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Link to original content: https://doi.org/10.3390/sym14102212
Impact of Irregular Heat Sink/Source on the Wall Jet Flow and Heat Transfer in a Porous Medium Induced by a Nanofluid with Slip and Buoyancy Effects
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Article

Impact of Irregular Heat Sink/Source on the Wall Jet Flow and Heat Transfer in a Porous Medium Induced by a Nanofluid with Slip and Buoyancy Effects

1
Department of Mathematical Sciences, Faculty of Science and Technology, Universiti Kebangsaan Malaysia, UKM, Bangi 43600, Malaysia
2
Department of Mathematics and Social Sciences, Sukkur IBA University, Sukkur 65200, Pakistan
3
Department of Mathematical Sciences, Federal Urdu University of Arts, Science & Technology, Karachi 75300, Pakistan
4
Department of Industrial & Systems Engineering, College of Engineering, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia
5
Center of Research, Faculty of Engineering, Future University in Egypt, New Cairo 11835, Egypt
6
Department of Mathematics, College of Science, King Khalid University, P.O. Box 960, Abha 62529, Saudi Arabia
7
Research Center for Advanced Materials Science (RCAMS), King Khalid University, P.O. Box 9004, Abha 61413, Saudi Arabia
8
Fakulti Teknologi Kejuruteraan Mekanikal dan Pembuatan, Universiti Teknikal Malaysia Melaka, Hang Tuah Jaya, Durian Tunggal 76100, Malaysia
9
Department of Mathematics, City University of Science and Information Technology, Peshawar 25120, Pakistan
*
Author to whom correspondence should be addressed.
Symmetry 2022, 14(10), 2212; https://doi.org/10.3390/sym14102212
Submission received: 15 September 2022 / Revised: 10 October 2022 / Accepted: 17 October 2022 / Published: 20 October 2022
(This article belongs to the Special Issue Recent Advances in Conjugate Heat Transfer)

Abstract

:
In many industries, extremely high-performance cooling is a crucial requirement. However, the fundamental challenge to developing energy-efficient heat transfer fluids required for cooling is insufficient thermal conductivity. In this case, the utilization of nanofluid is effective to overcome these challenges. The current study aims to examine the two-dimensional (2D) stretching wall jet heat transfer fluid flow induced by a water-based alumina nanofluid embedded in a porous medium with buoyancy force. In addition, irregular heat sink/source and slip effects are assessed. The leading partial differential equations are changed into ordinary differential equations by incorporating similarity variables, then these equations are computationally or numerically worked out via the boundary-value problem of fourth-order (bvp4c) technique. The pertinent factors influencing the symmetry of the hydrothermal performance including friction factor, velocity, and temperature profiles, are illustrated using tables and graphs. The symmetrical outcomes reveal that the velocity declines in the presence of nanoparticles, whereas the temperature uplifts both assisting and opposing flows. Moreover, the friction factor augments due to porosity while the heat transfer rate declines.

