Abstract
This article aims to analyze the two-dimensional (2D) nanofluid (Ag/C2H6O2) flow past an exponentially stretched sheet. The magnetic field impact, heat source/sink, and convection in the thermal profile are taken into account. The complexity of the problem is reduced by introducing a dimensionless group of functions. The reduced model is transformed into a system of first-order ordinary differential equations (ODEs). This system is further analyzed with the artificial neural network (ANN), which is trained using the Levenberg–Marquardt algorithm. The whole dataset is sub divided into three parts: training (), validation (), and testing (). The impact of nonlinear heat source/sink parameter, magnetic parameter, volume fraction of nanoparticles, and Prandtl number is displayed through graphs. The heat source, volume fraction, and the Prandtl number cause an increase in the thermal profile with its larger values. The magnetic parameter causes a decline in both the thermal and momentum boundary layers with its higher values. The analysis shows that the thermal energy profile is enhanced with the larger values of the volume fraction of silver nanoparticles and heat source. For each case study, the residual error (RE), regression line, and validation of the results are presented. The performance of the proposed methodology is numerically tabulated for the nanoparticle volume fraction shown in Table 3, where the minimum absolute error (AE) is at . Based on this, we recommend for better performance. The AEs for the ANN and bvp4c are computed for the state variables in Tables for the magnetic parameter , and 15. These tables show the overall performance of the ANN and further validate the present study. We have also validated the results of the ANN through the mean squared error graphically, where the accuracy of the proposed methodology is proven.
1 Introduction
Fluids including air, water, and plasma are the most frequently encountered substances in human life. Without a thorough knowledge of these fluids’ transport properties, their industrial utilization is not feasible. Several industrial operations, such as the coating and coloring of constantly moving metal sheets, extrusion of polymer sheets, drawing of copper wires, extrusion of polyvinyl chloride, thin film coating on photographic films, and plastic sheets, include flows over a stretching surface. Due to its practical implications, the study of fluid flows driven by stretching surfaces is a popular topic these days. Byron [1] was the first to investigate the boundary layer flow of a viscous fluid on a continuously moving surface. Lawrence [2] achieved a crowded type solution for a 2D flow, limited by a linear stretching sheet. Numerous assumptions have been taken into consideration when analyzing this ground-breaking research. Andersson [3] investigated how slipping forces affect a stretching surface. The work of Lawrence [2] is expanded upon by Donald [4] for the 3D case. Liu [5] provided the heat transfer analysis for a second-grade electrically conducting fluid across a stretched surface. While discussing the boundary layer flow caused by an exponentially growing surface, Ishak et al. [6] considered the radiation effect. The HNF mixed convective flow phenomenon is examined by Waini et al. [7]. for an exponentially expanding/constricting surface. Gowda et al. [8]. analyzed computationally the Stefan effect for a second-grade fluid flow past a curved stretched sheet. The role of magnetic dipoles in the flow of ferromagnetic NF past a stretching sheet is presented by Gowda et al. [9] in their 2013 investigation. Asghar et al. [10] used the generalized Fourier strategy to analyze the convective heat transfer for Williamson fluid flows past an unstable sheet.
