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Article

On the Solution of Fractional Biswas–Milovic Model via Analytical Method

1
Department of Mathematics and Computer Science, Faculty of Science and Technology, Rajamangala University of Technology Thanyaburi (RMUTT), Pathumthani 12110, Thailand
2
Department of Mathematics, Deanship of Applied Sciences, Umm Al-Qura University, Makkah 517, Saudi Arabia
3
Department of Mechanical Engineering, Sejong University, Seoul 05006, Republic of Korea
4
Department of Mathematics, Abdul Wali Khan University, Mardan 23200, Pakistan
*
Author to whom correspondence should be addressed.
These authors contributed equally to this work and are co-first authors.
Symmetry 2023, 15(1), 210; https://doi.org/10.3390/sym15010210
Submission received: 7 December 2022 / Revised: 5 January 2023 / Accepted: 9 January 2023 / Published: 11 January 2023
(This article belongs to the Special Issue Functional Analysis, Fractional Operators and Symmetry/Asymmetry)

Abstract

:
Through the use of a unique approach, we study the fractional Biswas–Milovic model with Kerr and parabolic law nonlinearities in this paper. The Caputo approach is used to take the fractional derivative. The method employed here is the homotopy perturbation transform method (HPTM), which combines the homotopy perturbation method (HPM) and Yang transform (YT). The HPTM combines the homotopy perturbation method, He’s polynomials, and the Yang transform. He’s polynomial is a wonderful tool for dealing with nonlinear terms. To confirm the validity of each result, the technique was substituted into the equation. The described techniques can be used to find the solutions to these kinds of equations as infinite series, and when these series are in closed form, they give a precise solution. Graphs are used to show the derived numerical results. The maple software package is used to carry out the numerical simulation work. The results of this research are highly positive and demonstrate how effective the suggested method is for mathematical modeling of natural occurrences.