1. Introduction

Numerous researchers are interested in the study of laminar jet flow due to its many experimental and prospective usages, such as computer cooling mechanisms, drying of spray paint on vehicles or structures, cooling jets of turbo machinery parts, the flow of sluice gate, tampering of metal and plastic sheets, etc. The estimation of the boundary layer, which is widely employed in practice, can be used to efficiently simplify the issues with laminar wall jets. The relevant non-similarity (or similarity) findings were found to be important for predicting their performances.
It is accredited that Glauert [1] is accepted as being the first to describe the issue with the wall jet that is produced over a solid stationary wall, and provided a solution. He claims that the outside momentum flux, a quantity that is infrequently decipherable as a physical idea, is related to the second similarity restriction. Riley [2] looked at the impact of mechanical features on a laminar wall jet. Merkin and Needham [3,4], and others, refined Glauert’s model by taking into account situations when both wall suction or blowing and wall motion are allowed. They discovered that, in the case of a traveling wall, the identical enlightenment could only be reached by appropriately exerting lateral suction through the requisite moveable surface. According to Magyari and Keller [5], the second similarity limitation put forward by Glauert [1] can be maintained via the relationship between suction and the movable wall condition. Furthermore, Cohen et al. [6], and Xu et al. [7] showed that original results are predominantly accessible exterior of Glauert’s model momentum limitation. It should be noted that the novel results described by Magyari and Keller [5], and given by Cohen et al. [8] and Xu et al. [9], looked to be mathematically disappearing outside of the wall. Moreover, the numerical and analytical developments in the analysis of wall jet flows were considered in several articles [10,11,12].
Choi [13] invented the term nanofluids (NFs), which are aqueous dispersions of particles of up to 100 nm in size, distinguished by increasing viscosity and thermal conductivity. The transport properties of NFs are influenced by the thermophysical properties of nanoparticles and normal fluids. The addition of solid nanoparticles upsurges the normal fluid’s effective thermal conductivity, which enhances the characteristics of heat transfer (HT). In an excellent analysis, Manca et al. [14] utilized different approaches and strategies, such as enhancing the HT surface or the factors that develop HT, and facilitating appreciably elevated heat transfer rates in a limited volume between the surface and the fluid. Cooling is an important mechanical concern that appears in numerous industries, including: microelectronics, manufacturing, transportation, and solid-state lighting. When millimeter- or micrometer-sized metal oxide or solid metal particles are added to ordinary fluids, the resulting fluid thermal conductivity rises. Zaidi and Mohyud-Din [15] explored the analysis of Lorentz forces on the dynamics of wall jets and heat transfer flows via the approach of phase change material (PCM). Further, the features of heat transfer on wall jet nanoparticles flow with the influence of Lorentz forces were discovered by Sandeep and Animasaun [16]. Jafarimoghaddam [17] calculated the analytical outcome for the heat and mass transfer characteristics of the wall jet flow conveying nanofluid, while the existence of this nanofluid model was first established by Buongiorno [18]. Mousavi et al. [19] presented the experimental and theoretical models to present dual solutions of Casson fluid through a stretchable/shrinkable sheet induced by nanofluid with magnetic effects. They observed that the magnetic effect accelerates the velocity of the nanofluid. Dinarvand and Nejad [20] investigated a three-dimensional (3D) flow near an off-centered stagnation point from a spinning disk stimulated by a hybrid nanofluid. Recently, Khan et al. [21] utilized the heat transfer flow model in the presence of SAE50-ZnO nano-lubricants, where the influence of mass transpiration velocity and porous medium (PM) was significant in the presence of Glauert transformations. It was discovered that the unique numerical solutions for the existing models had varying distinct influential factors; one of the constraints, such as nanoparticles volume fraction, amplified the behavior of the temperature, however, the velocity declined.
The inertial influences and barriers, in terms of PM, which could change flow tendency or patterns along with heat transmission, are not taken into consideration by the Darcy law model. It is vital to identify the situations in which these implications are impactful. Hong et al. [22] claim that the reference of the Brinkman [23] model, which explains Darcy’s rule, can be additionally utilized in no-slip circumstances. Ishak et al. [24] studied the time-independent stagnation-point flow induced by a vertical object immersed in a Darcy–Brinkman porous medium (DBPM) with a uniform wall temperature. Additionally, the buoyancy, stagnation point, and porous medium impression through a vertical plate flow were studied by Rosali et al. [25]. They noticed the multiple branch outcomes for the phenomena of opposing as well as assisting flows. Pantokratoras [26] scrutinized the features of forced convection and HT flow over a posited heated plane geometry embedded in DBPM. The bio-convective nanofluid flow over a heated wedge in the existence of DBPM was carefully examined by Zaib et al. [27]. Recently, the significant role of the porous dissipation, slip effects, and frictional heating over a stretchable sheet saturated in the extended DBPM was investigated by Kausar et al. [28].
Numerous engineering techniques rely on mixed-convection or buoyancy flow. Some transportation technologies including photovoltaic cells, nuclear reactors, semiconductors, and boilers, use a combination of free and forced convective movement. When the hydrostatic pressure caused by the thermal gradient between both the solid surface and the free stream increases and has a substantial impact on the thermal fields in addition to the flow, a mixed convective flow is necessary. Ramachandran et al. [29] scrutinized the 2D flow across a vertical surface approaching a boundary layer under mixed convection while accounting for fluctuations in variable surface heat flux and arbitrarily high wall temperature. Multiple outcomes were found in that specific zone of flow for a particular range of buoyancy parameters, and they showed that an area of down flow was generated in the domain of oppositional flow. Devi et al. [30] comprehend their work in the case of time-dependent flow, where the unsteady velocity of the free stream magnifies the imbalance in the flow and temperature. Ishak et al. [31] examined the mixed convection-induced stagnation point flow and heat transfer over a permeable plate. In contrast to the frequently reported solutions for the opposing flow, it was shown that two different solutions occurred for the buoyant aiding flow.
Following the outcome of an intensive review of the literature, it is paramount to update the body of knowledge with not only the effects of rising velocity slip on the wall jet flow of water conveying alumina nanoparticles subject to irregular heat sink/source through porous medium, but also to establish a comparative analysis between the assisting and opposing nature of buoyancy forces. In addition, the similarity solutions of the boundary layer equation will be sought; according to which, the forms of the velocity distribution across the jet and the heat transfer coefficient associated with variable hot fluid at the surface of the plate are assumed. Numerical solutions were constructed for the case of assisting and opposing flows for the given models in the form of several graphs and tables showing the impact of distinct influential parameters. To the best of our knowledge, this problem has never been addressed or considered before, and the findings are new and novel.

