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Article

Significance of Ternary Hybrid Nanoparticles on the Dynamics of Nanofluids over a Stretched Surface Subject to Gravity Modulation

1
Department of Physics, College of Science, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia
2
Department of Mathematics, Faculty of Science, University of Tabuk, P.O. Box 741, Tabuk 71491, Saudi Arabia
3
School of Mechanical Engineering and Automation, Harbin Institute of Technology, Shenzhen 518055, China
4
Department of Mathematics, University of the Punjab, Lahore 54590, Pakistan
5
Department of Mechanical Engineering, Sejong University, Seoul 05006, Republic of Korea
*
Authors to whom correspondence should be addressed.
Mathematics 2023, 11(4), 809; https://doi.org/10.3390/math11040809
Submission received: 6 January 2023 / Revised: 24 January 2023 / Accepted: 29 January 2023 / Published: 5 February 2023
(This article belongs to the Special Issue Numerical and Analytical Study of Fluid Dynamics)

Abstract

:
Boosting the heat transfer rate in a base fluid is of interest to researchers; many traditional methods have been utilized to do this. One significant way is using nanofluid to boost thermal performance. This investigation sought to improve the transmission of a thermal above-stretching inclined surface over an upper surface to be influenced by the magnetic field B 0 along the microgravity g * ( τ ) = g 0 ( 1 + a cos ( π ω t ) ) . The G-jitter impacts were analyzed for three colloidal fluids flow; the mono micropolar nanofluid (alumina/water), micropolar hybrid nanofluid (alumina–titanium)/water, and micropolar trihybrid nanofluid (alumina–titanium–silicon)/water. Using suitable transformation, the governing formulation was changed into an ordinary differential equation. In a Matlab script, a computational code was composed to evaluate the impacts of the involved parameters on fluid dynamics. The fluid flow motion and thermal performance for the trihybrid case were greater than the mono and hybrid nanofluid cases subject to a microgravity environment. The fluid velocity and microrotation function decreased in opposition to the magnetic parameter’s increasing strength, but with an increasing trend in the fluid temperature function. Fluctuations in the velocity gradient and heat flow gradient increased as the modulation amplitude increased.
MSC:
35Q30; 76D05; 76R10