1. Introduction

Due to its numerous applications in numerous nonlinear phenomena, fractional calculus (FC) has gained the attention of academics. To describe the memory and heredity characteristics of many phenomena, FC is a reliable source. The expansion of integer to non-integer order of differentiation is known as fractional differentiation. Few phenomenons including quantum mechanics, viscoelasticity, diffusion processes, fluid mechanics, etc., are effectively described by fractional differential equations (FDEs). FC is connected to practical endeavours and is frequently used in human diseases, nanotechnology, chaos theory, optics, and other disciplines, as noted in Refs. [1,2,3,4]. A helpful tool for representing nonlinear events in scientific and engineering models is the fractional differential equation. In applied mathematics and engineering, partial differential equations, particularly nonlinear ones, have been utilised to simulate a wide range of scientific phenomena. Fractional-order partial differential equations (FPDEs) allowed researchers to recognise and model a wide range of significant and real-world physical issues in parallel with their work in the physical sciences. It has always been claimed how important it is to obtain approximations for scientists by using either numerical or analytical methods. Because of this, symmetry analysis is a fantastic tool for comprehending partial differential equations, especially when looking at equations generated from mathematical concepts connected to accounting. Despite the notion that symmetry is the foundation of nature, the bulk of observations in the natural world lack it. A clever technique for disguising symmetry is to provide unanticipated symmetry-breaking events. The two categories are finite and infinitesimal symmetry. There are two types of discrete and continuous finite symmetries. Natural symmetries such as parity and temporal inversion are discrete, while space is a continuous transformation. Mathematicians have always been fascinated by patterns.
Due to the numerous engineering and scientific applications of fractional differential equations, they have become more significant and well-liked. For example, these equations are more frequently used to explain phenomena in a wide range of physical processes [5,6,7], such as biology, acoustics, signal processing, electromagnetics, and many others. The main advantage of fractional differential equations in these and other applications is their non-locality [8,9,10].
The fractional order differential operator is non-local, whereas the integer order differential operator is commonly conceived of as a local operator. This demonstrates how a system’s future state depends on both its current state and its previous state. This increases the utility of fractional calculus, which is one of the reasons it is gaining popularity [11,12,13,14,15,16]. Therefore, solving fractional differential equations has drawn a lot of attention. The exact solution of a fractional differential equation is often difficult. Numerical methods, such as the perturbation method, have attracted the interest of researchers. However, perturbation approaches have certain important limitations. It is challenging since most nonlinear problems do not have any smaller parameters at all, for example, the approximate solution generally requires a lot of small parameters. Although a proper choice of minor factors might occasionally yield the best outcome, unsuitable choices typically have adverse impact on the solutions [17,18,19,20].
This work presents the homotopy perturbation method (HPM) and the Yang transform (YT). Ji-Huan He of Shanghai University introduced the homotopy perturbation method (HPM) in 1998 as a potent tool for solving technical and scientific nonlinear issues [21,22]. Numerous mathematicians have handled the nonlinear equations that appear in engineering and research using the homotopy perturbation approach [23,24,25,26]. Refs. [27,28,29,30,31] address the application of the Adomian decomposition method, closely related to the homotopy perturbation method, to various diffusive and transport models (including fractional and nonlinear cases as well). Refs. [32,33,34,35] address time-fractional subdiffusion equations and inverse problems of determining their coefficients and fractional orders. Ref. [36] introduces a homotopy perturbation method for nonlinear transport equations. Ref. [37] proposes a perturbational approach to construct analytical approximations based on the double-parameter transformation perturbation expansion method. Ref [38] contains an exhaustive review of various modern fractional calculus applications. Ref [39] discusses some non-standard definitions of Caputo fractional derivatives. Ref. [40] provides an overview of the computational practices used in fractional calculus. Recently, a lot of authors have studied the solutions to partial differential equations, both linear and nonlinear, utilizing a variety of methodologies including the homotopy perturbation transform technique [41,42], the Elzaki transform decomposition method [43,44], the iterative Laplace transform method [45], the homotopy analysis transform method [46], the variational iteration method (VIM) [47,48], and many others.
Now, using HPTM, we will study the fractional model of the Biswas–Milovic equation (BME). The BME generalises the well-known nonlinear Schrodinger’s equation to describe solitons transcontinental and transoceanic propagation across optical fibres. The BME is written as [49]
ι F ϑ δ + λ F φ φ δ + χ H ( | F | 2 ) F δ = 0 ,
F ( φ , ϑ ) denotes the wave profile, λ and χ are real-valued constants meeting the condition λ · χ > 0 , and the parameter δ 0 , which transforms the nonlinear Schrödinger equation to BME. The independent variables φ and ϑ denote the distance along the fibre and the time, respectively. The algebraic function H is real-valued and is assumed to be as smooth as the complex function H ( | F | 2 ) : C C . Assuming that the complex plane C is a 2D linear space R 2 and that the function H ( | F | 2 ) is differentiable n times, so
H ( | F | 2 ) U l , m = 1 C n ( ( m , m ) × ( l , l ) ; R 2 ) .
Here, we examine the following issue
H ( v ) = v m + β v 2 m .
Here, parameter m denotes the power law nonlinearity, and β denotes the nonlinear term’s coefficient. Researchers have used a variety of methodologies to study the BME. For δ = 1 , Ahmed et al. [50] analysed the BME using the Adomian decomposition approach, while Arnous and Mirzazadeh [51] used the HPM for solving the BME. For the first time, Ahmadian and Darvishi [52] examined the generalised version of the sine-cosine method of fractional BME. The (1 + 1) dimensional BME of fractional-order was then explored by Ahmadian and Darvishi [53] using the sec-csc, sech-csch, tan-cot, and tanh-coth approaches.
By using the homotopy perturbation approach, Darvishi and Zaidan [54] studied the nonlinear (1 + 1) dimensional BME of order fraction. Additionally, to examine the fractional BME with the Atangana–Baleanu derivative, Jagdev et al. [55] introduced the fractional homotopy analysis transform method (FHATM) and discussed several novel elements of the discovered solution. There are six sections throughout the entire paper. The introduction is in Section 1, and the definitions and attributes are explained in Section 2. An implementation of the suggested analytical technique is provided in Section 3. The suggested technique are put into practise on a few test examples in Section 4. The conclusion is covered in Section 5.