2. Mathematical Background of the Problem

Consider the phenomenon of the wall jet flow configuration model, which is shown schematically in Figure 1. The existing physical model is a 2D laminar mixed convective wall jet flow and heat transfer stimulated by nanofluid through a stretching and slippery surface, with the inspiration of irregular heat sink/source and Darcy–Brinkman porous medium. The assumption is that the synchronized x and y axes are represented in the posited direction of the wall and orthogonal to the geometry of the sheet, respectively. The velocity of the surface of the wall jet is taken to be the sum of the stretching velocity plus slippery velocity, and mathematically defined as u ( x , 0 ) = 4 x B + u s l i p , where B is the stretching rate factor. In addition, the non-linear variable wall and far-field temperatures are denoted by T w ( x ) and T , respectively. Moreover, Q A A A denotes the non-uniform heat source/sink term, which is taken in the energy equation and later it is explained in detail. These presumptions enable the following leading equations (see Refs. [1,10]) to be obtained:
u x + v y = 0 ,
u u x + v u y = ε a 2 μ e f f ρ n f 2 u y 2 ε a 2 μ n f ρ n f K ( x ) u + g ( ρ β ) n f ρ n f ( T T )
( ρ c p ) n f ( u T x + v T y ) = k n f 2 T y 2 + Q A A A
subject to the boundary conditions (BCs)
u = 4 x B + γ 1 ( x ) μ n f u y , v = 0 , T = T w ( x ) = T + T 0 x 2 , at   y = 0 , u 0 , T T as y . }
In the above equations, v and u are the respective velocity components in the requisite directions of y - and x - axes while T is called the nanofluid temperature. Further, γ 1 ( x ) represents the slip velocity, which is mathematically defined as A x 3 / 4 , where A is the positive arbitrary constant. Further, K ( x ) and ε a signify the permeability coefficient of the PM and the porosity parameter, respectively. Likewise, the last term Q A A A in Equation (3) illustrates the significance of an erratic or non-uniform heat sink/source as demonstrated in [32]:
Q A A A = k n f u r ( x ) x v n f ( T w T ) [ A a * e ξ + B a * G ( ξ ) ] ,
where the locus point velocity is denoted by u r ( x ) = 4 x (see Refs. [33,34]). Meanwhile, the heat source/sink, similar to the temperature-dependent and the corresponding exponential decay space coefficients, are represented by the respective arbitrary constants A a * and B a * . As a result, the phenomena of a heat source correlate to the positive value of A a * and B a * , whereas the behavior of a heat sink correlates to the negative value of A a * and B a * .
In the aforementioned equations, the rest of the symbols represent the thermophysical properties of the posited nanofluid (NF). Other symbols include the thermal expansion coefficient ( ρ β ) n f , viscosity μ n f , thermal conductivity k n f , density ρ n f , and heat capacity ( ρ c p ) n f . The correlation of the NF model is given by:
μ n f μ f = 1 ( 1 φ ) 2.5 ,   ρ n f ρ f = φ ( ρ s n p ρ f ) + ( 1 φ ) ,
( ρ β ) n f ( ρ β ) f = φ ( ( ρ β ) s n p ( ρ β ) f ) + ( 1 φ ) .
k n f k f = k s n p + 2 k f 2 φ ( k f k s n p ) k s n p + 2 k f + φ ( k f k s n p ) ,
( ρ c p ) n f ( ρ c p ) f = φ ( ( ρ c p ) s n p ( ρ c p ) f ) + ( 1 φ ) .
The above leading equations illustrate the physical features of the water-based alumina nanofluid, where φ illustrates the volume fraction of nanoparticles. Additionally, f and s n p are the subscript used for regular water fluid and the nanoparticles. Table 1 contains the data of the base working fluid and alumina nanomaterials.

