Comprehensive analysis on copper-iron (II, III)/oxide-engine oil Casson nanofluid flowing and thermal features in parabolic trough solar collector

Heat is absorbed from radiations of the sun by a solar collector, concentrated, and then transmitted to an active nanofluid. The flow of Casson nanofluid is utilized in Parabolic Trough Solar Collector (PTSC) in the present analysis over an infinite and porous sheet. Ordinary differential equations are derived in nonlinear form and solved using suitable similarity transformation reducing into boundary conditions. Keller box method was employed to solve the system of ODEs. Results for nanofluids of Copper-engine oil (Cu-EO), as well as Iron (II, III) oxide-engine oil (Fe3O4-EO), were examined and detailed. With the help of the induced magnetic factor, the rate of heat transfer decreased while the parameter of skin resistance increased prominently. While using Cu/Fe3O4-EO as base fluid, the rate of heat transfer is an important factor. Total enhancement in the thermal efficiency of Cu-EO on Fe3O4-EO has a minimum value of 2.7% while the maximum value is 18.5%.


Introduction
Solar energy is a luminous light as well as the heat coming from the sun, which is made useful utilizing different ever-growing technologies. Solar thermal energy, solar heating, solar architecture, photovoltaic, artificial photosynthesis, and molten salt power plants are a few of its forms. It is a capital source of energy that can be made renewable using different technologies. It is mainly the best source to generate electricity for having a great amount of magnitude [1]. Mainly there are two types of solar energy. One is photovoltaic and the other is solar thermal energy. Photovoltaic energy is formed utilizing photovoltaic solar technology that changes solar energy directly into electricity with the help of solar panels that are made using cells of semiconductors. Later is obtained with the help of solar thermal technology. Here, heat from the sun's radiation is absorbed to either directly convert it into electricity or first into mechanical energy and then into electricity [2]. The importance of solar energy is undeniable, just like its benefits. As many businessmen and homeowners are using solar panels. As solar energy does not need any fossil fuels, so it is a good choice for the environment. As solar energy has no contribution to global warming, so it is preferable. As fossil fuels usually run out that's why conventional electricity is found expensive. Solar energy is a reliable source of energy as well as cost-effective. Installing solar energy panels needs money just once, but using conventional electricity is an expensive and ongoing way as its rates are always rising. Solar energy saves much of your money. According to a recent census, the solar energy sector employed 17% more jobs than the overall economy of a country. As solar energy is purely sun' energy, so there is no need for grid stations. It helps in energy independence [3]. Solar energy has wide applications. Solar distillation, solar water heating, solar cooking, solar heating of buildings, solar furnaces, solar greenhouses, solar thermal power production, and solar electric power generation are a few of its applications [4].
Long and parabolic-shaped mirrors are used to make a linear and concentrating system, along with a receiver tube placed in the focal axis of the parabola, called a parabolic trough collector (PTC). The receiver tube is used to focus the DNI where HTF is absorbing the solar energy. It is the most mature technology [5]. Applications of PTSC involve cooling, heat drivenrefrigeration, and heat demand having low temperature along with high rates of consumption, like space heating, swimming pool heating, and domestic hot water [6]. Nanofluids are suspended nano-sized particles that make collisions in the fluid. Nanofluids are used in a fluid to increase heat capacity and heat transfer abilities. Major applications of nanofluids focus on their main type known as nano-suspension. Recently, nanotechnology is playing a major role in the process of heat transfer and energy applications. Its best application is the production of nanofluids having high thermal conductivity. When nanofluids are mixed in the working fluids, base fluids show huge enhancement in their thermal features [7]. Sheikhpour et. al [8] worked on nanofluids in the medical field to check the role of nanofluids. In the biomedical field, its applications involve drug delivery systems, antibiotic activities, and imaging. Drug delivery and differential diagnosis are targeted through applying magnetic systems of nanofluids. & Das [9] reviewed the various methods to prepare the nanofluids, their uses, and surfactants used to stabilize them. Wang & De Leon [10] focused on new and recent applications of nanofluids by improving the controllable features of heat transfer and other prominent characteristics. Using Nickel Ferrite (NiFe 2 O 4 ) nanofluid and U-tube as new base fluid and absorbent respectively, Dehaj et. al [11] investigated the efficiency of PTSC. Nickel Ferrite nanofluid was developed using a two-step procedure. Alashkar & Gadalla [12] used Ag/Therminol nanofluids in PTSC to check their impact on the efficiency of the power plant that was based on PTSC. Pressure drops and coefficient of convective heat transfer were observed under the impact of nanofluids. They also studied the pumping power using various shapes and sizes of nanoparticles.
There are mainly two types of slip conditions. One is the no-slip boundary condition while the other is the slip boundary condition. In the no-slip boundary condition, also known as the no-velocity-offset boundary condition, a fluid layer having direct contact with the boundary has the same speed as the velocity of the boundary. As there is no relative motion between the two so no slip. In slip boundary conditions, there is a discontinuity between boundary and layer, hence slip exists. Case with slip boundary condition is rare in the field of microfluidics [13]. A boundary condition that is related to the convection heating on the surface and can be achieved through the balance of surface energy is called the convection boundary condition. Haq et al. [14] used an incompressible and viscous fluid flow having ramped wall temperature and heat transfer, to explore the effect of slip condition of the wall. Sayed et al. [15] used the convective boundary conditions and leaning and asymmetric tunnel to investigate the peristaltic transfer of hyperbolic tangent nanofluid. Srinivasacharya & Himabindu [16] utilized the porous tunnel to represent the influence of velocity slip and convective heating on the flow of an incompressible fluid having micro-polar generation. Acharya et al. [17] made an analysis using a permeable stretching surface to explore the impact of second order slip mechanism on the flow of nanofluid.