2. Preliminaries

In this part, we provide the basic definitions related to this study.
Definition 1. 
The fractional Caputo derivative is given as [56,57]
D ϑ ς F ( φ , ϑ ) = 1 Γ ( k ς ) 0 ϑ ( ϑ ψ ) k ς 1 F ( k ) ( φ , ψ ) d ψ , k 1 < ς k , k N .
Definition 2. 
For the function F ( ϑ ) , the YT is given as [57]
Y { F ( ϑ ) } = M ( u ) = 0 e ϑ u F ( ϑ ) d ϑ , ϑ > 0 , u ( ϑ 1 , ϑ 2 ) ,
with inverse YT as
Y 1 { M ( u ) } = F ( ϑ ) .
Definition 3. 
The inverse YT is given by [57]
Y 1 [ Y u ] = F ( ϑ ) = 1 2 π ι ς ι ς + ι F 1 u e u ϑ u d u = Σ r e s i d u e s o f F 1 u e u ϑ u .
Definition 4. 
The fractional derivative YT is given as [57]
Y { F ( ς ) ( ϑ ) } = M ( u ) u ς k = 0 n 1 F ( k ) ( 0 ) u ς ( k + 1 ) , n 1 < ς n .

3. General Idea of HPTM

We consider the following differential equation to give the general implementation of HPTM.
D ϑ ς F ( φ , ϑ ) = P 1 [ φ ] F ( φ , ϑ ) + Q 1 [ φ ] F ( φ , ϑ ) , 0 < ς 1 ,
subject to initial conditions
F ( φ , 0 ) = ξ ( φ ) .
where D ϑ ς = ς ϑ ς stand for the Caputo fractional derivative, P 1 [ φ ] , Q 1 [ φ ] denote linear and nonlinear terms.
On operating YT, we get
Y [ D ϑ ς F ( φ , ϑ ) ] = Y [ P 1 [ φ ] F ( φ , ϑ ) + Q 1 [ φ ] F ( φ , ϑ ) ] ,
1 u ς { M ( u ) u F ( 0 ) } = Y [ P 1 [ φ ] F ( φ , ϑ ) + Q 1 [ φ ] F ( φ , ϑ ) ] .
After simplification, we get
M ( F ) = u F ( 0 ) + u ς Y [ P 1 [ φ ] F ( φ , ϑ ) + Q 1 [ φ ] F ( φ , ϑ ) ] .
By implementing inverse YT, we get
F ( φ , ϑ ) = F ( φ , 0 ) + Y 1 [ u ς Y [ P 1 [ φ ] F ( φ , ϑ ) + Q 1 [ φ ] F ( φ , ϑ ) ] ] .
By utilizing the HPM
F ( φ , ϑ ) = k = 0 ϵ k F k ( φ , ϑ ) .
having perturbation parameter ϵ [ 0 , 1 ] .
The decomposition of nonlinear terms is stated as
Q 1 [ φ ] F ( φ , ϑ ) = k = 0 ϵ k H n ( F ) ,
and H n ( F ) represent He’s polynomials as [58]
H n ( F 0 , F 1 , . . . , F n ) = 1 Γ ( n + 1 ) D ϵ n Q 1 k = 0 ϵ i F i ϵ = 0 ,
where D ϵ n = n ϵ n .
By putting (11) and (12) in (10), we obtain
k = 0 ϵ k F k ( φ , ϑ ) = F ( φ , 0 ) + ϵ × Y 1 u ς Y { P 1 k = 0 ϵ k F k ( φ , ϑ ) + k = 0 ϵ k H k ( F ) } .
Comparing the coefficient of ϵ , we obtain
ϵ 0 : F 0 ( φ , ϑ ) = F ( φ , 0 ) , ϵ 1 : F 1 ( φ , ϑ ) = Y 1 u ς Y ( P 1 [ φ ] F 0 ( φ , ϑ ) + H 0 ( F ) ) , ϵ 2 : F 2 ( φ , ϑ ) = Y 1 u ς Y ( P 1 [ φ ] F 1 ( φ , ϑ ) + H 1 ( F ) ) , . . . ϵ k : F k ( φ , ϑ ) = Y 1 u ς Y ( P 1 [ φ ] F k 1 ( φ , ϑ ) + H k 1 ( F ) ) , k > 0 , k N .
Thus, the analytical solution F k ( φ , ϑ ) is obtained using the truncated series
F ( φ , ϑ ) = lim M k = 1 M F k ( φ , ϑ ) .

