which is subject to the following condition.

Description of IETM
Assume the following nonlinear fractional PDE: (12) subject to the initial condition where ⊗ D ᾱ t = ∂ α f(x 1 ,t) ∂t α denotes the Caputo or ABC fractional derivative operator with 0 < α ≤ 1, whileL andÑ are linear and nonlinear terms, and F (x 1 ,t) indicates the source term.
By employing the Elzaki transform to (12), we acquire the following.
By the virtue of the Elzaki differentiation property for the Caputo fractional derivative operator defined in (6), we have the following. 1 Again, in view of the Elzaki differentiation property for the ABC fractional derivative operator defined in (7), we have the following.
Now, by applying the inverse Elzaki transform to (14) and (15), respectively, we have the following: and The iterative process in terms of power series is prescribed as follows.
Moreover, the linear factor can be stated as the following.
Furthermore, the nonlinear operatorÑ can be decomposed [30] as follows: where D m =Ñ Substituting (18)- (20) into (16) and (17), respectively, we will obtain the following equations: and We mention the following iterative scheme for the Caputo fractional derivative operator as follows.
Analogously, the iterative scheme for the ABC fractional derivative operator is presented as follows.
Finally, (12) and (13) yield the m 1 -terms solution in series forms as follows.

Stability Analysis
Let there be a Banach space (Y, . ) and V be a self-map of Y. Let x m+1 = h(V, x m ) be a specific iterative scheme. Moreover, let F(V ), the fixed-point of V, possess at least one element and that x n tends to a point q ∈ F(V ). Consider a sequence {y m } such that {y m } ⊆ Y and m = y m+1 − h(V, y m ) . If lim m →∞ m = 0 implies that lim m →∞ y m = q, then we say that the iterative process x m+1 = h(H, x n ) is V-stable. Without any loss of generality, we surmise that {y m } is upper bounded; otherwise convergence cannot be expected. If all hypotheses fulfilled for x m+1 = V x m , which is known as Picard's iteration, are satisfied, consequently, the iteration will be V-stable. The following theorem will be presented next.

Theorem 1 ([38]
). Consider a Banach space (Y, . ) and V a self-map of Y holding the following: Consider the following sequence, which represents the nonlinear fractional Fisher's model as follows: is the fractional Langrange multiplier andf β m is a limited variant that denotes δf β m = 0.

Theorem 2.
ConsiderT as a self-map stated as follows: Proof. First, we illustrate thatT has a fixed point. In order to accomplish this, we examined the following for all (m, κ) ∈ N × N. .
Employing the linearity property of the inverse Elzaki transform yields the following.
Utilizing triangular inequality for the norms, we have the following.
Equation (29) can be examined on a case-by-case basis, beginning with the following. σ The following results.
Since f m (x 1 ,t), f κ (x 1 ,t) are bounded, there are two different positive constants that we can obtain K, H such that for all (x 1 ,t), we have the following.
As a result of combining the triangular inequality with the above inequalities, (31) is obtained as follows.
Now, by combining (31) and (33) into (34), we obtain the following result: with the following.
This establishes the existence of a fixed point for the nonlinearT-self map. As a consequence, the proof is complete. We also proved thatT fulfills the requirements of Theorem 1. Allow (7) to hold by inserting the following.
This proves that hypothesis of Theorem 1 fulfills the nonlinear mappingT. Thus, all assumptions in Theorem 1 satisfies the described nonlinear mappingT, andT is Picard's T-stable. As a result, the proof of Theorem 2 is complete.