Casson fluid is such a shear-thinning fluid that is considered to have zero viscosity at the infinite shear rate but infinite viscosity at zero shear rates. Its examples include honey, jelly, soap, concentrated fruit juices, tomato sauce, as well as human blood. Casson fluid model is for non-Newtonian fluids. Existence of fibrinogen, protein, and globulin in aqueous plasma results in the formation of a chain-like arrangement by red blood cells of a human being, called rouleaux. If it operates as a plastic solid, there can be a presence of yield stress which can be recognized as the constant yield stress of the Casson fluid [18]. The flow of the blood at a low rate of shear that is passing through the small tubes is described by Casson fluid model. The non-linear stretching surface was utilized by Mukjopadhyay [19] to examine the impacts of heat transfer along with the flow of Casson fluid. MHD flow of Casson fluid was used to study the Dufour and Soret impacts over a stretching sheet [20,21]. Chamkha and Aly [22] used Dufour and Soret effects along with various chemical reactions to analyze the mass and heat transfer in the polar fluid flow over a stretching and porous sheet. Nonlinear set of Casson constitutive equations was derived by Casson [23] depicting the various characteristics of polymers. Non-Newtonian nanofluids have many technological and industrial applications. Some of them are biological solutions, asphalt, paints, glues, tars, and melts of polymers. Recently, they are of great interest in every field [24][25][26]. Sivaraj & Banerjee [27] analyzed recent features of non-Newtonian nanofluids to give guidelines to future researchers. Few research works to be noted from the literature are [28][29][30][31][32][33]. Abdelsalam & Bhatti [34] used the effect of hall currents and magnetic field to examine the motion of non-Newtonian nanofluid that has peristaltic and unsteady nature. They also utilized chemical reactions along with ion slip. Niu et al. [35] used a micro-tube to study the heat transfer and slip flow of non-Newtonian nanofluid, theoretically. Flow features were described using power-law rheology.
Thermal conductivity is the measurability of some substance that how much it can conduct the heat in itself. So it is mainly dependent on temperature. In gasses, the thermal conductivity increases with an increase in temperature but in solid, thermal conductivity decreases. As every material has its thermal conductivity so it is variable significantly. Variable thermal conductivity is a linear function of temperature. Hayat et al. [36] used a stretchable sheet of changeable thickness to analyze the stagnation point flow with temperature depending on thermal conductivity. They utilized Catteneo-Christov theory, chemical reaction, and double stratification. Abel & Mahesha [37] worked on MHD boundary layer flow along with features of heat transfer of non-Newtonian and viscoelastic fluid. They utilized a flat surface under the effect of nonuniform heat source and thermal radiation as well as linear velocity. They also utilized variable thermal conductivity. Sharma & Singh [38] investigated the influence of heat source and variable thermal conductivity on a viscous and incompressible fluid flow with electrical conductance properties. They used variable free stream and uniform transverse magnetic field close to the stagnation point of stretchable surface that is nonconducting. Chiu [39] employed variable thermal conductivity to evaluate the optimal length and competency of the convective and rectangular fin with the help of Adomian decomposition technique. He also determined the distribution of temperature in the fin. Usman et al. [40] used 3D stretching surface to evaluate the prominent effects of time-dependent thermal conductivity and non-linear thermal radiation on the Cu-Al 2 O 3 -water hybrid nanofluid flow with rotation. They considered the effect of magnetic fields and bouncy forces. Lahmar et al. [41] worked on the special case between two parallel plates when there is the existence of an inclined magnetic field and thermal conductivity is dependent on temperature. They examine the heat transfer and flow of unsteady and squeezing (Fe 3 O 4 -water) nanofluid. Irfan et al. [42] used a bidirectional stretched sheet to obtain a relation of 3D Carreau nanofluid flow having force convection and unsteadiness. Variable thermal conductivity was employed to inspect heat transfer in Carreau nanofluid.
Mahian et al. [43] considered various flow systems and geometries to examine the contribution of heat transfer and flow in nanofluids on entropy generation. Bosca & Pop [44] used the stability of orthogonal shear of the surface to study the heat transfer and flow in hybrid nanofluids that are induced with an absorbable power-law stretching sheet. Selimefendigil & Öztop [45] studied the impact of a partially curved and porous sheet on features of entropy generation and thermal management inside the hybrid nanofluidfilled cavity with the help of finite volume method. Yang et al. [46] proposed a model for thermal conductivity using heat conduction analysis of finite length of cylindrical nanoparticles in the liquid. They obtained the radial and axial thermal conductivities. Figure 1 represents a parabolic trough, solar collector.
Literature mentioned above reveals that researchers had focused on thermal efficiency and entropy analysis of solar collectors and as such, nanofluid application becomes crucial in the analysis of PTSC. Hence, the authors would like to investigate the nanofluid in PTSC and the present research study focuses on entropy formation in PTSC in a MHD Casson nanofluid flow on an infinite horizontal surface. In this work, two tested nanofluid Cu-engine oil and Iron (II, III) oxide-engine oil operational fluids have been used to analyze the thermal efficiency of PTSC. Also, the effect of performance parameters, such as Nusselt number, skin resistance feature, Reynolds number, and Brinkman number on the entropy has been analyzed.

