The Analytical Solutions of the Stochastic mKdV Equation via the Mapping Method

: Here, we analyze the (2+1)-dimensional stochastic modiﬁed Kordeweg–de Vries (SmKdV) equation perturbed by multiplicative white noise in the Stratonovich sense. We apply the mapping method to obtain new trigonometric, elliptic, and rational stochastic fractional solutions. Because of the importance of the KdV equation in characterizing the behavior of waves in shallow water, the obtained solutions are beneﬁcial in interpreting certain fascinating physical phenomena. We plot our ﬁgures in MATLAB and show several 3D and 2D graphical representations to show how the multiplicative white noise affects the solutions of the SmKdV. We show that the white noise around zero stabilizes SmKdV solutions.


Introduction
The development of innovative traveling wave solutions for non-linear partial differential equations (NLPDEs) is crucial and important from many viewpoints for the most physical mathematical phenomena.The non-linear wave phenomenon occurs in a variety of disciplines of science and engineering, including meteorology, geology, solid-state physics, biology, chemical kinematics, fluid-mechanics, ocean engineering, and chemical physics [1][2][3][4].In non-linear wave equations, the non-linear wave phenomena of convection, diffusion, dispersion, response, and dissipation are very significant.Consequently, one of the central issues of interest in physics and mathematics has been the study of exact solutions to those equations.Numerous techniques, such as the generalized Kudryashov method [5], sine-Gordon expansion [6,7], Exp-function [8], perturbation [9,10], Lie symmetry [11], Ricatti equation expansion [12], sn-ns method [13], Bernoulli sub-equation function [14], improved tan(ϕ/2)-expansion [15], tanh-sech [16][17][18], and (G /G)-expansion [19], have been explored, and some of them have been created in the process of looking for exact solutions to those equations.
One of the most familiar models for NLPDEs is the Korteweg-de Vries (KdV) equation: The KdV equation explains ion acoustic-waves in plasma, acoustic-waves on a crystal lattice, and long internal waves in a density-stratified ocean and in weakly interacting shallow-water waves.Numerous researchers have explored various forms of the KdV equation using different methodologies and approaches from a variety of perspectives (see, for example, Refs.[20][21][22][23][24][25][26][27] and the references therein).
On the other hand, the modified Kordeweg-de Vries (mKdV) equation has had a significant impact on the history of soliton theory.Additionally, it was employed to create an unlimited number of conservation laws for the KdV equation [28], that led to the identification of the Lax pair for the KdV equation and the invention of the inverse scattering transform [29].Many authors have addressed exact solutions using different methods, such as the Exp-function [30], first integral [31], (G /G)-expansion [32], and tanh methods [33], Bifurcation [34], etc.
A new (2+1)-dimensional mKdV equation that depends on the extended Lax equation was established and reported in 2019 [35] in the following form It is worth noting that if ϕ does not rely on x, i.e., ϕ = ϕ(y, t), then Equation (3) turns out the mKdV equation If we rewrite the variable y as x, we have the mKdV Equation ( 2).The mKdV equation has multiple uses, including fluid mechanics [36], the dynamics of traffic flow [37], and the study of waves propagating in plasma [38].Additionally, it is utilized in non-linear optics to explain pulses made up of a few optical cycles [39].
In recent years, the realization of adding random effects when predicting, modeling, simulating, and evaluating complex systems has been extensively appreciated in telecommunications, cryptography, biology, computer science, signal processing, climatic dynamics, physics, chemistry, geophysics, neuroscience, ecology, and other domains.Therefore, here, we consider Equation (3), which is derived by multiplicative noise, in the following form: where β(t) is the white noise and σ is the intensity of noise.
If we evaluate the stochastic integral in the middle, the integral If we evaluate it at the left end, the integral t 0 ϕ(τ)dβ(τ) is called the Itô stochastic integral (denoted by t 0 ϕ(τ)dβ(τ)) [40].The Itô integral and Stratonovich integral have the following relationship: Our objective is to apply the mapping method to determine the exact stochastic solutions of the SmKdV Equation ( 5).The solutions provided would be tremendously helpful to physicists in characterizing some important physical phenomena.Additionally, we explore the influence of noise on the analytical solutions of the SmKdV Equation ( 5) by introducing several figures through the use of MATLAB software.
The following is the order of the article: In Section 2, we employ wave transformation to attain the wave equation for the stochastic SmKdV Equation (5).In Section 3, we describe the mapping method, which we use in this article.In Section 4, the mapping method is used to ensure the exact stochastic solution of the SmKdV Equation (5).Next, in Section 5, we can see the influence of white noise on the acquired solutions of the SmKdV equation.Finally, the article's conclusions are provided.

Traveling Wave Equation for SmKdV
The wave equation for the SmKdV Equation ( 5) is obtained using the transformation: where ψ is a real deterministic function and µ 1 , µ 2 , µ 3 are non-zero constants.We note that and Inserting Equation ( 7) into (5) and utilizing ( 8) and ( 9), we obtain Considering the expectations on both sides, we attain Since β(t) is the normal process, then E(e 2σβ(t) ) = e 2σ 2 t .Therefore, Equation ( 11) becomes Integrating Equation ( 12) once and setting the constant of integration equal to zero, we have the following Duffing equation where

The Description of Mapping Method
Let us now explain the mapping method stated in Ref. [41].Supposing that the solutions to Equation (13) are where hi , for i = 1, 2, . . .hm , are undefined constants to be evaluated and F fulfills the first type of elliptic equation where the parameters r, q, and p are real.We see that Equation (15) has several solutions based on r, q, and p as following Table 1: Table 1.All solutions for Equation (15) for various r, q, and p values.

Case
Now, by utilizing Table 2 (or Table 3 when κ → 1), we can have the exact solutions of the SmKdV Equation ( 5) as follows: Remark 1.We can use various methods, including the Adomian decomposition, exp(−ϕ)-expansion method, improved tan( 2 )expansion, extended tanh method, Exp-function, Hirota bilinear, Weierstrass elliptic function, extended trial equation, complex hyperbolic function, etc., to obtain various solutions.
While we see that in Figures 2 and 3, after minor transit behaviors, the surface turn into more planar: While we see that in In the Figures 4, 5, we draw a two-dimensional graph representing of the solution ϕ(x, y, t) in Eq. ( 20) and Eq. ( 21) to illustrate our previous results as follows:  In the Figures 4, 5, we draw a two-dimensional graph representing of the solution ϕ(x, y, t) in Eq. ( 20) and Eq. ( 21) to illustrate our previous results as follows: In Figures 4 and 5, we draw a two-dimensional graph representing the solution ϕ(x, y, t) in Equations ( 20) and ( 21) to illustrate our previous results as follows:

Conclusions
In this paper, we took into account the stochastic mKdV equation, which was created in the Stratonovich sense by multiplicative white noise.Utilizing the mapping method, we were able to obtain exact solutions.These solutions play a vital role in describing a number of interesting and complicated physical phenomena.Finally, the MATLAB package was used to demonstrate the effect of multiplicative white noise on the exact solution of the SmKdV equation.