Evaluation of the Fractional Fisher Model via IETM
This section demonstrate the reliability and preciseness of the projected methodology. Problem 1. If θ = 1, β = 1, and ϕ = 0 in (10) with f 0 (x 1 , 0) = η, then the one dimensional time fractional Fisher equation is presented as follows.
The integer-order solution for the Fisher's Equation (36) is obtained by using the Taylor's series expansion for α = 1 as follows. .
Case I. First, we formulate Problem 1 by utilizing the Elzaki transform coupled with the Caputo derivative operator. By employing the Elzaki transform to (36) with the initial condition, we have the following.
The following is the case: 1 Using the inverse Elzaki transform, we have the following.
Applying the iterative technique described in Section 3.1, we obtain the following.
Provided that the series form solution is as follows: we consequently have Case II. Now we formulate Problem 1 by utilizing Elzaki transform coupled with the ABC derivative operator. By employing the Elzaki transform to (36) with the initial condition, we have the following.
The following is then the case.
Using the inverse Elzaki transform, we have the following.
Applying the iterative technique described in Section 3.1, we obtain the following results.
Provided the series form solution is as follows: we consequently have For showing the accuracy and compactness of our proposed algorithm (IETM via CFD and ABC fractional derivatives), we compare our results with [39]. It can be observed from Table 1 that the present algorithm is very effective and yields accurate results. The absolute errors of the numerical solution of Fisher's equation obtained by IETM (CFD and ABC fractional derivatives) and the exact solutions for Case 1 are depicted in Table 1 and presents a strong correlation among the proposed technique and rapidly converges to the exact solution very efficiently in a short admissible domain. Figure 1 compares the exact and approximate solutions to Problem 1 using the CDF operator. The absolute error norm in Figure 2 for (36) with the assumptions of η = 0.05, θ = 1, β = 1, and ϕ = 0 ensures the approximation of the numerical results derived by IETM to the exact solution via the CFD and ABC fractional derivative operators, respectively. The results of the graphical representation reveal that the model is highly dependent on fractional order α. The absolute inaccuracy is really small. Two dimensional representations of graphs via Figure 3 show the strong connection between the exact and approximate solutions for various fractional orders. Furthermore, Figure3a,b illustrate that the ABC fractional derivative operator has better harmony than the CFD operator.
The integer-order solution for the Fisher's Equation (39) is obtained by using the Taylor's series expansion for α = 1 as follows.
Case I. First, we formulate Problem 2 by utilizing the Elzaki transform coupled with the Caputo derivative operator.
Employing the Elzaki transform to (39) with the initial condition, we have the following.
The following results: 1 Using the inverse Elzaki transform, we have the following.
Applying the iterative technique described in Section 3.1, we obtain the following.
Provided the series form solution is the following: we consequently have the following.
Case II. Now we formulate Problem 2 by utilizing the Elzaki transform coupled with an ABC derivative operator.
Employing the Elzaki transform to (39) with the initial condition, we have the following.
By using the inverse Elzaki transform, we have the following.
By applying the iterative technique described in Section 3.1, we obtain the following.
Provided that the series form solution is as follows: the following consequently results.
For showing the accuracy and compactness of our proposed algorithm (IETM via CFD and ABC fractional derivatives), we compare our results with [39]. It can be observed from Table 2 that the present algorithm is very effective and yields accurate results. The absolute errors of the numerical solution of Fisher's equation obtained by IETM (CFD and ABC fractional derivatives) and the exact solutions for Case 2 are depicted in Table 2 and presents a strong correlation among the proposed technique and rapidly converges to the exact solution very efficiently in a short admissible domain. Figure 4 compares the exact and approximate solutions to Problem 2 by using the CDF operator. The absolute error norm in Figure 5 for (39) with the assumptions of θ = 6, β = 1, and ϕ = 0 ensures the approximation of the numerical results derived by the IETM to the exact solution via the CFD and ABC fractional derivative operators, respectively. The results of the graphical representation reveal that the model is highly dependent on fractional order α. The absolute inaccuracy is really small. Surface and two dimensional representations of graphs via Figure 6 show the strong connection between the exact and approximate solutions for various fractional orders. Furthermore, Figure 6a,b illustrates that the ABC fractional derivative operator has better harmony than the CFD operator.  2 )) 1/3 , then the one dimensional time fractional generalized Fisher's equation is presented as follows.
The integer-order solution for the Fisher's Equation (42) is obtained by using the Taylor's series expansion for α = 1 as follows.
The following is the case. 1 Equivalently, we have the following. 1 By using the inverse Elzaki transform, we have the following.
Case II. Now we formulate Problem 3 by utilizing the Elzaki transform coupled with an ABC derivative operator. Employing the Elzaki transform to (42) with the initial condition, we have the following.
By using the inverse Elzaki transform, we have the following.
Provided the series form solution is as follows: the following consequently results.
f(x 1 ,t) = 1 (1 + exp( 3x 1 2 )) 1/3 Figure 7 compares the exact and approximate solutions to Problem 3 using the CDF operator. The absolute error norm in Figure 8 for (42) with the assumptions of θ = 1, β = 6, and ϕ = 0 ensures the approximation of the numerical results derived by the IETM to the exact solution via the CFD and ABC fractional derivative operators, respectively. The results of the graphical representation reveal that the model is highly dependent on fractional order α. The absolute inaccuracy is really small. Surface and two dimensional representations of graphs via Figure 9 show the strong connection between the exact and approximate solutions for various fractional orders. Furthermore, Figure 9a,b illustrate that the ABC fractional derivative operator has better harmony than the CFD operator. , then the nonlinear diffusion equation of the Fisher's type is as follows.
The integer-order solution for the the nonlinear diffusion equation of the Fisher's type (45) is obtained by using the Taylor's series expansion for α = 1 as follows.
The following results. 1 Equivalently, we also have the following. 1 By using the inverse Elzaki transform, the following results.
By applying the iterative technique described in Section 3.1, we obtain the following.
Provided that the series form solution is the following: the following consequently results.

