Entropy Generation in a Dissipative Nanoﬂuid Flow under the Inﬂuence of Magnetic Dissipation and Transpiration

: The present study explores the entropy generation, ﬂow, and heat transfer characteristics of a dissipative nanoﬂuid in the presence of transpiration e ﬀ ects at the boundary. The non-isothermal boundary conditions are taken into consideration to guarantee self-similar solutions. The electrically conducting nanoﬂuid ﬂow is inﬂuenced by a magnetic ﬁeld of constant strength. The ultraﬁne particles (nanoparticles of Fe 3 O 4 /CuO) are dispersed in the technological ﬂuid water (H 2 O). Both the base ﬂuid and the nanoﬂuid have the same bulk velocity and are assumed to be in thermal equilibrium. Tiwari and Dass’s idea is used for the mathematical modeling of the problem. Furthermore, the ultraﬁne particles are supposed to be spherical, and Maxwell Garnett’s model is used for the e ﬀ ective thermal conductivity of the nanoﬂuid. Closed-form solutions are derived for boundary layer momentum and energy equations. These solutions are then utilized to access the entropy generation and the irreversibility parameter. The relative importance of di ﬀ erent sources of entropy generation in the boundary layer is discussed through various graphs. The e ﬀ ects of space free physical parameters such as mass suction parameter ( S ) , viscous dissipation parameter ( Ec ) , magnetic heating parameter ( M ) , and solid volume fraction ( φ ) of the ultraﬁne particles on the velocity, Bejan number, temperature, and entropy generation are elaborated through various graphs. It is found that the parabolic wall temperature facilitates similarity transformations so that self-similar equations can be achieved in the presence of viscous dissipation. It is observed that the entropy generation number is an increasing function of the Eckert number and solid volume fraction. The entropy production rate in the Fe 3 O 4 − H 2 O nanoﬂuid is higher than that in the CuO − H 2 O nanoﬂuid under the same circumstances.


Introduction
The Navier-Stokes equations, which are second-order nonlinear partial differential equations, govern the viscous fluid-fluid flow. The exact solution of the complete Navier-Stokes equations has not yet been computed. However, closed-form solutions can be established in certain physical circumstances under reasonable suppositions [1][2][3][4][5]. Exact solutions are important since such solutions can be utilized to validate asymptotic analytical and numerical solutions. Crane [6] found the closed-form solution of the simplified Navier-Stokes equations under the boundary layer approximations to analyze the flow over a stretched surface. Some researchers determined the closed-form solutions of boundary layer flow after the pioneering work of Crane with various physical conditions [7][8][9][10][11].
It is essential to examine heat transfer issues in industrial engineering. Recently, heat transfer analysis has been limited to the first law of thermodynamics, which only concerns energy conservation during the interactions of the systems and surroundings. It deals solely with the amount of energy regardless of its quality. Moreover, the first law does not distinguish between heat and work. It assumes that work and heat are fully interchangeable, but work is high-quality energy and can be fully converted into heat, while heat is low-quality energy and cannot be fully converted into work. Heat is an unorganized form of energy. The law of entropy shows that the entropy increase in the cold object is higher than the decrease of entropy in the hot object. This means that the final state is more random in the thermodynamic system. This analysis suggests that the heat transfer phenomenon decreases energy quality or increases the system entropy. To investigate this energy quality reduction, Bejan [12,13] proposed a method called entropy minimization that is based on the law of entropy. The law of entropy (second law of thermodynamics) is used to maintain energy quality [14][15][16][17][18][19][20]. In addition to heat transfer, frictional heating and magnetic dissipation also generate entropy in fluid flow problems [21][22][23][24][25].
Conventional working fluids such as kerosene, gasoline, water, engine oil, and fluid mixtures have exceptionally poor thermal conductivity, as demonstrated by the vast number of industries dealing with these conventional working fluids. However, due to their inefficiency in thermal conductivity, they face several problems. The use of nanoscale elements in base fluids is one of the most important techniques used to resolve this deficiency. Such a mixture of nanometer-sized particles and a working fluid is called a nanofluid. In comparison to base liquids, nanofluids possess high thermal conductivity [26][27][28][29][30][31][32]. Many researchers firmly agree on the remarkable characteristics of nanofluids. Over the past two decades, this new type of fluid has attracted the attention of many researchers. Nanofluid studies have a variety of important applications, such as product provision for cancer, cooling systems, nuclear power plant cooling, and computer equipment cooling. Hsiao [33] conducted stagnation nanofluid energy conversion analysis for the conjugate problem of conduction-convection and heat source/sink. Ma et al. [34] explored the gravitational convection term of heat management in a shell and tube heat exchanger filled with a Fe 3 O 4 − H 2 O nanoliquid by utilizing a lattice Boltzmann scheme. Wakif et al. [35] reported the impacts of thermal radiation and surface roughness on the complex dynamics of water transporting alumina and copper oxide nanoparticles. Hsiao [36] reported nanofluid flow for conjugating mixed convection and radiation with interactive physical characteristics. In a channel with active heaters and coolers, a numerical simulation was introduced by Ma et al. [37] to examine the impacts of magnetic field on heat transfer in a MgO − Ag − H 2 O nanoliquid. Prasad et al. [38] examined the upper-convected Maxwell three-dimensional rotational flow with a convective boundary condition and zero mass flux for the concentration of nanoparticles. Frictional heating is the conversion of fluid kinetic energy to heat due to the frictional forces between all the neighboring fluid layers. Frictional heating is the main factor in the study of heat transfer in boundary layer flows. Since large velocity gradients exist within the boundary layer, the viscous dissipation effects cannot be neglected. When there is a viscous dissipation, a term for viscous dissipation is incorporated into the energy equation [39][40][41][42][43][44][45][46].
In this research, the exact solutions of transformed nonlinear dimensionless momentum and energy equations that occur in the magnetohydrodynamic (MHD) boundary layer flow of nanofluid are obtained. The goal of the work, apart from providing a benchmark solution for numerical simulation, is the parametric analysis of entropy generation. The work also describes how boundary conditions facilitate similarity transformations to get self-similar equations. The literature review reveals that nonsimilar problems are treated as self-similar problems. Furthermore, the entropy generation analysis exists in literature, but the analysis is limited to the low temperature difference between the boundary and bulk fluid. The present work is free from such a constraint and is valid for both low and high temperature differences. In addition, the terms for frictional heating and magnetic dissipation are added to the energy equation and the expression for entropy generation. To the best of our knowledge, no one has reported the exact solutions for nanofluid flow induced by a linearly stretching surface with a parabolic temperature profile at the boundary. Obtained exact solutions are used for calculating entropy generation and the Bejan number. Visual representations are used to investigate the effects of physical parameters on the nanofluid flow, thermal field, entropy generation profile, and Bejan number.