1. Introduction

The colloidal combination of a base fluid with one type of nanoparticle is called a nanofluid. This type of fluid is exceptionally valuable in thermal management and cooling, fluid temperature enhancement and diminution, pharmaceutical processes, and microelectronics. Profound investigations into this fluid revealed that it contains two types of nanoparticles that are heavily mixed with the base fluid (i.e., a hybrid nanofluid). At different temperatures, the alumina-based fluid dynamic viscosity changes with nanoparticle shapes [1]. The different shapes of tiny particles have differences in the interactions and agglomeration, and host fluids are associated with surface charges. Recently, the colloidal combination of three different types of tiny particles of nanoparticles subject to one base fluid—the trihybrid nanofluid—has started; the results of a couple of investigations appear to be insightful and encouraging. The thermal analysis of a mass ratio 4:4:2 to produce carbon nanotubes and carbonate nanofluid shows that it is beneficial with super-critical power plants because of thermal diffusiveness along the stability, which enhance negligibility due to increments in heat transfer (Sang et al. [2]). Mousavi et al. [3] explored the dynamics of the H 2 O transmission of magnesium and copper oxide with titanium oxide. Sahoo and Kumar [4] investigated the thermal characteristics of water-transmitting titanium oxide and copper oxide alumina nanoparticles (ternary hybrid nanofluid). The heat transfer in the base fluid was enhanced due to various shapes of nano-sized particles [5] and trihybrid fluid temperatures were higher compared to the single and two-type nanoparticle suspensions with base fluids [6].
The majority of the time, in microgravity or low gravity environments, the existence of temperature differences and gravitational fields can produce buoyancy convective fluxes. In this situation, sedimentation and the flow of buoyancy-driven fluid highly decreased. This G-jitter impact has been focused on by many researchers (in many geometries and conditions). There are numerous uses for G-jitter convection, including crew motion, sprays, spacecraft, etc. Following Sharidan et al. [7], the gravity acceleration takes the following form: g * ( t ) = g o [ 1 + ϵ c o s ( π ω t ) ] k . Here, g * ( t ) , acting for unit vector k, presents an upward direction, ϵ represents the scaling parameter, g o shows the average time value of the gravitational acceleration, t is the time, and ω shows the frequency of the G-jitter-driven flux oscillation. Many physical aspects of the investigated works have illustrated certain attributes, such as the G-jitter magnetic hydrodynamic flux [8], the Jeffrey fluid with a microgravity-inclined surface [9], the analysis of the heat-transferred rate with the existence of G-jitter [10], non-Newtonian fluids with impacts on the G-jitter force [11,12].
There is interest in non-Newtonian analyses since these fluids are largely encountered in the industry and physiology. Bile, blood, animal and human feces, chyme, lubricants, paints, and oils are common examples of non-Newtonian fluids. One significant obstacle in the analysis of such fluids is the failure of a single constitutive equation from the Newtonian fluid model to accurately predict the behaviors of these fluids. Various models of fluids capable of successfully predicting the fluid’s viscoelastic behaviors were offered to fill this gap. Presently, non-Newtonian fluids play vital roles in several industrial implementations, such as polymer, plastic production, the manufacturing of paper, and in various technological processes. Shehzad et al. [13] studied the impacts of multi-layer coatings of MHD non-Newtonian and Newtonian liquids by a porous–inclined rotational channel. Awan et al. [14] studied the significance of aggregation of Coriolis forces based on non-Newtonian. Ali et al. [15] analyzed the significance of mixed convection and hydrodynamics with Casson-based fluid over the stagnation point of a spinning sphere via FEM simulations. Koriko et al. [16] explained the impacts of magnetic flux and melting temperature transportation on non-Newtonian liquid flux toward the stagnation point. Abiev et al. [17] illustrated the two-phase mathematical model—Taylor flux hydrodynamics for four Newtonian and non-Newtonian liquids in microchannels.
Various analysts and researchers have investigated the magnetohydrodynamic (MHD) fluxes of materials across surfaces with tremendous thermophysical attributes, heat transmission performances, and valuable uses in daily life. MHD utilizations may emerge in astrophysics sensors, magnetic drug targeting, and engineering; in particular, in forming the stars, magnetic fields play a vital role. Due to these lasting benefits, researchers and investigators are inspecting MHD flux. MHD applications cover large ranges of physical areas. They are used in industrial equipment, physics, chemistry, and engineering implementations, such as boundary layer control, petroleum, and pumps. In the last few decades, research into significant MHD applications has been conducted [18,19,20,21]. There is inherent trouble in seeking solutions in the non-linearity connected with the convective terms of mathematical formulations. Such types of problems have been tackled using different numerical techniques, such as the RK method, BVP4c, boundary element, finite volume, finite difference, spectral element method [22], etc. The FEM is one of the most famous and powerful numerical tools; it has been used by numerous developers and users to numerically solve complex types of engineering problems. Many researchers use this technique to solve boundary value problems subject to various shapes of geometries [23,24,25].
Recently, augmented thermal operations have enhanced missions as a result of contemporary technological advancements. Utilizing nanoparticles has made it possible to meet expanding demands in large quantities. The primary aim of this study is to show the influence of trihybrid nanoparticles on the dynamics of a micropolar nanofluid subjected to an inclined–extended surface in the presence of a regularly changing gravity environment. The above studies show that less consideration is given to this study; this report will be useful for experts to explore various features and analyze the different outcomes. In a recent analysis, the FEM simulation was intended to clarify the effects of flow on microgravity on the flow and temperature characteristics of A l 2 O 3 , T i O 2 , S i O 2 , and H 2 O (trihybrid nanofluids) due to an inclined extending surface. The present inquiry seeks to answer the following research questions:
  • What effects do the Lorentz force, micropolar material, and trihybrid nanofluid heat transfer have when there is microgravity?
  • What are the differences between trihybrid, hybrid, and mono nanofluids in terms of heat distribution and flow that are affected by microgravity?
  • How does one observe the effects of the frequencies of oscillation and modulation amplitudes for trihybrid, hybrid, and mono nanofluids with G-jitter due to inclined and raised surfaces in higher dimensional spaces?