Case II.
We now formulate Problem 4 by utilizing the Elzaki transform coupled with the ABC derivative operator. By employing the Elzaki transform to (45) with the initial condition, we have the following.
By using the inverse Elzaki transform, we have the following.
Applying the iterative technique described in Section 3.1, we obtain the following.
Provided that the series form solution is the following: the following consequently results.
f(x 1 ,t) Figure 10 compares the exact and approximate solutions to Problem 4 by using the CDF operator. The absolute error norm in Figure 11 for (45) with the assumptions of θ = 1, β = 1, and 0 < ϕ < 1 ensures the approximation of the numerical results derived by the IETM to the exact solution via the CFD and ABC fractional derivative operators, respectively. The results of the graphical representation reveal that the model is highly dependent on fractional order α. The absolute inaccuracy is really small. Surface and two dimensional representations of graphs via Figure 12 show the strong connection between the exact and approximate solutions for various fractional orders. Furthermore, Figure 12a,b illustrate that the ABC fractional derivative operator has better harmony than the CFD operator. f(x 1 ,t) The above is proposed by Khawara and Tanaka [41].

Conclusions
In this paper, the new iterative Elzaki transform method is used to efficiently solve the nonlinear Fisher's equation by using the Caputo and the AB fractional derivative operators, which possess a fractional Lagrange multiplier. In addition, the concept of V-stable mapping and the fixed point theorem demonstrates the stability of the proposed technique in the sense of the AB-fractional operator. Several illustrative cases were carried out to verify the efficacy and reliability of the proposed technique. The findings indicate that the ABC fractional derivative is completely accurate and has a wide spectrum of uses as compared to CFD. In comparison to existing numerical algorithms, the suggested method has a lower processing complexity. Furthermore, the approach interprets and regulates the series of solutions, which converge swiftly to the exact solution in a short admissible domain. In this process, we do not require rectification functionals, stationary constraints, or hefty integrals since the findings are noise-free, which addresses the drawbacks of earlier techniques. Furthermore, we believe that this technique will be adopted to contend with other non-linear fractional order systems of equations that are extremely complex. In the future, we will investigate a similar problem by utilizing the double Laplace transform and generalized Kudryashov method, which will be a useful mechanism for solving nonlinear PDEs and other FDEs.