Mathematical formulation
Considering the two-dimensional flow of a non-Newtonian nanofluid passed over an extending sheet. It is also considered that the fluid properties are timeinvariant while the sheet is extended along the x-axis positive direction with a pace that is non-uniform In the equation above, c represents the initial stretching rate at the start of the process. The insulated heat of the sheet is w (x, t0) = ∞ + n * x and for convenience, an assumption is made that it is fixed at x = 0, where w and ∞ denote the respective temperatures of wall and environments and cn * is the temperature rate. It is also assumed that the slip-induced surface is exposed to a temperature gradient. In a direction normal to the flow, there is a uniform magnetic field of strength which is represented by B 0 is taken.

The norms and settings of the model
The following norms and settings are considered for the mathematical model: • Laminar, two dimensional, steady flow • Approximation of boundary layer • Single-phase model (Tiwari and Das) • Non-Newtonian Casson nanofluids • MHD • Porous media • Thermal radiation and conductivity being variable • Joule heating • Nanoparticles shape feature • Extending sheet being porous • Convection and non-Newtonian slip boundary conditions.

Stress tensor for Casson fluid
The shear-weakening property of the Casson fluid makes its viscosity inestimable for the zero she stress. The elementary equalities for the case of Casson fluid are incompressible with isotropic properties [47,48] where the non-Newtonian fluid is represented by μ nfB denoting its plastic dynamic viscosity and p y denoting its yield stress. e ij specifies the distortion level corresponding to the (i, j) th element, π = e ij e ij represents the square of the distortion level element, while π c . represents a critical value related to the earlier product rendering to the non-Newtonian model. Figure 2 illustrates the inside geometry of the PTSC.