The phrase “nanofluid” was first used by Choi [11] in a study presented at the ASME Winter Annual Meeting. The thermal conductivity of the nanofluids is better than that of water, making them an innovative type of fluid, including small solid particles. Microparticle applications involve heat transfer, according to several recent inventions. Nanofluids are fluids used in conventional heat transfer that dissipate nanoscale flammable particles. Medical uses for nanofluids include the use of gold nanoparticles to treat malignant tumors and the development of tiny explosives to eliminate malignancies. Jacopo [12] investigated the convective heat transmission in nanofluids with a new type of nanofluid model. Nadeem and Lee [13]. examined the boundary layer flow of the nanofluid that flows past an elongated surface. Convective boundary conditions are used by Mustafaa et al. [14] to characterize the boundary layer flow on the exponentially stretched surface. The nanofluid phenomenon across a porous stretched surface is explained by Bhattacharyya and Layek [15]. Waqas et al. [16] studied the thermally radiative MHD nanofluid flow by utilizing the Robin conditions. Ghosh and Mukhopadhyay [17]. reported the fluxes in the NF flow past a stretching sheet. Sulaiman et al. [18] discusses the 3D flow of microorganisms that contain nanofluids. Ghosh and Mukhopadhyay [19]. described the transfer of heat for an NF flow past an exponentially declining sheet. Ali et al. [20] described numerically the nanofluid phenomenon for an exponentially expanding surface by taking non-uniform heat fluxes. The numerical study for the thermal analysis of the new wavy absorber tube within a solar system is provided by Sheikholeslami et al. [21]. They considered the two-phase model of the nanofluids that contain oil and CuO nanoparticles. They concluded that the friction factor is decreased by with improvement in the heat transfer coefficient by increasing the Reynolds number from 5,000 to 20,000. Sheikholeslami [22] also demonstrated an air conditioner that uses porous media of four-lobed cylinders that contain paraffin and nanoparticles of ZnO. Gowda et al. [23] examined the stretchable disks for the slip effects of the Casson–Maxwell nanofluid flow. Asghar et al. [24] studied numerically the motion of an organism sliding down a slime-shaded surface.
Magnetohydrodynamics (MHD) is the study of how electrically conducting fluids behave under the influence of the applied magnetic field. The terms magneto (which refers to a magnetic field), hydro (which refers to a liquid), and dynamic (which refers to motion) form the term magnetohydrodynamic. This kind of fluid can be found in electrodes, liquid crystals, seawater, and solitons [25]. The conductor develops a potential when an electric field and a magnetic field move in relation to one another, which results in current flowing between the endpoints in accordance with Faraday’s law of electromagnetic induction [26–28]. This law is used to create MHD power. Currents may flow through an electrically conductive fluid that is flowing through magnetic fields, polarizing the fluid and altering the magnetic field in the process. Alfvén [29] referred to such a fluid having magnetohydrodynamics (MHD). The dynamics of the microorganisms for the Carreau–Yasuda layer is analyzed by Asghar et al. [30]. The mechanism and uses of the MHD flow in a variety of industrial processes have been the subject of numerous studies [31–33]. Benos et al. [34] used the Hamilton–Crosser model to theoretically examine the natural convective MHD flow of CNT-based NF. Asghar et al. [35] studied the flow past a wavy curved sheet in the presence of low Reynolds number. In another study, Asghar et al. [36]. analyzed the bacterial motion past a slime with the Oldroyd-4 constant. A more recent survey can be found in Refs. [37–40]. The solution strategy is important for the analysis of the nonlinear problems [41]. Recently, artificial intelligence (AI) methodologies have been broadly used for a variety of nonlinear problems. Among them, Shafiq et al. [42, 43]. used the ANN for the analysis of the exponential distribution. They have analyzed the Weibull distribution through the ANN and compared the results by using a numerical strategy. Bhadauria et al. [44] studied the THNF flow past a cone and disk by using the supervised learning ANN approach. Ali et al. [45] studied the Ostwald–de Waele model for the flow through the cavity by using the ANN based on the Levenberg–Marquardt algorithm. Srilatha et al. [46] studied the nanofluid flow past a porous rotating disk by using the ANN. Brunton et al. [47] explained the applications of machine learning in fluid mechanics. Amini and Mohaghegh [48] analyzed the machine learning in a porous media. They implemented the ANN by considering proxy modeling. Eivazi et al. [49] studied the experimental fluid mechanics under the impact of machine learning. A more recent survey on the nanofluid flow by using the ANN can be found in Refs. [50–52].