2. Flow Model Mathematical Formulation

Here, we examine the influence of microgravity on the flow of non-Newtonian fluid and the thermal attributes of A l 2 O 3 , T i O 2 , S i O 2 , and H 2 O (trihybrid nanofluid) because of the extended surface, as presented in Figure 1. In this report, γ , B o , T , and T w are inclined angles, a uniform magnetic field in the y-direction, the ambient value of the temperature, and the constant temperature, respectively. The normal axis of the surface is the y-axis; along the x-axis, the surface is extending. Moreover, it is assumed that the linear velocity is u w = b x ( b > 0 ). Thermophysical characteristics of H 2 O (water-based fluid), A l 2 O 3 , T i O 2 , and S i O 2 (ternary nanoparticles) are shown in Table 1, and no slip occurs between the tiny particles and water-based fluid; solid particles are in thermal equilibrium. Solid particle agglomeration is ignored due to the mixture. Further, the momentum equation associated with the gravitational field is affected by g * ( t ) = g o [ 1 + ϵ c o s ( π ω t ) ] k . The mass, linear momentum, angular momentum, and energy (heat) conservation governing equations for the trihybrid nanofluid can be written as [26,27]:
x u ˜ o + y v ˜ o = 0 ,
ρ n f ( t u ˜ o + u ˜ o x u ˜ o + v ˜ o y u ˜ o ) = ( μ n f + κ ) y y u ˜ o σ B 0 2 u ˜ o + κ y N ˜ + g * ( t ) ( ρ n f β ) ( T ˜ T ˜ ) cos α ,
j ρ n f ( t N ˜ + u ˜ o x N ˜ + v ˜ o y N ˜ ) = γ * ( μ n f + κ 2 ) y y N ˜ κ ( 2 N + x u ˜ o )
t T ˜ + u ˜ o x T ˜ + v ˜ o y T ˜ = α ˜ y y T ˜ .
where the ( u ˜ o , v ˜ o ) velocity variables along x, y, N ˜ & T ˜ represent the angular velocities with the temperature of the fluid, ( ρ n f , κ , C p , μ n f , α ˜ , γ * , β , σ ), and are, respectively, the density, vortex viscosity, specific heat of the fluid, dynamical viscosity, thermo-diffusivity, viscosity spin gradient of fluid, thermal expansion, and electric conduction. Ali et al.’s [28] spin gradient of fluid viscosity is taken into account γ * = μ n f ( j + κ 2 j ) ; here, K = κ / μ n f , presents the material parameter, and elaborates on the problem of the necessary boundary conditions [11,12]:
t = 0 : u ˜ o = v ˜ o = 0 , T ˜ = T ˜ , t > 0 : u ˜ o = u ˜ w , v ˜ o = 0 , N ˜ = 0 , T ˜ = T ˜ w , a s y = 0 , u ˜ o 0 , N ˜ 0 , T ˜ T ˜ , a s y .
The mathematical formula for thermal physical attributes of mono, hybrid, and trihybrid nanofluids [32,33] are as follows:
1.
Density
μ n f = μ f ( 1 Φ ) 2.5 , μ h n f = μ f ( 1 Φ 2 ) 2.5 ( 1 Φ 1 ) 2.5 , μ T h n f = μ f ( 1 Φ 1 ) 2.5 ( 1 Φ 2 ) 2.5 ( 1 Φ 3 ) 2.5 ,
2.
Viscosity
ρ n f = Φ ( ρ s ρ f ) + ( 1 Φ ) , ρ h n f = Φ 2 ρ s 2 + ( 1 Φ 2 ) ( ( 1 Φ 1 ) + Φ 1 ρ s 1 ρ f ) , ρ T h n f = [ ( 1 Φ 1 ) [ ( 1 Φ 2 ) ( ( 1 Φ 3 ) ( ρ f + ρ 3 Φ 3 ) ) + ( ρ 2 Φ 2 ) ] + ρ 1 Φ 1 ] ,