Model equations
Impending the boundary layer, the prevailing equations corresponding to the Casson nanofluid flow and those related to heat transfer are derived in [49] ∂H 1 ∂x

Boundary conditions
The subsequent equations signify the boundary situations linked to the present model (for instance, see Jamshed [50]): Here H 1 and H 2 signify velocities in the corresponding directions of x and y, N L represents the slip length, while ρ nf , σ nf , and κ * nf ( ) respectively symbolize the density, electricalonductivity, and variable thermal conductivity associated with nanofluid. q r is a descriptive of the radiative heat flux while (C p ) nf stands for the specific heat capacity possessed by the nanofluid. V symbolizes how porous the stretching surface is. k is the solid thermal conductivity and h . represents the convective thermal transmitting factor.

Thermophysical properties corresponding to Casson nanofluid
In the base engine oil, the nanoparticles were suspended which causes enriched thermophysical properties. The subsequent equations encapsulate the material constraints for the Casson nanofluid [51][52][53].
Here φ is the fractional volume factor of nanoparticles. κ f , σ f , μ f , (C p ) f , and ρ f are respectively the thermal and electrical conductivity, dynamic viscosity, active heat capacity, and also the density of the base  level fluid. However, the same representation with subscript (s) represents the nanoparticle thermophysical characteristics.

Nanoparticle shape aspect m
The scale of altered nanoparticle forms is acknowledged as the nanoparticle shape aspect. Figure 3 exemplifies the observed shape aspect values obtained for a variety of particle shapes [54].

Nanoparticles and base fluid properties
The substantial properties of nanofluid with particle and engine oil with two dissimilar nanoparticles that are used in this research are specified in Table 1 [55-59].

Roseland approximations
Considering a non-Newtonian Casson nanofluid, only a short distance is travelled by radiation inside the fluid because of its thickness. Owing to this phenomenon, Rosseland approximation for radiative transfer [60] is used in Equation (5) and it is obtained that In which, σ * is used to represent the Stefan Boltzmann constant (a.k.a. Stefan constant) and k * known as absorption coefficient denotes the rate at which there is a decrease in incident radiation when depth increases.

Solving the problem
The PDEs system that directs the problem (3)- (7) is resolved by introducing stream functions ψ as below ψ(x, y) signifies the stream function and the subsequent equations define the similarity variables: defined Similarity transformation that is defined in Equations (11) and (12) is then used in Equations (3)-(7). Hence, non-dimensional equations are derived as follows. where In the equations above, the differentiation according tö θ * is represented by prime, the porous media and magnetic parameters are represented by

Numerical practice: Keller box method
It is complex to analytically solve a set of nonlinear systems of ODEs (13) and (14), arising as an output of mathematical modelling for the given physical system that corresponds to nanofluid flow. Thus, to find the numerical approximate solutions, a Keller box technique [61] scheme is employed. Being also recognized as the inherent finite difference method, this scheme is intrinsically steady, and to elaborate more, it is secondorder convergent. The following flow chart explains the procedure of the Keller box method (Figure 4).

Step 1: transfiguration of ODEs
There are several steps involved in the completion of the method. The first step involves the conversion of the ODEs (13)-(16) into a completed first-order system of codes.
1 Figure 4. Flow chart of Keller box method.

Step 2: discretization of domain
Once the first-order system is obtained, domain discretization must be conducted to determine the approximate solution. To do so, the domain is usually divided into a uniform grid. Highly accurate numerical results can be achieved by a relatively smaller grid ( Figure 5).
In this case, h = 0.01 is fixed. Afterward, difference equations are derived utilizing central differences. A replacement of functions with their associated mean averages is also conducted. Next, the ordinary differential system (19)- (24) is reduced to the nonlinear algebraic equations as follows.

Step 3: linearized utilizing Newton's method
Now, Newton's method is utilized to linearize the ensuing algebraic equations, i.e: Hence, by substituting this into Equations (25)- (29) along with ignoring ϒ i j in higher terms, the below system is determined as a linear tridiagonal system. where Using the similarity process the boundary conditions become

The Block tridiagonal matrix
The linearized differential Equations (30)-(35) have a block tridiagonal structure.
The system is written in a matrix-vector form as follows, For j = 1; In matrix form, ⎡ That is For j = 2; In matrix form, That is For j = J − 1; In matrix form, ⎡ That is For j = J; In matrix form, ⎡ That is

The Block elimination method
Eventually, the matrix form of the linear equations (30)-(35) is elaborated as Here R represents the J × J block which is a tridiagonal matrix and the size of each block is 5×5, whereas, ϒ and p are column vectors of order J × 1. The LU factorization technique is engaged to condense ϒ in a simple form. Where Rϒ = E, the block tridiagonal matrix R acts on vector ϒ to output another vector p. In LU factorization block, tridiagonal matrix R is further split into lower and upper triangular matrices, i.e. R = LU can be further written as LUϒ = E, then letting Uϒ = y yields Ly = E which gives a solution of y that is again plunged into Uϒ = y to solve for ϒ. Since triangular matrices are being dealt with, reverse-substitution is the way to go.