The above analysis clarifies that the choice of nanofluids for the transfer of heat is important. In this work, we will use silver (Ag) nanoparticles in the base fluid C2H6O2 to form a new nanofluid and briefly explain the flow of Ag/C2H6O2 past an unstable stretched sheet. The magnetic parameter is applied perpendicular to the sheet along the -axis. The convective impact on the thermal profile is taken into account. The non-uniform flux of heat is considered to analyze the source and sink for thermal energy enhancement or reduction. Including these assumptions, the physical problem is modeled together with the boundary convective conditions. Furthermore, the proposed problem is tackled with a trained ANN that uses the Levenberg–Marquardt algorithm. To the best of our knowledge, this is the first study to report the Ag/C2H6O2 nanofluid by using the ANN-trained approach based on the Levenberg–Marquardt algorithm.
The layout of the article is categorized as follows: Section 2 presents a physical description of the problem together with its mathematical relation. The proposed methodology is briefly explained in Section 3, while the training procedure is explained in Section 3.1. The approximation and impact of various pertinent parameters are explained in Section 4, while the conclusion is provided in Section 5.
2 Problem formulation
We consider a constant, incompressible, and two-dimensional nanofluid flow past a nonlinear stretching surface. A magnetic field with strength is applied normally to the fluid flow. The impacts of uneven heat transfer and convective boundary conditions are also considered. The geometry is chosen in such a way that the surface is stretched along the -axis, as shown in Figure 1. Since the surface chosen is exponentially stretching, the velocity along the axis has the form .
FIGURE 1
By assuming the above conditions, we have [20]
The boundary conditions from the physical problem can be written as [20, 53]
Here, represent the components of velocity; is the applied magnetic field strength; is the temperature of the fluid, and are the heat source and sink, respectively, ; and are the ambient and surface temperatures, respectively.
Assume the following [53]:
Now, by substituting Equation 5 into Equations 1–4, we obtain
Here, , , , , and . All these parameters are defined in Table 1, whose thermophysical properties are defined in Table 2. In addition, and are magnetic and Prandtl numbers, respectively.
TABLE 1
| Property | Nanofluid |
|---|---|
| Density | |
| Viscosity | |
| Heat capacity | |
| Thermal conductivity | |
| Electric conductivity |
Nanofluid models.
TABLE 2
| Base fluid/Nanoparticle | ||||
|---|---|---|---|---|
| C2H6O2 | 1,110 | 22,000 | 0.253 | 5.5 −6 |
| 8,908 | 445 | 91 | 1.7 −7 |
Thermo-physical properties of the base fluid and nanoparticles [54].
3 Proposed methodology
This work aims to implement the machine learning strategy known as the artificial neural network (ANN). The ANN is a nature-inspired algorithm that uses the structure of the human brain. It receives the input and trains the neurons in the hidden layers to produce the output. Nowadays, the ANN is widely used for different purposes, including future prediction of economic prosperity, weather prediction, and security purposes. The ANN has opened a new era in machine learning with its wide range of applications see the references [55, 56].
The ANN is also very fault-tolerant and continues its functioning even if some parts stop working. In addition, ANNs are helpful for modeling complicated systems because they can detect nonlinear correlations in data. Finally, ANNs are helpful for many real-world applications because they can accurately map inputs to outputs as suggested in the reference [57]. ANNs are based on interconnected neurons and nodes. They receive the input and perform various operations back and forth to generate the output.
We reduce the system of Equations 6–8 to a first-order system as given below:
The corresponding B.Cs are as follows:
In general, for an unknown function , the weight and constant are given by the following formula for a certain input .