3.
Heat Capacity
( ρ C p ) n f = Φ ( ( ρ C p ) s ( ρ C p ) f ) + ( 1 Φ ) , ( ρ C p ) h n f = ( 1 Φ 2 ) ( ( 1 Φ 1 ) + Φ 1 ( ρ C p ) s 1 ( ρ C p ) f ) + Φ 2 ( ρ C p ) s 2 , ( ρ C p ) T h n f = ( 1 Φ 1 ) ( 1 Φ 2 ) ( 1 Φ 3 ) ( ρ C p ) f + ( ρ C p ) s 3 Φ 3 + ( ρ C p ) s 2 Φ 2 + ( ρ C p ) s 1 Φ 1 ,
4.
Thermal Conductivity
k n f k f = k 3 + 2 k n f 2 Φ 3 ( k n f k 3 ) k 3 + 2 k n f + Φ 3 ( k n f k 3 ) . k h n f k n f = k 2 + 2 k n f 2 Φ 2 ( k n f k 2 ) k 2 + 2 k n f + Φ 2 ( k n f k 2 ) , k T h n f k h n f = k 1 + 2 k n f 2 Φ 1 ( k n f k 1 ) k 1 + 2 k n f + Φ 1 ( k n f k 1 ) ,
In the above formulas, T h n f reflects the ternary hybrid nanofluid, h n f represents the hybrid nanofluid, n f denotes the nanofluid, and Φ 1 , Φ 2 , and Φ 3 are the volume fractions of the first, second, and third types of nanoparticles, respectively. We use the following non-dimensional variables (see [26]) to reduce the complexity of the elaborated problem.
η = a ˜ y 2 ν , ψ = a ν x F ( τ , η ) , τ = a ω , N = a ˜ ν H ( τ , η ) , θ ( τ , η ) = T ˜ T ˜ T ˜ w T ˜ ,
where ψ = a ν x F ( τ , η ) is a stream function that obeys the continuity; Equation (1) can be defined as u ˜ o = ψ / y and v ˜ o = ψ / x . By using Equation (6) in the governing equations, the following transformed governing equations are obtained:
( 1 χ 1 + K ) F + χ 2 F F χ 2 F 2 M F + χ 3 λ θ 1 + a cos π τ cos α + K H = χ 2 Ω F τ ,
( 1 χ 1 + 0.5 K ) H χ 2 F H + χ 2 F H K ( 2 H + F ) = χ 2 Ω H τ ,
χ 4 θ + P r χ 5 F θ P r χ 5 F θ = P r χ 5 Ω θ τ ,
F ( τ , η = 0 ) = H ( τ , η = 0 ) = 0 , F ( τ , η = 0 ) = 1 , θ ( τ , η = 0 ) = 1 , F ( τ , η ) 0 , H ( τ , η ) 0 , θ ( τ , η ) 0 ,
where
χ 1 = ( 1 Φ 1 ) 2.5 ( 1 Φ 2 ) 2.5 ( 1 Φ 3 ) 2.5 , χ 4 = k T h n f k f , χ 2 = ( 1 Φ 1 ) ( 1 Φ 2 ) ( 1 Φ 3 ) + ρ 3 ρ f Φ 3 + ρ 2 ρ f Φ 2 + ρ 1 ρ f Φ 1 , χ 3 = ( 1 Φ 1 ) ( 1 Φ 2 ) ( 1 Φ 3 ) + ( ρ β ) s 3 ( ρ β ) f Φ 3 + ( ρ β ) s 2 ( ρ β ) f ϕ 2 + ( ρ β ) s 1 ( ρ β ) f Φ 1 , χ 5 = ( 1 Φ 1 ) ( 1 Φ 2 ) ( 1 Φ 3 ) + ( ρ C p ) s 3 ( ρ C p ) f Φ 3 + ( ρ C p ) s 2 ( ρ C p ) f Φ 2 + ( ρ C p ) s 1 ( ρ C p ) f Φ 1 .
In the above Equations (7)–(9), the dimensionalized frequency is Ω = ω b , the magnetic field is M = σ B 2 0 b ρ n f , the thermal buoyancy is λ = g 0 β ( T ˜ w T ˜ ) x 3 / ν 2 ( u w x / ν ) 2 , Prandtl number is P r = ν α ˜ , and the material parameter is K = κ μ f . The Nusselt number and skin friction coefficient expressions are defined as:
N u = x q w κ ( T ˜ w T ˜ ) , C f = 2 τ w ρ n f u w 2 ,
the surface skin friction tensor τ w = ( ( μ ( T ) + κ ) y u ˜ 1 + κ N ) y = 0 and thermal flux at surface q w = κ ( y T ˜ ) y = 0 . In view of Equation (6), we have
C f x R e x 1 / 2 = ( 1 χ 1 χ 2 + K ) F ( τ , 0 ) , N u x R e x 1 / 2 = χ 4 θ ( τ , 0 ) .