2.1. Similarity Procedure

Here, we include the similarity transformation procedure according to Glauert [1] in order to analyze the given wall jet flow model under consideration:
ξ = ( α f 2 x 3 ) 1 / 4 y , ψ = ( α f 2 x ) 1 / 4 F ( ξ ) , G ( ξ ) = T T T w T ,
where the stream function is represented by ψ . Further, in components form it is indicated by ( u , v ) = ( ψ / y , ψ / x ) . Therefore, the consequent components of velocity in the simple closed form may be written as:
u = 4 x F ( ξ ) , v = α f x 3 / 4 ( F ( ξ ) 3 ξ F ( ξ ) )

2.2. Momentum Similarity Equation

In this portion, it is crucial to exercise Equations (10) and (11) in the leading governing Equations (1) and (2). However, Equation (1) is identically satisfied while Equation (2) is transformed to the following reduced form:
ε b ρ n f / ρ f F + F F + 2 F 2 μ n f / μ f ρ n f / ρ f K a F + ( ρ β ) n f / ( ρ β ) f ρ n f / ρ f λ G = 0
where ε b = υ e f f ε a 2 α f , K a = υ f ε a 2 K 0 , and λ = g β f T 0 4 = G r x / Re x 2 represent the modified porosity, the non-dimensional permeability, and the mixed convection parameter, respectively. Additionally, the local Grashof number and the local Reynolds number are expressed by G r x = g β f ( T w T ) 4 3 x 3 4 2 υ f 2 and Re x = u r x υ f , respectively.

2.3. Energy Similarity Equation

To adjust the structure of Equation (3) to a more straightforward form, Equation (5) is substituted into Equation (3), to obtain the energy equation in the following simplified form:
u T x + v T y = k n f ( ρ c p ) n f 2 T y 2 + k n f u r ( x ) ρ n f x μ n f ( ρ c p ) n f [ A a * ( T w T ) e ξ + B a * ( T T ) ]
Additionally, we replace each term in the Equation (13) by using the well-known similarity variables (10). Thus, the following dimensionless form of equation is obtained:
k n f k f G + ( ρ c p ) n f ( ρ c p ) f ( 8 G F + F G ) + 4 Pr ( k n f / k f ) ( ρ n f / ρ f ) μ n f / μ f ( A a * e ξ + B a * G ) = 0 ,
where Pr = υ f α f is called the Prandtl number.

2.4. Reduced Boundary Conditions (BCs)

Equation (4) is transformed by utilizing Equation (10) to the following dimensionless form:
{ F ( 0 ) = B + μ n f μ f Σ a F ( 0 ) , F ( 0 ) = 0 , G ( 0 ) = 1 , at   ξ = 0 , F ( ξ ) 0 , G ( ξ ) 0 , as ξ ,
where Σ a = A μ f α f represents the velocity slip parameter and B is called the stretching parameter whose default value is fixed to be 0.01 throughout the simulations.

2.5. Engineering Quantities

This work contains two important engineering quantities: the skin friction coefficient ( C f ) , and the local Nusselt number ( N u x ) , which are expressed as:
C f = 1 ρ f u r 2 ( μ n f u y | y = 0 ) ,   and   N u x = k n f / k f ( T w T ) ( x T y | y = 0 )
Now exercising Equation (10) into Equation (16), one obtains
2 Re x Pr C f = μ n f μ f F ( 0 )   and   2 N u x P e x = k n f k f G ( 0 )
where Pr = υ f α f , P e x = u r x α f , and Re x = u r x υ f , indicate the Prandtl number, the Peclet number, and the Reynolds number, respectively.