We introduce the following sigmoid function to obtain the results for and :
3.1 Weight training
The generation of output results with the training phase in the hidden layer needs to be analyzed in detail. Before the implementation of the ANN, the systems of Equations 9, 10 are solved using the bvp4c. Bvp4c uses the finite difference scheme and implements the Lobatto IIIa formula. This formula is derived from the collection of polynomials that provide a continuous, fourth-order, accurate, and uniform solution. We assume , step size = 0.01, and tolerance = . We approximate the unknown function given in Equation 11 by using the sigmoid function defined in Equation 12. The basic idea of the bvp4c for fluid flow problems is explained by Wang et al. [58]. Ullah et al. [59] recently explained the supervised learning approach for HNF flow problems. We take this result as a dataset and split it into testing, training, and validation datasets for the implementation of the ANN. The ANN assigns different weights to the neurons and produces the optimal result. The solution is discussed with mean squared error, absolute error, and regression , defined as follows:
and
4 Results and discussions
The results obtained are presented in Figures 2–6 and Table 3. The state variables are displayed under the influence of various pertinent parameters, together with AEs, regression lines, and validation of results given in Equations 13–15. In addition, the results are presented in the form of a table for various choices of the nanofluid volume fraction.
FIGURE 2
FIGURE 3
FIGURE 4
FIGURE 5
FIGURE 6
TABLE 3
| AE | |
|---|---|
| 0 | 3.8413e-10 |
| 0.025 | 3.9990e-10 |
| 0.05 | 5.3373e-11 |
| 0.075 | 3.5322e-10 |
| 0.1 | 6.2934e-10 |
Absolute error (AE) for various values of .
A shown in Figure 2A, the impact of the space-dependent parameter is displayed for the velocity gradient. When increasing the positive from 0 to 0.9, the velocity gradient decreases from 1 to 0. A quite similar trend is observed in Figure 2B for . The AEs for both positive and negative trends of are displayed in Figures 2C, D. The AEs in both cases vary up to . This effect is faster as varies from 0 to 3. The maximum AE occurs at for , while the same trend is observed for when . The maximum AE occurs for and , as shown by the red and blue lines in Figures 2C, D, respectively. Regression is employed to assess the reliability of the data. As the regression value approaches 1, it implies improved data. Regression is used to assess the validity, training, and testing data. As shown in Figures 2E, F, the regression lines show 1, which proves the best result and recommends that data are available on the linear line. This analysis proves that our proposed methodology has better performance. Furthermore, the surrogate results are presented on the axis. The total performance in both cases is presented in Figures 2G, H. The best validation performance for is at epochs, while for , it is at 292 epochs. The same parameter for both positive and negative values is analyzed for the thermal profile, as shown in Figure 3. When , the thermal profile increases and vice versa, as shown in Figures 3A, B. By comparing both figures, we see that the increase is a bit slower as compared to the decline. In the case of , the fluid velocity blows, and the thermal profile due to the convection increases. On the other hand, when , the suction takes place and the fluid velocity declines. As a result, the migration of the particles decreases, which further decreases the interaction and causes a decline in the thermal profile. The AEs for both and are displayed in 3(c) and 3(d), respectively. The AEs for both cases are bounded in the range –, which proves the stability of our proposed methodology. The regression and performance of the proposed method are displayed in Figures 3E–H. The regression line shows that proves the total data on the fitting line, while the performance is achieved at and , respectively. This minimum validation is obtained at 280 and 292 epochs, respectively.
The impact of the magnetic parameter for its increasing values is displayed in Figure 4. Figures 4A, B shows the results for the velocity gradient and thermal profiles, respectively. The larger values of cause a decline in both the velocity gradient and thermal profiles. The reference solution is represented with bold lines, while the ANN results are displayed with dots. The resemblance in both solutions shows the accuracy of the implemented methodology. As approaches and , the velocity gradient and the thermal profiles tend to 0. Physically, the larger values of are due to the stronger magnetic parameter strength , which acts perpendicular to the stretching sheet. This force creates a field of spirals in the motion of the velocity field that itself is a function of only. As a result, the field created acts as a barrier to the velocity field, which causes a decline in the velocity profile. Again, the influence of cannot be ignored on the thermal profile. The field created acts as a barrier to the migration of the nanoparticles. The transfer of heat is due to the minimum convection of these nanoparticles, which becomes very small with larger values of . As a result, the thermal profile decreases. The absolute error shows the total performance of the method applied. As shown in Figures 4C, D, the absolute error varies from – and –, respectively. The fitness of the current data for the magnetic parameter is displayed in Figures 4E, F. The regression line shows in both the cases, which recommends that the data are used in fitting the regression curve. On the axis, the surrogate results are displayed, which vary by in both cases. The validation for the current analysis is shown in Figures 4G, H. The mean squared error in each case decreases, and the best results in both cases for velocity and thermal profiles are achieved at 285 epochs, which is for both profiles.