3. Numerical Procedure

A potent method for dealing with various integrals, such as PDEs and ODEs, is the finite element approach [34]; it brings down the ’mistake’ size [35]. This unique (and essential) step strategy was outlined by Reddy [36] and Jyothi [23]. The literature states that FEM is an effective numerical methodology to discover approximated solutions of PDE and ODE systems that incorporate complex boundary conditions or geometry [24,25]. The FEM is one of the most powerful numerical tools used by developers and users to numerically solve complex types of engineering problems. The sophistication of this technique, its computability, simplicity, accuracy, and efficient results make this method a broadly used technique in boundary value problems. In order to solve Equations (7)–(9) along the boundaries (10), we assume the following:
F = ζ ,
System Equations (7)–(10) are transformed to less orders:
( K + 1 χ 1 ) ζ + χ 2 F ζ χ 2 ζ 2 M ζ + χ 3 λ θ 1 + a cos π τ cos γ + K G χ 2 Ω ζ τ ,
( 1 χ 1 + K 2 ) G + χ 2 F G χ 2 ζ G K ( 2 G + ζ ) χ 2 Ω G τ ,
χ 4 θ + P r χ 5 F θ P r χ 5 ζ θ + Q s P r θ P r χ 5 Ω θ τ ,
F ( τ , η = 0 ) = 0 , ζ ( τ , η = 0 ) = 1 , G ( τ , η = 0 ) = 0 , θ ( τ , η = 0 ) = 1 , ζ ( τ , η ) 0 , G ( τ , η ) 0 , θ ( τ , η ) 0 .
The fixed numerical estimates of the plate length, border thickness τ = 2.0 , and η = 5.0 , respectively. Equations (14)–(17) are provided by
Ω e * β 1 { F ζ } d Ω e * = 0 ,
Ω e * β 2 { ( 1 χ 1 + K ) ζ + χ 2 F ζ χ 2 ζ 2 M ζ + χ 3 λ θ 1 + a cos π τ cos γ + K G χ 2 Ω ζ τ } d Ω e * = 0 ,
Ω e * β 3 { ( 1 χ 1 + 0.5 K ) G + χ 2 F G χ 2 ζ G K ( 2 G + ζ ) χ 2 Ω G τ } d Ω e * = 0 ,
Ω e * β 4 { χ 4 θ + P r χ 5 F θ P r χ 5 ζ θ + Q s P r θ P r χ 5 Ω θ τ } d Ω e * = 0 .
where β 1 , β 2 , β 3 , and β 4 are the arbitrary functions by dividing the domain ( Ω e * ) into four node elements. A finite element’s associated approximations are as follows:
F = j = 1 4 F j Ψ j ( τ , η ) , ζ = j = 1 4 ζ j Ψ j ( τ , η ) , θ = j = 1 4 θ j Ψ j ( τ , η ) .
Ψ j (j = 1, 2, 3, 4) are interpolations for rectangular elements Ω e given by
Ψ 1 = ( τ e + 1 τ ) ( η e + 1 η ) ( τ e + 1 τ e ) ( η e + 1 η e ) , Ψ 2 = ( τ τ e ) ( η e + 1 η ) ( τ e + 1 τ e ) ( η e + 1 η e ) ,
Ψ 3 = ( τ τ e ) ( η η e ) ( τ e + 1 τ e ) ( η e + 1 η e ) , Ψ 4 = ( τ e + 1 τ ) ( η η e ) ( τ e + 1 τ e ) ( η e + 1 η e ) .
Finite elements for the equations are given as:
[ L 11 ] [ L 12 ] [ L 13 ] [ L 14 ] [ L 21 ] [ L 22 ] [ L 23 ] [ L 24 ] [ L 31 ] [ L 32 ] [ L 33 ] [ L 34 ] [ L 41 ] [ L 42 ] [ L 43 ] [ L 44 ] { f } { ζ } { g } { θ } = { r 1 } { r 2 } { r 3 } { r 4 }
where [ L m n ] and [ r m ] (m,n=1,2,3,4) define:
L i j 11 = Ω e * Ψ i d Ψ j d η d Ω e , L i j 12 = Ω e Ψ i Ψ j d Ω e * , L i j 13 = L i j 14 = L i j 21 = L i j 31 = 0 L i j 22 = ( 1 χ 1 χ 2 + K ) Ω e * d Ψ i d η d Ψ j d η d Ω e * + Ω e * f ¯ Ψ i d Ψ j d η d Ω e * Ω e * ζ ¯ Ψ i Ψ j d Ω e * M χ 2 Ω e * Ψ i Ψ j d Ω e * Ω Ω e * Ψ i d Ψ j d τ d Ω e * , L i j 23 = K χ 2 Ω e * Ψ i d Ψ j d η d Ω e * , L i j 24 = χ 3 λ χ 2 ( 1 + a cos π τ ) cos γ Ω e * Ψ i Ψ j d Ω e * , L i j 33 = ( 1 χ 1 χ 2 + K 2 ) Ω e * d Ψ i d η d Ψ j d η d Ω e * + Ω e * f ¯ Ψ i d Ψ j d η d Ω e * Ω e * ζ ¯ Ψ i Ψ j d Ω e * 2 K χ 2 Ω e * Ψ i Ψ j d Ω e * Ω Ω e * Ψ i d Ψ j d τ d Ω e * , L i j 32 = K χ 2 Ψ i d Ψ j d η d Ω e * , L i j 34 = L i j 41 = L i j 42 = L i j 43 = 0 , L i j 44 = χ 4 χ 5 Ω e * d Ψ i d η d Ψ j d η d Ω e * + P r Ω e * f ¯ Ψ i d Ψ j d η d Ω e * P r Ω e * ζ ¯ Ψ i Ψ j d Ω e * P r Ω Ω e * Ψ i d Ψ j d ξ d Ω e * + P r Q s χ 5 Ω e * ζ ¯ Ψ i Ψ j d Ω e * .
and
r i 1 = 0 , r i 2 = ( 1 χ 1 χ 2 + K ) Γ e Ψ i n η q ˜ η d s , r i 3 = ( 1 χ 1 χ 2 + K 2 ) Γ e Ψ i n η h ˜ η d s , r i 4 = χ 4 χ 5 Γ e Ψ i n η θ ˜ η d s .
Known values are taken as F ¯ = j = 1 4 F ¯ j Ψ j , θ ¯ = j = 1 4 θ ¯ j Ψ j , and ζ ¯ = j = 1 4 ζ ¯ j Ψ j . The domain is divided into equal grids of rectangular elements 101 × 101 . We examine each node’s four functions. After assembly, we obtained 40,804 non-linear equations; therefore, an iterative method was used to solve them with the necessary 10 5 accuracy.