Statement of the Problem and Governing Equations
Consider the electrically conducting and dissipative nanofluid flow over a stretching surface as shown in Figure 1. The nanofluid is supposed to be a mixture of base fluid (water) and nanoparticles Fe 3 O 4 /CuO. The Cartesian coordinate system (X, Y) is chosen in such a way that the X − axis is taken along the solid boundary and the Y − axis is normal to it. Let U w (X) = U o X be the velocity of the stretching boundary and T w (X) = T b + C o X 2 be the temperature variation at the surface of the stretching boundary; here, T b and the subscript w represent the bulk fluid temperature and the condition at the solid boundary, while The imposed boundary conditions are as follows: The governing self-similar equations are obtained from Equations (2) and (3) by using the following dimensionless variables: Equations (2) and (3) under the transformation in Equation (5) become The imposed boundary conditions are transformed to and shows the dimensionless mass-transfer parameter; and ν n f , σ n f , ρ n f , k n f , and ρC p n f are defined in Table [47][48][49][50][51][52].

Thermophysical Property of Nanofluid Symbol Defined
Thermal conductivity k n f here, φ represents sold volume fraction of nanoparticles. Viscosity Electric conductivity Pr (-) 6.8 --

Closed-Form Solution of Momentum Balance Equation
The closed-form exact solution of Equation (6) with associated boundary conditions of Equation (8) is supposed as follows: Using the first two boundary conditions defined in Equation (8), the computed arbitrary constants C 1 and C 2 are Putting Equation (11) into Equation (10), we get The above closed-form solution trivially satisfies the far-field boundary condition as defined in Equation (8) for β > 0. To find β, we insert Equation (12) into Equation (6) and get By solving the above equation, we have The closed-form solution of the boundary value problem (Equations (6) and (7)) is given by

Solution of Energy Balance Equation via Laplace Transform
Equation (7) is decoupled from Equation (6) by substituting Equation (12) into Equation (7) as follows: To get rid of exponential coefficients, we define a new variable, ξ, as follows: By utilizing the above transformation, Equation (7) and the related boundary conditions take the following form: By employing Laplace transform on Equation (18) and then using Equation (19), we obtain where Θ(ζ) is the Laplace transform of the function θ(ξ). Equation (21) is a Leibnitz first-type linear equation with integrating factor Solving Equation (21) by utilizing Equation (22), we have By taking Laplace inverse of Equation (23), we get Here, an asterisk ( * ) indicates convolution and Γ shows a gamma function. The convolution of two functions, F(ξ) and G(ξ), is defined as follows: By taking F(ξ) = ξ 2 and H(ξ) = e −ξ G ξ −K−2 , Equation (24) takes the following form: By employing the transformation ε = ξu, the above equation takes the following form: By utilizing the integral form of Kummer's confluent hypergeometric function, i.e., The boundary condition at the surface of the stretching surface θ(0) = 0 is satisfied identically. However, the constant of integration c is obtained by using the far-field boundary condition θ ξ = Pr β 2 = 1 and is given by Finally, by inserting Equation (29) into Equation (28) and using the transformation ξ = Pr β 2 e −βη , we obtain the exact solution of the energy equation:

Analysis of Entropy Generation
The rate of entropy generation in the presence of heat dissipation phenomenon with magnetic heating is given by Using Equation (6), Equation (31) becomes Here, indicates characteristic entropy generation; Ns indicates entropy production rate in dimensionless form; Λ = shows the temperature parameter; and N H , N F , and N M represent the dimensionless form of entropy generation due to heat transfer, viscous dissipation, and magnetic heating, respectively.
By utilizing the obtained exact solutions, the three sources of entropy generation stated above take the following forms: and

Bejan Number
To compare the spatial distribution of entropy generation in a flow field due to various sources, an irreversibility ratio parameter known as Bejan number (Be) is defined as given below After the utilization of similarity variables, Equation (36) takes the following form:

Results and Discussion
The nondimensional complicated differential equations (momentum and energy equations) are solved by taking into consideration the exponential form solution and the Laplace transform. The exact expressions are obtained for entropy generation via heat transfer, magnetic heating, and frictional heating. The dimensionless entropy production (Ns), velocity f (η), and temperature θ(η) are plotted against η by taking various values of relevant parameters. The Bejan number (Be) profile is also plotted against the similarity variable η by considering different values of the relevant embedded parameters.  Figure 3b. It is seen that θ(η) is augmented as M 2 increases. The rising behavior of temperature is because of magnetic heating. The effective thermal conductivity of nanoliquids is directly related to the solid volume fraction of nanoparticles (φ), and this augments the temperature of nanoliquids, as shown in Figure 3c. Furthermore, the width of TBL is smaller for base fluid H 2 O and larger for Fe 3 O 4 − H 2 O. This is due to the low thermal conductivity of water and the high effective thermal conductivity of the Fe 3 O 4 − H 2 O nanoliquid. Figure 3d reveals the influence of the Eckert number (Ec) on θ(η). It is found that increasing Ec leads to a rising temperature. The dissipation function implies that frictional heating varies directly with velocity gradients, and the velocity gradients are high in the vicinity of stretching surface. Due to this fact, the temperature shoots up suddenly, resulting in a higher Eckert number in the vicinity of the stretching plate, as shown in Figure 3d.  Figure 3d reveals the influence of the Eckert number ( ) on ( ). It is found that increasing leads to a rising temperature. The dissipation function implies that frictional heating varies directly with velocity gradients, and the velocity gradients are high in the vicinity of stretching surface. Due to this fact, the temperature shoots up suddenly, resulting in a higher Eckert number in the vicinity of the stretching plate, as shown in Figure 3d.     As seen from the plot, Ns is directly related to the Eckert number. This happens since frictional heating increases with the increasing Eckert number. The entropy generation in the Fe 3 O 4 − H 2 O nanoliquid than that in the CuO − H 2 O nanoliquid. Furthermore, the surface of the solid boundary is the region where maximum entropy is generated. The features of mass suction (S) on Ns are revealed in Figure 4b. As S increases, entropy generation rises at the solid wall and its vicinity, but the opposite trend is observed to start at a certain distance away from the boundary. Furthermore, entropy generation is higher in the Fe 3 O 4 − H 2 O nanoliquid at the solid boundary and its neighborhood as compared to the CuO − H 2 O nanoliquid, but the trend becomes the opposite at a certain distance from the boundary. The nature of entropy generation (Ns) with disparate values of the solid volume fraction of nanoparticles (φ) is shown in Figure 4c. From this plot, it can be seen that Ns increases as φ increases. This increase in Ns is due to the boost of heat transfer with increasing φ. It is well known that the magnetic force is nonconservative. The entropy generation is directly related to the nonconservative forces, and this fact is depicted in Figure 4d. The variations of Ns with temperature difference function (Λ) are presented in Figure 4e. The Ns decreases with increasing values of Λ. Figure 5a shows that the Bejan number (Be) has a maximum value at the surface of the stretching boundary for a nonzero suction parameter (S). In the case of an impermeable stretching boundary, the entropy generation in the Fe 3 O 4 − H 2 O nanoliquid is due to dissipative forces (viscous and magnetic) near and on the boundary, which are high in comparison to those of the CuO − H 2 O nanoliquid. An opposite trend is observed to start at a certain vertical distance from the stretching surface. In the case of S > 0, the entropy generation on the stretching surface and inside the boundary layer due to magnetic and viscous heating is more dominant in the Fe 3 O 4 − H 2 O nanoliquid as compared to the CuO − H 2 O nanoliquid. It is noticed from Figure 5b that Be is directly related to the solid volume fraction (φ) in the region away from the stretching boundary. In the vicinity of an elastic boundary, the opposite trend is observed. From Figure 5c, it can be seen that the Bejan number diminishes as Λ increases. Furthermore, the entropy generation by nonconservative forces (viscous and magnetic) is higher in the

Concluding Remarks
In this study, we investigated flow, heat transfer, and entropy production in a dissipative nanofluid flow under the influence of a magnetic field. The following findings can be drawn from the exact results:

Concluding Remarks
In this study, we investigated flow, heat transfer, and entropy production in a dissipative nanofluid flow under the influence of a magnetic field. The following findings can be drawn from the exact results: • The decrement in motion is seen for both Fe 3