4. Applications

In this section, we implement HPTM to obtain the solution of time-fractional Biswas–Milovic model. Let us assume nonlinear fractional BME
ι ς F ϑ ς + λ 2 F φ 2 + χ | F ( φ , ϑ ) | 2 F ( φ , ϑ ) = 0 , 0 < ς 1 ,
subject to initial source
F ( φ , 0 ) = exp ( ι φ ) .
On operating YT, we get
Y ι ς F ϑ ς = Y λ 2 F φ 2 + χ | F ( φ , ϑ ) | 2 F ( φ , ϑ ) ,
After simplification, we get
1 u ς { M ( u ) u F ( 0 ) } = Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 2 F ( φ , ϑ ) ,
M ( u ) = u F ( 0 ) + u ς Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 2 F ( φ , ϑ ) .
By implementing inverse YT, we get
F ( φ , ϑ ) = F ( φ , 0 ) + Y 1 u ς Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 2 F ( φ , ϑ ) , F ( φ , ϑ ) = exp ( ι φ ) + Y 1 u ς Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 2 F ( φ , ϑ ) .
On utilizing the HPM
k = 0 ϵ k F k ( φ , ϑ ) = exp ( ι φ ) + ϵ Y 1 u ς Y λ ι k = 0 ϵ k F k ( φ , ϑ ) φ φ + ι χ k = 0 ϵ k H k ( F ) .
The non-linear terms by means of He’s polynomial H k ( F ) is given as
k = 0 ϵ k H k ( F ) = | F ( φ , ϑ ) | 2 F ( φ , ϑ )
Some He’s polynomial terms are determined as
H 0 ( F ) = | F 0 ( φ , ϑ ) | 2 F 0 ( φ , ϑ ) , H 1 ( F ) = 1 1 ! ϵ [ ( | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) ) | 2 ( F 0 ( φ , ϑ ) + ϵ F 0 ( φ , ϑ ) ) ] ϵ = 0 H 2 ( F ) = 1 2 ! 2 ϵ 2 [ ( | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) | 2 ) ( F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) ) ] ϵ = 0
Comparing the coefficient of ϵ , we have
ϵ 0 : F 0 ( φ , ϑ ) = exp ( ι φ ) , ϵ 1 : F 1 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 0 ( F ) = ι ( χ λ ) exp ( ι φ ) ϑ ς Γ ( ς + 1 ) , ϵ 2 : F 2 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 1 ( F ) = 1 2 ϑ ς Γ ( ς + 1 ) 2 ( χ λ ) ( λ χ ) exp ( ι φ ) , ϵ 3 : F 3 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 2 ( F ) = 1 3 ϑ ς Γ ( ς + 1 ) 3 { ι λ 2 ( χ λ ) ( λ χ ) exp ( ι φ ) + 3 2 χ ι ( χ λ ) ( λ χ ) exp ( ι φ ) + χ ι ( χ λ ) 2 exp ( ι φ ) } ,
Thus the analytical solution is obtained using the truncated series as
F ( φ , ϑ ) = exp ( ι φ ) + ι ( χ λ ) exp ( ι φ ) ϑ ς Γ ( ς + 1 ) + 1 2 ϑ ς Γ ( ς + 1 ) 2 ( χ λ ) ( λ χ ) exp ( ι φ ) + 1 3 ϑ ς Γ ( ς + 1 ) 3 ι λ 2 ( χ λ ) ( λ χ ) exp ( ι φ ) + 3 2 χ ι ( χ λ ) ( λ χ ) exp ( ι φ ) + χ ι ( χ λ ) 2 exp ( ι φ ) +
Example 1. 
Let us assume nonlinear fractional BME
ι ς F ϑ ς + λ 2 F φ 2 + χ | F ( φ , ϑ ) | 4 F ( φ , ϑ ) = 0 , 0 < ς 1 ,
subject to initial source
F ( φ , 0 ) = exp ( ι φ ) .
On operating YT, we get
Y ι ς F ϑ ς = Y λ 2 F φ 2 + χ | F ( φ , ϑ ) | 4 F ( φ , ϑ ) ,
After simplification, we get
1 u ς { M ( u ) u F ( 0 ) } = Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 4 F ( φ , ϑ ) ,
M ( u ) = u F ( 0 ) + u ς Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 4 F ( φ , ϑ ) .