4. Results and Discussion

The results of Equations (7)–(10) are presented in the form of graphs and tables, and then the skin friction coefficient F ( t a u , 0 ) , thermal transmission θ ( τ , η ) , micropolar mono, hybrid, and trihybrid nanofluid velocities F ( τ , η ) , local thermal transmission rate θ ( τ , 0 ) , and microrotation H ( τ , η ) . In Figure 2, Figure 3, Figure 4, Figure 5, Figure 6, Figure 7, Figure 8, Figure 9 and Figure 10, three sets plotted for the above-shown quantities are drawn with respect to three mediums, A l 2 O 3 /water, A l 2 O 3 T i O 2 /water, and A l 2 O 3 T i O 2 S i O 2 /water. The default quantities of the parameters were M = K = λ = 1.0 , S f = 3.0 , P r = 0.72 , Ω = 0.2 , a = 0.2 α = π / 4 , Φ 1 = 0.06 (for the monofluid), Φ 1 = 0.03 & Φ 2 = 0.3 (for the hybrid nanofluid), and Φ 1 = 0.02 , Φ 2 = 0.2 & Φ 3 = 0.2 (for the trihybrid nanofluid). Compared to the earlier published results, the FEM technique is taken for validity (see Table 2 and Table 3).
In Figure 2a,b, F ( τ , η ) represents the outcomes that are perceptible in relation to the dimensionless characteristics of dimensionless functions M and K. It appears that the increasing inputs of magnetic parameters M decrease the momentum of fluid. Due to this output, increasing reactions for opposing forces are associated with the development of strength. This can be related to the fact that the growing strength of the magnetic field produces the Lorentz force, which slows down the fluid velocity due to opposing forces [14]. Figure 2b illustrates that the relationship between the material parameter and accelerated bulk flow is direct; K ( K = κ / μ n f ) . The viscous effect decreases as the flow inertia increases, leading to a faster flow that may be explained by the growth of K. In Figure 3a,b, the FEM values for the micro-rotation H ( τ , η ) are plotted where the influences of magnetic and material parameters are observed. Both graphs show that H ( τ , η ) increases with magnified values of the material parameter K and declines against higher inputs of the magnetic parameter M due to enhancement in the boundary thickness. The temperature distribution graphs θ ( τ , η ) in Figure 4a,b reveal that rising values of the magnetic parameter M improve the temperature functions but diminish notably against the rising impact of K. The rising thermal patterns noticed for the growing values of M are common because of the valuable heat-producing from the resistive impact of the Lorentz force [41]. From these figures, the trihybrid nanofluid curves are greater than the curves created by mono and hybrid nanofluids. Hence, ternary nanoparticles are noticed as more efficient at enhancing the base fluid temperature. Trihybrid nanoparticles are more efficient at maximizing thermal performances [42,43].
In Figure 5, Figure 6, Figure 7 and Figure 8, the skin friction coefficient C f x R e x 1 2 used variable values of certain parameters that were mapped over normalized time t a u . Figure 5a,b, show the fluctuations in velocity gradients with respect to rising values of M and the acceleration modulation a. By increments in the acceleration modulation, skin friction rises; from Figure 5a, it is concluded that C f x R e x 1 2 also increases by rising magnetic parameters. Skin friction is at its peak in the mono nanofluid case as compared to the trihybrid nanofluid. Figure 6a,b depicts the impacts of the velocity gradient F ( τ , 0 ) according to different values of inclined angles α and acceleration modulation parameters a. It is clear that there is little effect on the velocity gradient by higher inputs of inclination angles and acceleration modulation. By magnified values of both parameters, the velocity gradient increases, but it is at its peak for mono nanofluid compared to the trihybrid nanofluid. Figure 7a,b denotes the impact of the thermal buoyancy parameter and acceleration modulation parameter on the velocity gradient. The velocity gradient at the surface has meager variations as it is influenced by the thermal buoyancy function λ T and amplitude parameter a, as shown in the figures. Figure 8a,b show how the material parameter K affects skin friction and the local wall thermal transmission. The Nusselt number’s & local skin friction coefficient at the surface attained increments by amplified values of material parameters. However, by higher inputs of K, skin friction was at its peak value in the case of mono nanofluid, and the Nusselt number was at its peak value in the case of the trihybrid nanofluid.
Figure 9 and Figure 10 illustrate the surface temperature gradients along τ . From Figure 9a,b, it can be seen that the temperature gradient θ ( τ , 0 ) fluctuates and increases when the values of the magnetic parameter M and the acceleration parameter a rise. The temperature gradient attains maximum value for trihybrid nanofluid and minimum for mono hybrid nanofluid. Significant characteristics of the gradient of the temperature θ ( τ , 0 ) exhibited in Figure 9a assured that for the corrected input of the buoyancy parameter λ T ( λ T = 1.0 ) and variation of the acceleration parameter a, there was a significant difference in θ ( τ , 0 ) for the trihybrid nanofluid and mono nanofluids. Moreover, by contrasting the graphs in Figure 10a,b, it demonstrates that the pattern of fluctuation for θ ( τ , 0 ) (due to the influence of modulation parameter a) is more prominent for the fixed value of λ T ( λ T = 3.0 ) than that of λ T = 1.0 . From both figures, it can be observed that the temperature gradient obtained its peak value for the trihybrid nanofluid.