3. Results and Discussion

This paper considers the scenario of slip effects on the dynamics of stretching wall jet and heat transfer flows through a porous medium subject to a non-uniform heat sink/source. The analysis of this problem is analyzed to observe the phenomena of assisting and opposing flows. The numerical scheme exercised here is bvp4c which is available in the MATLAB software. It operates the three-stage Lobatto formula to compute and illustrate the numerical results, which are then presented in the forms of tables and graphs. In this technique, a new set of variables are introduced to transform the higher-order ODEs into first-order ones. The numerical solutions for the influential control parameters, i.e., the nanoparticle volume fractions φ , the porosity parameter ε b , the buoyancy parameter λ , the dimensionless permeability porous medium parameter K a , the velocity slip parameter Σ a , and the irregular heat source/sink parameter A a * ,   B a * , are computed for the wall jet flow, heat transfer, friction factor, and temperature profiles. Note that for computation purposes, the following fixed or default values are used K a = 0.05 , Σ a = 0.50 , A a * = 0.10 , B a * = 0.10 , ε b = 0.70 , and φ = 0.025 . Additionally, Table 1 presents the data of the physical properties of the base water fluid and the nanomaterials while the comparison of the friction factor for the limiting cases is shown in Table 2. In this comparison table, the current results are matched with the available values of the friction factor for the normal fluid with the results of Glauert [1] and Wiani et al. [35]. The outcomes are comparable with the available work, which gives us confidence that the present method is applicable for finding the new results. The impressions of the various factors on the dynamics of jet flow, temperature, friction factor, and heat transport phenomena are depicted graphically in Figure 2, Figure 3, Figure 4, Figure 5, Figure 6, Figure 7, Figure 8, Figure 9, Figure 10, Figure 11, Figure 12, Figure 13, Figure 14 and Figure 15, and quantitatively in Table 3 and Table 4. In addition, the analysis of the whole paper is completed to determine the circumstance of assisting flow (ASF) as well as the opposing flow (OPF). In all graphs, solid black is used for the ASF and red is used for the OPF, and can be easily differentiated.

3.1. Analysis of the Tables

Table 3 and Table 4 elucidate the numerical output of the friction factor and heat transfer for the assisting flow (ASF; 0.003) as well as the opposing flow (OPF; −0.003) with varying values of the distinct parameters, respectively. The outcome divulges that the friction factor escalates for ASF and OPF with increasing values of φ , K a , and ε b while it reduces with greater impact of Σ a . In addition, the friction factor is larger for the case of ASF as compared to the case of OPF. The computational quantitative data of the HT for both ASF and OPF cases are presented in Table 4 with deviation in the impact of φ and the internal heat source/sink factor. It is noted from the results that the HT augments with φ and heat sink factor ( A a * , B a * < 0 ) while it reduces with the heat source factor ( A a * , B a * > 0 ) for both ASF and OPF. The heat transfer is smaller for the case of ASF as compared to the case of OPF. In other words, the heat transfer rate is escalating for both cases owing to the impact of superior values of the heat source factor, whereas the heat transfer declines due to the heat sink factor.

3.2. Interpretation of the Velocity Profiles

The velocity profile F ( ξ ) for different values of φ , ε b , K a and Σ a in the existence of the water-based alumina nanoparticles are depicted in Figure 2, Figure 3, Figure 4 and Figure 5. It is evident from these graphs that the dimensionless velocity decelerates for the diverse values of φ , ε b , and K a . Generally, a higher impact of nanoparticles makes the fluid flow phenomenon more viscous, therefore, the motion of the wall jet flow (MWJF) and MBLT shrink, as shown graphically in Figure 2. The graphical behavior of Figure 3 illustrates that the higher values of the porosity parameter are directly following the relation with viscosity. Increasing the porosity results in the viscosity upsurges, and in response, the motion of the wall jet flow falls for both assisting and opposing flows. However, in the specific range of 0 ξ < 2 , the velocity declines and then monotonically upsurges due to the larger values of Σ a . In addition, the velocity is approximately 1.125 higher in the vertical direction and lower by approximately 0.534 for the larger impacts of dimensionless permeability and velocity slip parameters, respectively, as shown in Figure 4 and Figure 5. Physically, this behavior occurs because of the stretched surface that may carry the liquid particles, which causes a decrease in the MWJF as the velocity slip factor increases. When the slip effect exists, the stream motion of the fluid near the surface is no longer equal to the speed at which the surface is stretched. Due to the limited ability of the stretching surface to communicate with the liquid under slip conditions, the fluid motion decreases, and slip velocity rises as the slip impact enhances.