By implementing inverse YT, we get
F ( φ , ϑ ) = F ( φ , 0 ) + Y 1 u ς Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 4 F ( φ , ϑ ) , F ( φ , ϑ ) = exp ( ι φ ) + Y 1 u ς Y λ ι 2 F φ 2 + ι χ | F ( φ , ϑ ) | 4 F ( φ , ϑ ) .
On utilizing the HPM
k = 0 ϵ k F k ( φ , ϑ ) = exp ( ι φ ) + ϵ Y 1 u ς Y λ ι k = 0 ϵ k F k ( φ , ϑ ) φ φ + ι χ k = 0 ϵ k H k ( F ) .
The non-linear terms by means of He’s polynomial H k ( F ) are given as
k = 0 ϵ k H k ( F ) = | F ( φ , ϑ ) | 2 F ( φ , ϑ )
Few He’s polynomial terms are determined as
H 0 ( F ) = | F 0 ( φ , ϑ ) | 4 F 0 ( φ , ϑ ) , H 1 ( F ) = 1 1 ! ϵ [ ( | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) ) | 4 ( F 0 ( φ , ϑ ) + ϵ F 0 ( φ , ϑ ) ) ] ϵ = 0 H 2 ( F ) = 1 2 ! 2 ϵ 2 [ ( | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) | 4 ) ( F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) ) ] ϵ = 0
Comparing the coefficient of ϵ, we have
ϵ 0 : F 0 ( φ , ϑ ) = exp ( ι φ ) , ϵ 1 : F 1 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 0 ( F ) = ι ( χ λ ) exp ( ι φ ) ϑ ς Γ ( ς + 1 ) , ϵ 2 : F 2 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 1 ( F ) = 1 2 ϑ ς Γ ( ς + 1 ) 2 ( χ λ ) ( χ λ 4 χ exp ( 2 ι φ ) ) exp ( ι φ ) , ϵ 3 : F 3 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 2 ( F ) = 1 3 ϑ ς Γ ( ς + 1 ) 3 ( χ λ ) { ι λ ( λ exp ( ι φ ) + 16 χ exp ( 5 ι φ ) ) + χ ι [ exp ( 5 ι φ ) ( 2 + λ χ exp ( 4 ι φ ) ) ] } + 1 3 ϑ ς Γ ( ς + 1 ) 3 ( χ λ ) χ ι 3 2 exp ( 3 ι φ ) [ ( λ χ ) exp ( ι φ ) + λ χ exp ( 4 ι φ ) ] ,
Thus the analytical solution is obtained using the truncated series as
F ( φ , ϑ ) = exp ( ι φ ) + ι ( χ λ ) exp ( ι φ ) ϑ ς Γ ( ς + 1 ) + 1 2 ϑ ς Γ ( ς + 1 ) 2 ( χ λ ) ( χ λ 4 χ exp ( 2 ι φ ) ) exp ( ι φ ) + 1 3 ϑ ς Γ ( ς + 1 ) 3 ( χ λ ) ι λ ( λ exp ( ι φ ) + 16 χ exp ( 5 ι φ ) ) + χ ι [ exp ( 5 ι φ ) ( 2 + λ χ exp ( 4 ι φ ) ) ] + 1 3 ϑ ς Γ ( ς + 1 ) 3 ( χ λ ) χ ι 3 2 exp ( 3 ι φ ) [ ( λ χ ) exp ( ι φ ) + λ χ exp ( 4 ι φ ) ] +
Example 2. 
Let us assume nonlinear fractional BME
ι ς F ϑ ς + λ 2 F φ 2 + χ ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ ) = 0 , 0 < ς 1 ,
subject to initial source
F ( φ , 0 ) = exp ι φ 2 .
On operating YT, we get
Y ι ς F ϑ ς = Y λ 2 F φ 2 + χ ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ ) ,
After simplification, we get
1 u ς { M ( u ) u F ( 0 ) } = Y λ ι 2 F φ 2 + ι χ ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ ) ,
M ( u ) = u F ( 0 ) + u ς Y λ ι 2 F φ 2 + ι χ ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ ) .
By implementing inverse YT, we get
F ( φ , ϑ ) = F ( φ , 0 ) + Y 1 u ς Y λ ι 2 F φ 2 + ι χ ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ ) , F ( φ , ϑ ) = exp ι φ 2 + Y 1 u ς Y λ ι 2 F φ 2 + ι χ ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ ) .
On utilizing the HPM