5. Conclusions

We investigated the importance of the trihybrid nanofluid with G-jitter effects for three colloidal fluid movements, i.e., micropolar nanofluid (copper/water), micropolar hybrid nanofluid (alumina–titanium/water), and micropolar trihybrid nanofluid (alumina–titanium–silicon/water), subjected to the stretch surface. Notable results are given as follows:
  • The velocity of fluid F ( τ , η ) of mono nanofluids, hybrid nanofluids, and trihybrid nanofluids decelerated in the face of increasing inputs of the magnetic parameter M, and increased against the material parameter K.
  • The microrotation H ( τ , η ) of mono nanofluids, hybrid nanofluids, and trihybrid nanofluids declined with the growing potential of the magnetic parameter, but when inputs increased, it increased the micropolar material parameter K.
  • The temperature of fluid θ ( τ , η ) significantly increased the M, but declined against the material parameter K ( K > 0 ) .
  • Compared to the mono nanofluid flow, the temperature for the tri-nanofluid flow reached greater levels.
  • The variation in the decreased skin friction improved with greater inputs of M, a ( a > 0 ) and λ T . However, it attained a higher peak value for the mono nanofluid compared to the tri-nanofluid.
  • Reduced skin friction was better achieved as the plane inclined, but it was worse for mono nanofluids.
  • There were increases in the skin friction factor and Nusselt number with material parameter K but the velocity gradient attained a peak value in the case of mono nano fluids; the temperature gradient attained a higher value for the trihybrid nanofluid.
  • The larger strength of the magnetic parameter M and acceleration modulation a improved the Nusselt number.
  • The Nusselt number varied in the face of λ T &a and it improved greatly when these parameters increased; the trihybrid nanofluid flow achieved greater values than the nanofluid flow alone.

Author Contributions

Methodology, M.M.A.; Software, S.M.; Validation, N.A.A.; Investigation, A.A.H.; Writing—original draft, B.A.; Writing—review & editing, N.A.S. All authors have read and agreed to the published version of the manuscript.

Funding

The authors extend their appreciation to the Deputyship for Research & Innovation, Ministry of Education, Saudi Arabia, for funding this research work through project number RI-44-0357.

Data Availability Statement

Not applicable.

Acknowledgments

The authors extend their appreciation to the Deputyship for Research & Innovation, Ministry of Education, Saudi Arabia, for funding this research work through project number RI-44-0357.

Conflicts of Interest

The authors declare no conflict of interest.

Nomenclature

u ˜ o Along x-axis velocity component v ˜ o Along x-axis velocity component
N ˜ Angular velocity T ˜ Temperature of fluid
ρ n f Nanofluid density κ Vortex viscosity
C p Specific heat of fluid μ n f Dynamical viscosity
α ˜ Thermo diffusivity γ * Viscosity spin gradient of fluid
β Thermal expansion σ Electric conduction
KMaterial parameter γ Inclined angle
B o Uniform magnetic field T w Constant surface temperature
T Ambient value of temperatureMMagnetic parameter
u w Sheet linear velocity Ω Dimensionalize frequency
λ thermal buoyancyPrPrandtl number
Φ 1 First nanoparticle volume fraction Φ 2 Second nanoparticle volume fraction
Φ 3 Third nanoparticle volume fractiongGravitational acceleration
q w Heat flux at surface R e x Reynolds number