The impact of the volume fraction on its increasing trend is displayed in Figure 5. As shown in Figures 5A, B, these analyses are carried out for the state variables (velocity gradient and thermal profile). As increases, the velocity decreases. This decrease is very small. For more clarity, a zoom capture is provided, where the decrease is clearly visible. Physically, the larger volume fraction decreases the convection, and as a result, the velocity profile decreases. As shown n Figure 5B, the temperature profile decreases due to the larger values of the nanofluid volume fraction. The larger volume fraction has the ability to absorb more heat and acts as a source of heat. Thus, the larger the volume fraction, the greater the volume fraction. The reference solution and ANN solution show a similar trend in both profiles. The absolute errors for both cases are plotted in Figures 5C, D. The absolute error for both the velocity and temperature ranges from –. The regression lines and validations are presented in Figures 5E–H. The regression lines show and the output on the in both cases. The results are validated at at 226 epochs, as shown in Figures 5G, H.
The impact of the Prandtl number on the thermal profile is shown in Figure 6. The increasing values of increase the thermal profile. When increases, the specific heat increases, further causing the fluid to lose internal energy. The density is inversely related to , and hence the larger values of cause the fluid density to be smaller and the base fluid to become more feasible to flow. The motion of the base fluid and the thermal increase in the specific heat increases the thermal profile. The AE for the variations is plotted in Figure 6B. The absolute error (AE) ranges in –. This shows the overall performance of our method. The regression line and validations are both presented in Figures 6C, D. The regression line has , with the trained output on the axis varying up to . The validations are achieved at with 535 epochs. The overall performance shows that the results are validated.
The AEs for various choices of while keeping other parameters fixed are displayed in Table 3. The AE varies from –. Best values of AE occur at . This analysis proves that in the range of 0–0.1, the ideal choice would be 0.05 for . The numerical results for the AEs are presented in Tables 4, 5 for and , respectively. The ANN results are compared with the bvp4c results for various choices of . It is clear from both the tables that when , the convergence of , as compared to bvp4c, is faster. This convergence rate is proved at each step, and the ANN results converge more rapidly toward 0. A quite similar trend is observed in Table 5, where the larger values of push the ANN results for more rapidly toward 0 as compared to bvp4c. The analysis proves that the ANN has better performance as compared to bvp4c.