3.3. Interpretation of the Temperature Profiles

The impact of parameters φ , ε b , K a , Σ a , A a * , B a * > 0 , and A a * , B a * < 0 on the temperature profile for ASF and OPF cases in the existence of water-based alumina nanoparticles are graphically exhibited in Figure 6, Figure 7, Figure 8, Figure 9, Figure 10 and Figure 11, respectively. Figure 6 shows that the curves of temperature and the thermal boundary layer thickness (TBLT) initially behave distinctly for the higher values of φ and then the pattern of curves continues to increase as we move forward in the horizontal direction. The behavior of the temperature distribution is demonstrated by the inset zoom window, which shows clearly visible outcome gaps. Moreover, the TBLT is initially higher in the phenomenon of OPF and later, it increases in the case of the ASF. Physically, the improvement in the nanoparticles volume fractions leads to advancing the thermal conductivity. As a response, the behavior of the TBLT and the dimensionless temperature upsurge. The temperature profile initially upsurges in the approximate range 0 ξ < 1.6 , and then declines abruptly for the rest of the domain for both cases owing to the higher porosity parameter as shown in Figure 7, while the reverse pattern is observed for the superior values of K a (see Figure 8). From the mathematical expression, it is seen that the porosity parameter is inversely related to the thermal diffusivity. Thermal diffusivity is equal to the ratio of thermal conductivity to specific heat capacitance. Physically, the increase of the porosity parameter leads to a decline in thermal diffusivity. The amount of thermal conductivity is affected by this decrease in thermal diffusivity. Hence, the TBLT and the temperature profile decelerate.
Figure 9 and Figure 10 illustrate that the profile of temperature initially boosts up, and then smoothly falls with the larger impression of the slip parameter, as well as the internal heat source factor, respectively. From both plots, it is induced that profiles are better for OPF in the range of 0 ξ < 2.25 , and then changes to the ASF phenomenon for the rest of the domain along the horizontal direction. Generally, the existence of the heat source factor absorbs more heat in the form of energy due to the pertinent surface of the wall jet, which ultimately rises the temperature. The temperature declines and then increases for the rest of the domain with the greater impressions of the heat sink factor as shown in Figure 11. Here, the TBLT and temperature decelerates due to less energy being absorbed in the form of heat, due to the existence of the heat sink factor. In addition, the outcome for the case of assisting flow is better than that of the opposing flow.

3.4. Interpretation of the Gradient

Figure 12 and Figure 13 portray the drag force and the rate of heat transport in the existence of the water-based alumina nanoparticles for different values of porosity parameter ε b for the ASF and OPF cases, respectively. Both figures are presented against the solid nanoparticles volume fractions. The friction factor enriches the case of ASF as well as OPF due to the higher impacts of ε b , while heat transfer decelerates. Generally, it is seen that the thermal diffusivity of the nanoparticles slows down with the higher porosity parameter, whereas the effective viscosity increases. Firstly, higher viscosity means that the fluid nanoparticles stick on the surface of the wall, due to which the flow of the liquid stops near the surface. The flow of the posited liquid and friction factor holds the inverse proportional law. Hence, the friction factor upsurges. Secondly, the lowering of thermal diffusivity creates less thermal conductivity, which provides negligible improvement to thermal transport. Thus, the rate of heat transfer decelerates. The impressions of the dimensionless permeability parameter on the friction factor and heat transfer for ASF and OPF against the solid nanoparticle volume fractions are graphically presented in the respective Figure 14 and Figure 15. Likewise, the behavior of the friction factor upheavals in both cases for the higher values of K a , however, the rate of heat transport loses speed in the case of assisting flow. Meanwhile, the heat transfer behaves differently for the case of opposing flow as we improve the effects of the permeability parameter. In addition, the outcomes of both gradients are higher and better for the case of assisting flow as compared to the case of opposing flow.

4. Conclusions

The goal of this paper was to study the mixed convective and slip effects on the dynamics of wall jet flow and heat transfer, through an extended Darcy–Brinkman porous medium conveying water-based alumina nanoparticles, while experiencing the substantial impacts of non-uniform heat sink/source. The leading equations were converted to ODEs using the Glauert variables, which were fundamentally worked out numerically using the effective bvp4c scheme. The significant findings of this investigation are as follows:
  • The outcomes of the given problem are numerically solved, and graphically demonstrated for ASF and OPF cases.
  • For mounting values of the solid nanoparticles volume fractions, the fluid velocity reduces, but the temperature upsurges.
  • The fluid velocity decelerates with the enlightening value of the porosity parameter and the dimensionless permeability parameter, while initially it declines, and then enriches because of the impacts of the velocity slip parameter.
  • Enhancing the heat sink factor reduces the fluid temperature; however, it raises due to the heat source factor.
  • The consequences of the temperature are initially upsurging and then decreasing due to the superior effects of porosity constraint, while the reverse pattern is detected for the impacts of the dimensionless permeability parameter.
  • The friction factor coefficient is boosted due to the variation of the porosity parameter; however, the heat transport phenomenon decelerates.
  • Owing to the sophisticated impacts of the dimensionless permeability porous medium parameter, the heat transfer reduces while the friction factor elevates.