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Figure 1. Physical model of developed trihybrid nanofluid model.
Figure 1. Physical model of developed trihybrid nanofluid model.
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Figure 2. (a) Fluctuation of M on F ( τ , η ) ; (b) Fluctuation of K on F ( τ , η ) .
Figure 2. (a) Fluctuation of M on F ( τ , η ) ; (b) Fluctuation of K on F ( τ , η ) .
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Figure 3. (a) Fluctuation of M on H ( τ , η ) ; (b) Fluctuation of K on H ( τ , η ) .
Figure 3. (a) Fluctuation of M on H ( τ , η ) ; (b) Fluctuation of K on H ( τ , η ) .
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Figure 4. (a) Fluctuation of M on θ ( τ , η ) ; (b) Fluctuation of K on θ ( τ , η ) .
Figure 4. (a) Fluctuation of M on θ ( τ , η ) ; (b) Fluctuation of K on θ ( τ , η ) .
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Figure 5. (a) Fluctuation of M on C f x R e x 1 / 2 ; (b) Fluctuation of M on C f x R e x 1 / 2 .
Figure 5. (a) Fluctuation of M on C f x R e x 1 / 2 ; (b) Fluctuation of M on C f x R e x 1 / 2 .
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Figure 6. (a) Fluctuation of α on C f x R e x 1 / 2 ; (b) Fluctuation of α on C f x R e x 1 / 2 .
Figure 6. (a) Fluctuation of α on C f x R e x 1 / 2 ; (b) Fluctuation of α on C f x R e x 1 / 2 .
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Figure 7. (a) Fluctuation of λ T on C f x R e x 1 / 2 ; (b) Fluctuation of λ T on C f x R e x 1 / 2 .
Figure 7. (a) Fluctuation of λ T on C f x R e x 1 / 2 ; (b) Fluctuation of λ T on C f x R e x 1 / 2 .
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Figure 8. (a) Fluctuation of K on C f x R e x 1 / 2 ; (b) Fluctuation of K on N u x R e x 1 / 2 .
Figure 8. (a) Fluctuation of K on C f x R e x 1 / 2 ; (b) Fluctuation of K on N u x R e x 1 / 2 .
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Figure 9. (a) Fluctuation of M on N u x R e x 1 / 2 ; (b) Fluctuation of M on N u x R e x 1 / 2 .
Figure 9. (a) Fluctuation of M on N u x R e x 1 / 2 ; (b) Fluctuation of M on N u x R e x 1 / 2 .
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Figure 10. (a) Fluctuation of λ T on N u x R e x 1 / 2 ; (b) Fluctuation of λ T on N u x R e x 1 / 2 .
Figure 10. (a) Fluctuation of λ T on N u x R e x 1 / 2 ; (b) Fluctuation of λ T on N u x R e x 1 / 2 .
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Table 1. Water and thermophysical properties of nanoparticles [29,30,31].
Table 1. Water and thermophysical properties of nanoparticles [29,30,31].
Physical PropertiesAl2O3TiO2SiO2H2O
ρ3970.0425022700991.1
Cp0765.06907654179.0
κ0040.08.9531.401300.613
Table 2. H ( 0 ) & F ( 0 ) against K & M , when α = a = λ = Ω = 0 .
Table 2. H ( 0 ) & F ( 0 ) against K & M , when α = a = λ = Ω = 0 .
MKAli et al. [37]Soaib et al. [38]Present Results
F ( 0 ) H ( 0 ) F ( 0 ) H ( 0 ) F ( 0 ) H ( 0 )
0.00.2−0.909690.09499−0.909790.09489−0.909840.09500
0.5−1.114370.10509−1.114380.10509−1.114370.10509
1.0−1.287150.11206−1.287150.11205−1.287110.11212
1.00.0−1.414210.00000−1.414230.00000−1.414230.00000
0.5−1.140780.21116−1.140770.21117−1.140730.21116
2.0−0.769750.35866−0.769760.35865−0.769760.35861
Table 3. Comparison of θ ( 0 ) via growing values of P r when λ = Ω = α = a = M = 0 .
Table 3. Comparison of θ ( 0 ) via growing values of P r when λ = Ω = α = a = M = 0 .
P r Sharidan et al. [7]Khan et al. [39]Bagh et al. [40]Current Results
1.00−1.0000−1.0000−1.00001−1.000008
3.00−1.9238−1.9237−1.92367−1.923676
10.0−3.7225−3.7207−3.72067−3.720669
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Alanazi, M.M.; Ahmed Hendi, A.; Ahammad, N.A.; Ali, B.; Majeed, S.; Shah, N.A. Significance of Ternary Hybrid Nanoparticles on the Dynamics of Nanofluids over a Stretched Surface Subject to Gravity Modulation. Mathematics 2023, 11, 809. https://doi.org/10.3390/math11040809

AMA Style

Alanazi MM, Ahmed Hendi A, Ahammad NA, Ali B, Majeed S, Shah NA. Significance of Ternary Hybrid Nanoparticles on the Dynamics of Nanofluids over a Stretched Surface Subject to Gravity Modulation. Mathematics. 2023; 11(4):809. https://doi.org/10.3390/math11040809

Chicago/Turabian Style

Alanazi, Meznah M., Awatif Ahmed Hendi, N. Ameer Ahammad, Bagh Ali, Sonia Majeed, and Nehad Ali Shah. 2023. "Significance of Ternary Hybrid Nanoparticles on the Dynamics of Nanofluids over a Stretched Surface Subject to Gravity Modulation" Mathematics 11, no. 4: 809. https://doi.org/10.3390/math11040809

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