Physical concern parameters
The skin resistance (C f ) alongside the local Nusselt number (Nu x ) govern the flow and as the physical quantities of interest, they can be specified as [62] wherein τ w and q w signify the heat flux resolute by If the non-dimensional makeovers (12) are employed, it is gained as where Nu x represents Nusselt number and C f designates the condensed skin resistance. Re x = u w x ν f is local Re depend upon the extending velocity (u w (x)).

Investigation of the entropy formation
Energy wastage management were being one of the primary goals for eminent experts and engineers. So, it is vital to demeanour a study of system entropy formation that is the cause of destruction in available energy. A non-ideal consequence that tends to gain in entropy is MHD. In this case, nanofluids entropy generation can be derived as (for example, see Asif et al. [63]) The foremost in the above equation is the representative of irreversibility resulting from the thermal transmission, and the next term denotes the fluid resistance and later considers MHD & porous media effects, respectively. The entropy generation as a dimensionless factor is indicated as N G while being defined as [64]: Based on Equation (12), the dimensionless equation of entropy generation can be obtained as follows Here R e is the Reynolds number, B r is the Brinkman number, and γ is the dimensionless temperature gradient.

Verification of numerical results
In addition, the validity of the numerical technique was evaluated by matching the outcomes of thermal transmission obtained from the current technique with prevailing fallouts obtainable in the literature [65][66][67][68]. Table 2 shows that the evaluation of reliabilities all over the studies. However, the outcomes presented by this study are highly accurate.

Numerical fallouts and review
Owing to the better thermal efficiency, Engine oil-based Casson nanofluid combinations with Copper and Ferro oxide suspensions over the Parabolic Trough Solar Collector. Curious about exploring the facts of Fluid flow, thermal dispersion, and irreversible energy loss along with the frictional and heat transference aspects the outcomes were drawn for the parametrical impacts.

The effect of porous media parameter K w
Porous media parameter K w sets the physical situation in favour of flow speed and thermal transport through the improving porosity nature of the medium employed in the modelled PTSC. Graphical presentations of Figures 6 and 7 proved the above-mentioned claim as the Darcian force acts behind as a key factor in such Table 2. Evaluation of −θ (0) with varied Prandtl number, and consideringφ = 0, w = 0, N w = 0, M w = 0, w = 0, S = 0, E w = 0 and B w → ∞.

P r
Ref. [65] Ref. [66] Ref. [67] Ref . [   cases of Fe 3 O 4 -EO and Cu-EO combinations. Regarding thermal aspects of heat transfer rate along with the thermal boundary behaviour, the previous combination stays ahead of the other combination mentioned later may be due to its increased resistance from density hike for higher values of K w . In these situations, the Cu-EO nanofluid seems more effective than Fe 3 O 4 -EO nanofluid (Figures 6 and 7). Drafts in Figure 8 disclosed the fact of entropy raise concerning the improved permeability which leads the heat transfer rate to decrease.    As the porosity constrain regulates the particle motion across the system, which acts in favour of thermal dispersion of Cu-EO nanofluid than that of Fe 3 O 4 -EO which can be evident through Figure 11. Figure  12 portrays the nominal but assisting contribution of porosity towards the irreversible energy loss.

The effect of Casson parameter β w
Improving Casson parameter β w represents the enhanced resistance towards the fluidity which reflects in the reduction of a velocity profile for both Cu-EO and Fe 3 O 4 -EO combination of fluids can be evident through Figure 13. Interestingly Cu-EO experienced more resistive effects than compared to the Fe 3 O 4 -EO nanofluid.
Corresponding to the resistive impact, the thermal dispersion by the slower fluid flow was in better form to drive away more heat from the surface. Figure 14 showcases the fact that the sluggish Cu-EO Casson nanoliquid combination drives more heat than the Fe 3 O 4 -EO combination. Figure 15 portrays the irreversible energy loss in the system for improving Casson constrain (β w ). Though the impact seems nominal, the raising thermal transfer triggers to assist energy loss from it. Corresponding to the thermal transference the Fe 3 O 4 -EO Casson nanoliquid combination exerts more irreversible energy when compared to Cu-EO nanofluid.