Author Contributions

Conceptualization, S.E. and U.K.; methodology, S.E. and U.K.; software, M.W., S.E., Z.R. and U.K.; validation, A.I., S.E., A.Z., U.K. and S.M.E.; formal analysis, A.Z., I.W., S.E., Z.R. and S.M.E.; investigation, U.K., I.W., Z.R. and S.M.E.; resources, I.W.; data curation, M.W., Z.R.; writing—original draft preparation, M.W., A.I., A.Z., U.K., I.W. and S.M.E.; writing—review and editing, A.I., A.Z., Z.R., I.W. and S.M.E.; visualization, Z.R. and S.E.; supervision, A.I.; project administration, Z.R.; funding acquisition, Z.R. and S.M.E. All authors have read and agreed to the published version of the manuscript.

Funding

The author expresses their appreciation to the Princess Nourah bint Abdulrahman University Researchers Supporting Project number (PNURSP2022R163), Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia. Also, this work was funded by the King Khalid University through a grant KKU/RCAMS/22 under the Research Center for Advance Materials (RCAMS) at King Khalid University, Saudi Arabia.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors are thankful for the support of Princess Nourah bint Abdulrahman University Researchers Supporting Project number (PNURSP2022R163), Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia. Also, this work was supported by the King Khalid University through a grant KKU/RCAMS/22 under the Research Center for Advance Materials (RCAMS) at King Khalid University, Saudi Arabia.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The physical configuration of the wall jet flow embedded nanofluid.
Figure 1. The physical configuration of the wall jet flow embedded nanofluid.
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Figure 2. Velocity profile for ASF and OPF with varying values of φ .
Figure 2. Velocity profile for ASF and OPF with varying values of φ .
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Figure 3. Velocity profile for ASF and OPF with varying values of ε b .
Figure 3. Velocity profile for ASF and OPF with varying values of ε b .
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Figure 4. Velocity profile for ASF and OPF with varying values of K a .
Figure 4. Velocity profile for ASF and OPF with varying values of K a .
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Figure 5. Velocity profile for ASF and OPF with varying values of Σ a .
Figure 5. Velocity profile for ASF and OPF with varying values of Σ a .
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Figure 6. Temperature profile for ASF and OPF with varying values of φ .
Figure 6. Temperature profile for ASF and OPF with varying values of φ .
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Figure 7. Temperature profile for ASF and OPF with varying values of ε b .
Figure 7. Temperature profile for ASF and OPF with varying values of ε b .
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Figure 8. Temperature profile for ASF and OPF with varying values of K a .
Figure 8. Temperature profile for ASF and OPF with varying values of K a .
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Figure 9. Temperature profile for ASF and OPF with varying values of Σ a .
Figure 9. Temperature profile for ASF and OPF with varying values of Σ a .
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Figure 10. Temperature profile for ASF and OPF with varying values of the heat source factor A a * , B a * > 0 .
Figure 10. Temperature profile for ASF and OPF with varying values of the heat source factor A a * , B a * > 0 .
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Figure 11. Temperature profile for ASF and OPF with varying values of the heat sink factor A a * ,   B a * < 0 .
Figure 11. Temperature profile for ASF and OPF with varying values of the heat sink factor A a * ,   B a * < 0 .
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Figure 12. Friction factor against φ for ASF and OPF with varying values of the porosity factor ε b .
Figure 12. Friction factor against φ for ASF and OPF with varying values of the porosity factor ε b .