k = 0 ϵ k F k ( φ , ϑ ) = exp ι φ 2 + ϵ Y 1 u ς Y λ ι k = 0 ϵ k F k ( φ , ϑ ) φ φ + ι χ k = 0 ϵ k H k ( F ) .
The non-linear terms by means of He’s polynomial H k ( F ) are given as
k = 0 ϵ k H k ( F ) = ( | F ( φ , ϑ ) | 2 + | F ( φ , ϑ ) | 4 ) F ( φ , ϑ )
Some He’s polynomial terms are determined as
H 0 ( F ) = | F 0 ( φ , ϑ ) | 2 F 0 ( φ , ϑ ) + | F 0 ( φ , ϑ ) | 4 F 0 ( φ , ϑ ) , H 1 ( F ) = 1 1 ! ϵ [ ( | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) | 2 + | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) | 4 ) ( F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) ) ] ϵ = 0 H 2 ( F ) = 1 2 ! 2 ϵ 2 [ ( | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) | 2 + | F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) | 4 ) ( F 0 ( φ , ϑ ) + ϵ F 1 ( φ , ϑ ) + ϵ 2 F 2 ( φ , ϑ ) ) ] ϵ = 0
Comparing the coefficient of ϵ, we have
ϵ 0 : F 0 ( φ , ϑ ) = exp ι φ 2 , ϵ 1 : F 1 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 0 ( F ) = ι 2 χ λ 4 exp ι φ 2 ϑ ς Γ ( ς + 1 ) , ϵ 2 : F 2 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 1 ( F ) = 1 2 ϑ ς Γ ( ς + 1 ) 2 2 χ λ 4 ( λ 4 2 χ 3 ι + 3 ι exp ( 2 ι φ ) ) exp ι φ 2 , ϵ 3 : F 3 ( φ , ϑ ) = Y 1 u ς Y λ ι 2 F φ 2 + ι χ H 2 ( F ) = 1 3 ϑ ς Γ ( ς + 1 ) 3 2 χ λ 4 { ι λ ( λ exp ( ι φ ) + 16 χ exp ( 5 ι φ ) ) + χ ι exp ( ι φ ) ( χ λ ) 2 ( 2 + λ χ exp ( 4 ι φ ) ) } ,
Thus the analytical solution is obtained using the truncated series as
F ( φ , ϑ ) = exp ι φ 2 + ι 2 χ λ 4 exp ι φ 2 ϑ ς Γ ( ς + 1 ) + 1 2 ϑ ς Γ ( ς + 1 ) 2 2 χ λ 4 ( λ 4 2 χ 3 ι + 3 ι exp ( 2 ι φ ) ) exp ι φ 2 + 1 3 ϑ ς Γ ( ς + 1 ) 3 2 χ λ 4 ι λ ( λ exp ( ι φ ) + 16 χ exp ( 5 ι φ ) ) + χ ι exp ( ι φ ) ( χ λ ) 2 ( 2 + λ χ exp ( 4 ι φ ) ) +
  • Numerical Simulation Studies
To verify the suggested strategy, numerical simulation studies for the nonlinear time-fractional Biswas–Milovic equations are conducted. With the help of the 3D plots of the real and imaginary divisions of the wave profile F ( φ , ϑ ) and their corresponding contours, once can clearly see how the wave solution behaves for various numeric values. Figure 1 displays the 3D plots of the numerical solution for Ex. 4.1 real and imaginary division when χ = 2 , λ = 1 , and ς = 1 within the domain 5 φ 5 and ϑ [ 0 , 0.1 ] . Figure 2 displays the 3D plots of the numerical solution for Ex. 4.2 real and imaginary division when χ = 2 , λ = 1 , and ς = 1 within the domain 10 φ 10 and ϑ [ 0 , 0.1 ] . Similarly, Figure 3 displays the 3D plots of the numerical solution for Ex. 4.3 real and imaginary division when χ = 2 , λ = 4 , and ς = 1 within the domain 20 φ 20 and ϑ [ 0 , 0.1 ] . The numerical solution’s contour plots, which express the three-dimensional data in a two-dimensional plane, are also provided. The third iteration provided all of the results, and other iterations can be found to produce more precise results.