The effect of variation in nanoparticle shapes constraint m
As the shape of the suspending particle ranges from a sphere, hexahedron, tetrahedron, column to Lamina, the optimal choice has to be picked with respective flow situations. Figure 16 showcases the fact that the lamina particles exert better thermal disperse when compared to the hexahedron and spherical particles. Simultaneous escalation in the irreversible energy drain for particle shape variations can be observed from Figure 17 for both Cu-EO and Fe 3 O 4 -EO nanofluids.

The consequence of nanoparticle size φ
Particle fraction reflects in the strength of the nanofluid towards its heat transference ability. As the improved particle suspension resists the fluidity, it provides the dual advantage for prompt thermal transference situations along with its thermal driving efficiency.    justify the above claim. Thermal drive from the system simultaneously escalates the entropy formation for improved values of particle fraction can be observed in Figure 20.

The consequence of velocity slip Λ w
Velocity slip constrain w acts against the fluidity of both Cu-EO and Fe 3 O 4 -EO nanofluid. Figure 21 reveals the fact that the fluid flow experienced some resistance through the particle suspension. As seen in the previous plots, Figure 22 is apparent the fact of slower fluidity and corresponding boost in the thermal dispersion. Interestingly, the irreversible energy loss gets reduced due to the nominal particle surface interaction which can be observed in Figure 23 for both Cu and Fe 3 O 4 suspended engine oil-based nanofluids.

The parametrical influences on skin frictional factor
Among the two classes of nanofluids, the Cu-EO combination exerts more skin resistance than Fe 3 O 4 -EO nanofluids. From Table 3, it can be observed that the factors of Casson parameter and slip constrain tends to reduce the skin resistance by slows down the fluidity in the system. On other hand, parameters like magnetic constrain and fractional volume exhibits favourable situations for the particles to perform which elevates the frictional skin resistance.  Table 3 also displays the thermal transference rate in terms of Nusselt number for the parametrical impacts. Apart from the thermal radiation and S which creates the optimal thermal transference rate, all other constraints were looks to be against it. Comparatively, Cu suspended nanofluid exerts more thermal transference rate than the Fe 3 O 4 -EO nanofluid. Relative thermal  transference gets hiked around 3% for Casson parameter and S constrain, 13% increase for particle fraction proportion. Nearly around 2% to 4% reduction in relative thermal transference rate can be evident for the parameters like a magnetic parameter, porosity, and Biot number.

Conclusions
Exploring the flow, thermal, and entropy formation aspects of Cu-EO and Fe 3 O 4 -EO Casson nanofluids over the Parabolic trough Solar Collector incorporated with the Magnetic influence with convective heated slippery flow under thermally radiation environment is considered. Results were plotted and reviewed in the form of graphs and tables. Some Key factors observed with the parametrical studies were listed below: • Comparatively, Fe 3 O 4 -EO Casson nanofluid flows with better fluidity than the Cu-EO combination fluid • Opposing nature towards the fluidity of the flow fluids was triggered by the factors of viscoelasticity, Lorentz force, particle fraction strength, and slip regime. • In addition to the above-mentioned factors which set a favourable situation for thermal dispersion, the elements of thermal radiation heat and particle shape also exhibit improved thermal distribution in the system. • Irreversible energy loss from the system can be regulated to a minimum with the physical aspects of viscoelasticity, magnetic influence, particle fraction, radiated heat, shape alterations of particle, convective heat, and Reynolds number. Interestingly, the slip factor stays a direct impact on screening the irreversibility.
• With the additional advantage of magnetic and particle fraction impacts, Cu-EO Casson nanofluid experiencing more skin resistance than the Fe 3 O 4 -EO class of fluid. • Better thermal transference in terms of Nusselt number was found to be significant in Cu-EO than the Fe 3 O 4 -EO combination. • As the magnetic parameter and Biot number around 3% of deduction in thermal transference rate, the nanoparticle fraction exerts around 13% on the favourable side.

Disclosure statement
No potential conflict of interest was reported by the author(s).