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Figure 13. Heat transfer against φ for ASF and OPF with varying values of the porosity factor ε b .
Figure 13. Heat transfer against φ for ASF and OPF with varying values of the porosity factor ε b .
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Figure 14. Friction factor against φ for ASF and OPF with varying values of the dimensionless permeability factor K a .
Figure 14. Friction factor against φ for ASF and OPF with varying values of the dimensionless permeability factor K a .
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Figure 15. Heat transfer against φ for ASF and OPF with varying values of the dimensionless permeability factor K a .
Figure 15. Heat transfer against φ for ASF and OPF with varying values of the dimensionless permeability factor K a .
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Table 1. The thermo-physical data of the (water/alumina) nanofluid [35].
Table 1. The thermo-physical data of the (water/alumina) nanofluid [35].
Properties c p   ( J   k g K ) ρ   ( k g / m 3 ) k   ( W / m k ) β × 10     5   ( 1 / K ) Pr
Water4179997.10.613216.2
Alumina7653970400.85---
Table 2. Shear stress values are compared with available reported works for several values of φ when Σ a = 0.0 , ε b = 1.0 , λ = 0.0 , A a * = B a * = 0.0 , K a = 0.0 and B = 0.0 .
Table 2. Shear stress values are compared with available reported works for several values of φ when Σ a = 0.0 , ε b = 1.0 , λ = 0.0 , A a * = B a * = 0.0 , K a = 0.0 and B = 0.0 .
φ
Glauert [1]Waini et al. [35]Present
0.0002/9 ≈ 0.22220.22220.2222
0.025--0.4006
0.028--0.59401
0.0310.71393
0.034--0.87302
Table 3. Friction factor numerical values for the several influential parameters.
Table 3. Friction factor numerical values for the several influential parameters.
φ K a ε b Σ a Friction Factor
0.003−0.003
0.0250.0500.700.400.79323381890.6242576091
0.030---0.80075646040.6318354940
0.035---0.80874300700.6392456091
0.0250.0500.700.400.79323381890.6242576091
-0.060--0.91286200170.7721701525
-0.070--1.01499349000.8938132833
0.0250.0500.700.400.79323381890.6242576091
--0.75-0.82105915130.6518865063
--0.80-0.83464476330.6597975267
0.0250.0500.700.400.79323381890.6242576091
---0.500.58889946470.4347352368
---0.600.45561073660.3117279003
Table 4. Heat transfer numerical values for the two influential parameters.
Table 4. Heat transfer numerical values for the two influential parameters.
φ A a * , B a * Heat Transfer
0.003−0.003
0.0250.05−0.7557537084−0.9303200468
0.030-−0.6358841159−0.8093478976
0.035-−0.5239899765−0.6990133988
0.0250.05−0.7557537084−0.9303200468
-0.10−0.9587543760−1.2569368340
-0.15−1.2013738070−1.7892556200
0.025−0.05−0.4291625318−0.4968754566
-−0.10−0.2934822708−0.3352141018
-−0.15−0.1710612547−0.1951264997
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Khan, U.; Zaib, A.; Ishak, A.; Elattar, S.; Eldin, S.M.; Raizah, Z.; Waini, I.; Waqas, M. Impact of Irregular Heat Sink/Source on the Wall Jet Flow and Heat Transfer in a Porous Medium Induced by a Nanofluid with Slip and Buoyancy Effects. Symmetry 2022, 14, 2212. https://doi.org/10.3390/sym14102212

AMA Style

Khan U, Zaib A, Ishak A, Elattar S, Eldin SM, Raizah Z, Waini I, Waqas M. Impact of Irregular Heat Sink/Source on the Wall Jet Flow and Heat Transfer in a Porous Medium Induced by a Nanofluid with Slip and Buoyancy Effects. Symmetry. 2022; 14(10):2212. https://doi.org/10.3390/sym14102212

Chicago/Turabian Style

Khan, Umair, Aurang Zaib, Anuar Ishak, Samia Elattar, Sayed M. Eldin, Zehba Raizah, Iskandar Waini, and Muhammad Waqas. 2022. "Impact of Irregular Heat Sink/Source on the Wall Jet Flow and Heat Transfer in a Porous Medium Induced by a Nanofluid with Slip and Buoyancy Effects" Symmetry 14, no. 10: 2212. https://doi.org/10.3390/sym14102212

APA Style

Khan, U., Zaib, A., Ishak, A., Elattar, S., Eldin, S. M., Raizah, Z., Waini, I., & Waqas, M. (2022). Impact of Irregular Heat Sink/Source on the Wall Jet Flow and Heat Transfer in a Porous Medium Induced by a Nanofluid with Slip and Buoyancy Effects. Symmetry, 14(10), 2212. https://doi.org/10.3390/sym14102212

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