5. Conclusions

With the use of the HPTM, the approximate and analytical solutions to the fractional Biswas–Milovic equations are successfully achieved in this study. Numerous domains, including communications, all-optical rapid switching devices, nonlinear fibre optics, and others, analyse the Biswas–Milovic equation. Many phenomena in biology, fluid flow, economics, control theory, chemistry, the life sciences, and other branches of research and engineering may now be well described using fractional calculus. An accurate simulation of a physical phenomenon depends on both the current time and the past time history. Fractional calculus can be used in this regard. Therefore, science and engineering may benefit from any new solutions to fractional equations. This paper’s main contribution is to offer a straightforward, trustworthy, and effective solution method for challenging fractional partial differential equations. The results obtained with this innovative approaches have greater accuracy in the numerical results and take less time and computational effort.

Author Contributions

Conceptualization, M.N. and P.S.; methodology, N.A.S.; software, R.S.; validation, N.A.S.; formal analysis, N.A.S.; investigation, M.N.; resources, R.S.; data curation, J.D.C.; writing—original draft preparation, M.N.; writing—review and editing, P.S.; visualization, J.D.C.; supervision, J.D.C.; project administration, M.N.; funding acquisition, J.D.C. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors would like to thank the Deanship of Scientific Research at Umm Al-Qura University for supporting this work under Grant Code number: 22UQU4310396DSR51. This work was supported by a Korea Institute of Energy Technology Evaluation and Planning (KETEP) grant funded by the Korea government (MOTIE) (No. 20192010107020, Development of hybrid adsorption chiller using unutilized heat source of low temperature).

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Aspects of the analytical result of problem 1 in 3D and its contour for χ = 2 , λ = 1 , and ς = 1 . (a) Real part, (b) Real part contour, (c) Imaginary part, and (d) Imaginary part contour.
Figure 1. Aspects of the analytical result of problem 1 in 3D and its contour for χ = 2 , λ = 1 , and ς = 1 . (a) Real part, (b) Real part contour, (c) Imaginary part, and (d) Imaginary part contour.
Symmetry 15 00210 g001
Figure 2. Aspects of the analytical result of problem 2 in 3D and its contour for χ = 2 , λ = 1 , and ς = 1 . (a) Real part, (b) Real part contour, (c) Imaginary part, and (d) Imaginary part contour.
Figure 2. Aspects of the analytical result of problem 2 in 3D and its contour for χ = 2 , λ = 1 , and ς = 1 . (a) Real part, (b) Real part contour, (c) Imaginary part, and (d) Imaginary part contour.
Symmetry 15 00210 g002
Figure 3. Aspects of the analytical result of problem 3 in 3D and its contour for χ = 2 , λ = 1 , and ς = 1 . (a) Real part, (b) Real part contour, (c) Imaginary part, and (d) Imaginary part contour.
Figure 3. Aspects of the analytical result of problem 3 in 3D and its contour for χ = 2 , λ = 1 , and ς = 1 . (a) Real part, (b) Real part contour, (c) Imaginary part, and (d) Imaginary part contour.
Symmetry 15 00210 g003
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Sunthrayuth, P.; Naeem, M.; Shah, N.A.; Shah, R.; Chung, J.D. On the Solution of Fractional Biswas–Milovic Model via Analytical Method. Symmetry 2023, 15, 210. https://doi.org/10.3390/sym15010210

AMA Style

Sunthrayuth P, Naeem M, Shah NA, Shah R, Chung JD. On the Solution of Fractional Biswas–Milovic Model via Analytical Method. Symmetry. 2023; 15(1):210. https://doi.org/10.3390/sym15010210

Chicago/Turabian Style

Sunthrayuth, Pongsakorn, Muhammad Naeem, Nehad Ali Shah, Rasool Shah, and Jae Dong Chung. 2023. "On the Solution of Fractional Biswas–Milovic Model via Analytical Method" Symmetry 15, no. 1: 210. https://doi.org/10.3390/sym15010210

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