TABLE 4
| bvp4c | bvp4c | bvp4c | ||||
|---|---|---|---|---|---|---|
| 0 | 0.999947 | 1 | 0.999932 | 1 | 0.999992 | 1 |
| 0.053452 | 0.900705 | 0.900671 | 0.832065 | 0.832058 | 0.781214 | 0.781227 |
| 0.100223 | 0.797703 | 0.797722 | 0.708924 | 0.708926 | 0.586452 | 0.586469 |
| 0.200445 | 0.616322 | 0.616306 | 0.50391 | 0.503903 | 0.34526 | 0.345231 |
| 0.253898 | 0.537592 | 0.537601 | 0.420361 | 0.420368 | 0.277968 | 0.27797 |
| 0.300668 | 0.477228 | 0.477252 | 0.358833 | 0.358849 | 0.229994 | 0.230015 |
| 0.35412 | 0.416716 | 0.41673 | 0.299578 | 0.299592 | 0.185271 | 0.185295 |
| 0.400891 | 0.370246 | 0.37024 | 0.255889 | 0.255894 | 0.15337 | 0.153383 |
| 0.454343 | 0.323567 | 0.323545 | 0.213762 | 0.213756 | 0.123606 | 0.123604 |
| 0.501114 | 0.28765 | 0.287628 | 0.182663 | 0.182653 | 0.102352 | 0.102341 |
| 0.551225 | 0.231305 | 0.231306 | 0.154368 | 0.154358 | 0.072102 | 0.072092 |
| 0.601336 | 0.180004 | 0.180026 | 0.13047 | 0.130465 | 0.048126 | 0.048131 |
| 0.651448 | 0.140199 | 0.140211 | 0.110284 | 0.110283 | 0.032134 | 0.03214 |
| 0.701559 | 0.109269 | 0.10926 | 0.093231 | 0.093234 | 0.021467 | 0.021464 |
| 0.75167 | 0.085194 | 0.085176 | 0.078822 | 0.078827 | 0.014342 | 0.014336 |
| 0.801782 | 0.066431 | 0.066421 | 0.066646 | 0.066651 | 0.009577 | 0.009575 |
| 0.851893 | 0.051804 | 0.051807 | 0.056356 | 0.056359 | 0.006567 | 0.00657 |
| 0.902004 | 0.040403 | 0.040414 | 0.047658 | 0.047659 | 0.005016 | 0.00502 |
| 0.952116 | 0.031519 | 0.031529 | 0.040304 | 0.040304 | 0.003349 | 0.003353 |
| 0.998886 | 0.025004 | 0.025008 | 0.034468 | 0.034468 | 0.0023 | 0.002301 |
Comparison of ANN and bvp4c AEs for .
TABLE 5
| bvp4c | bvp4c | bvp4c | ||||
|---|---|---|---|---|---|---|
| 0 | 0.74264 | 0.742614 | 0.850983 | 0.850952 | 0.906655 | 0.906577 |
| 0.053452 | 0.747206 | 0.747222 | 0.853939 | 0.853943 | 0.908085 | 0.908126 |
| 0.100223 | 0.75127 | 0.751282 | 0.855049 | 0.855057 | 0.907087 | 0.907112 |
| 0.200445 | 0.754335 | 0.75433 | 0.854807 | 0.854809 | 0.902896 | 0.902865 |
| 0.253898 | 0.75574 | 0.755724 | 0.853405 | 0.8534 | 0.898834 | 0.898788 |
| 0.300668 | 0.756002 | 0.755987 | 0.850576 | 0.850567 | 0.89342 | 0.893386 |
| 0.35412 | 0.75515 | 0.755144 | 0.847126 | 0.847119 | 0.887858 | 0.88785 |
| 0.400891 | 0.753045 | 0.753054 | 0.842172 | 0.84217 | 0.880653 | 0.880681 |
| 0.454343 | 0.750293 | 0.750311 | 0.837027 | 0.837031 | 0.873677 | 0.873727 |
| 0.501114 | 0.746189 | 0.746208 | 0.830299 | 0.830308 | 0.865001 | 0.865057 |
| 0.551225 | 0.741817 | 0.741829 | 0.823725 | 0.823734 | 0.856836 | 0.856878 |
| 0.601336 | 0.731912 | 0.7319 | 0.816017 | 0.816023 | 0.840334 | 0.840325 |
| 0.651448 | 0.717841 | 0.717817 | 0.807664 | 0.807665 | 0.819228 | 0.819187 |
| 0.701559 | 0.701227 | 0.701223 | 0.798701 | 0.798697 | 0.79605 | 0.796039 |
| 0.75167 | 0.682353 | 0.682379 | 0.78916 | 0.789153 | 0.771007 | 0.771023 |
| 0.801782 | 0.661471 | 0.661503 | 0.779068 | 0.779063 | 0.744252 | 0.744256 |
| 0.851893 | 0.638777 | 0.63878 | 0.768453 | 0.768451 | 0.715849 | 0.715841 |
| 0.902004 | 0.614404 | 0.614368 | 0.757339 | 0.75734 | 0.687906 | 0.687912 |
| 0.952116 | 0.588451 | 0.588406 | 0.745748 | 0.745753 | 0.667149 | 0.667171 |
| 0.998886 | 0.534226 | 0.534267 | 0.722061 | 0.722066 | 0.603545 | 0.603534 |
Comparison of ANN and bvp4c AEs for .
5 Conclusion
This article provides a comprehensive analysis of a new type of ethylene glycol-based nanofluid with silver nanoparticles. The shape of nanoparticles and other important parameters for the thermal as well as the velocity profile are discussed in detail. We observed the following points:
The thermal profile under the influence of the increasing values of the heat source increases, while the velocity gradient decreases.
The larger values of the magnetic parameter cause a decline in the thermal and velocity profiles.
The shape effect of the nanofluid decreases the velocity profiles and increases the thermal profile.
The minimum AE is observed at in Table 3, and therefore, we recommend nanoparticle shape 0.05 for simulation purposes.
As shown in Tables 4, 5, the results of the ANN are compared with the bvp4c for different values of , where the efficacy of the ANN is proved.
For the validity and stability of the proposed methodology, the regression line, MSE, and AE are presented in each case.
Statements
Data availability statement
The original contributions presented in the study are included in the article/supplementary material, further inquiries can be directed to the corresponding authors.
Author contributions
AU: conceptualization, data curation, formal analysis, methodology, software, visualization, and writing–review and editing. HY: conceptualization, formal analysis, project administration, resources, supervision, validation, visualization, and writing–original draft. Waseem: conceptualization, data curation, formal analysis, methodology, resources, software, validation, and writing–original draft. AS: data curation, formal analysis, investigation, methodology, software, validation, and writing–review and editing. FA: data curation, formal analysis, funding acquisition, investigation, project administration, software, visualization, and writing–review and editing. EI: conceptualization, data curation, formal analysis, funding acquisition, investigation, resources, software, and writing–review and editing.
Funding
The author(s) declare that financial support was received for the research, authorship, and/or publication of this article.
Acknowledgments
Researchers Supporting Project Number (RSPD2024R1060), King Saud University, Riyadh, Saudi Arabia.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher’s note
All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors, and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.
Nomenclature
Electrical conductivity
Magnetic field strength
Thermal conductivity
Prandtl number
Stretching velocity
Constant surface velocity
Fluid temperature
Source and sink of heat
Kinematic viscosity
Density
Dynamic viscosity
Specific heat
- ,, and
Coordinates
Similarity variable
Stream function
Convective heat transfer coefficient
Magnetic parameter
Nanofluid volume fraction
Dimensionless velocities
Characteristic length
Mean squared error
Regression line
Residual error
Absolute error
Built-in code MATLAB for boundary value problems
Dimensionless temperature
Artificial neural network
Activation function
Base fluid
Nanofluid
Hybrid nanofluid
Condition at infinity
- 0
Reference condition
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Summary
Keywords
artificial neural network, convection, ethylene glycol, heat transfer, magnetic field, nanofluid, nonlinear problems, thermal energy
Citation
Ullah A, Yao H, Waseem, Saboor A, Awwad FA and Ismail EAA (2024) A qualitative analysis of the artificial neural network model and numerical solution for the nanofluid flow through an exponentially stretched surface. Front. Phys. 12:1408933. doi: 10.3389/fphy.2024.1408933
Received
29 March 2024
Accepted
12 August 2024
Published
17 September 2024
Volume
12 - 2024
Edited by
Francisco Vega Reyes, University of Extremadura, Spain
Reviewed by
Zeeshan Asghar, Prince Sultan University, Saudi Arabia
Andaç Batur Çolak, Istanbul Commerce University, Türkiye
Updates
Copyright
© 2024 Ullah, Yao, Waseem, Saboor, Awwad and Ismail.
This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Asad Ullah, asad@ujs.edu.cn; Hongxing Yao, hxyao@ujs.edu.cn
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