CONSTRUCTION OF NEURAL NETWORK BASED INTELLIGENT COMPUTING FOR TREATMENT OF DARCY-FORCHHEIMER SISKO NANOFLUID FLOW WITH ROSSELAND'S RADIATIVE PROCESS
-
Published:2023
Issue:9
Volume:54
Page:77-98
-
ISSN:1064-2285
-
Container-title:Heat Transfer Research
-
language:en
-
Short-container-title:Heat Trans Res
Author:
Shafiq Anum,Çolak Andaç Batur,Sindhu Tabassum Naz
Abstract
A generalization of Newtonian and power-law fluids is the Sisko model. It foretells dilatants and fluid pseudoplasticity. It was first suggested to use the Sisko fluid model to gauge high shear rates in lubricating greases. Three constants in this model are easily selectable for certain fluids, and it is demonstrated that the model is a good predictor of shear thickening and thinning. The study of nanofluids is gaining popularity quickly because of unique thermal, mechanical, and chemical characteristics of nanomaterials. Sisko nanofluids are also required for the production of nanoscale materials because of the superb wetting and dispersing capabilities they possess. In the present investigation, the Levenberg-Marquardt method with backpropagated neural networks is used to evaluate the nanomaterial flow of Darcy-Forchheimer Sisko fluid model. Thermophoresis and Brownian motion effects are considered when developing the nanofluid model. By applying the necessary transformations, the original nonlinear coupled partial differential system representing fluidic model are converted to an analogous nonlinear ordinary differential system. For different fluid model scenarios, a dataset for the proposed multilayer perceptron artificial neural network is produced by altering the necessary variables via the Galerkin weighted residual approach. An artificial neural network called a multilayer perceptron has been created in order to forecast the multilayer perceptron values.
Subject
Fluid Flow and Transfer Processes,Mechanical Engineering,Condensed Matter Physics
Reference34 articles.
1. Ahmadloo, E. and Azizi, S., Prediction of Thermal Conductivity of Various Nanofluids Using Artificial Neural Network, Int. Commun. Heat Mass Transf., vol. 74, pp. 69-75, 2016. 2. Ali, A., Abdulrahman, A., Garg, S., Maqsood, K., and Murshid, G., Application of Artificial Neural Networks (ANN) for Vapor-Liquid-Solid Equilibrium Prediction for CH4-CO2 Binary Mixture, Greenhouse Gases, vol. 9, pp. 67-78, 2019. 3. Alzahrani, F. and Khan, M.I., Entropy Generation and Joule Heating Applications for Darcy-Forchheimer Flow of Ree-Eyring Nanofluid Due to Double Rotating Disks with Artificial Neural Network, Alexandria Eng. J., vol. 61, pp. 3679-3689, 2022. 4. Batool, S., Rasool, G., Alshammari, N., Khan, I., Kaneez, H., and Hamadneh, N., Numerical Analysis of Heat and Mass Transfer in Micropolar Nanofluids Flow through Lid Driven Cavity: Finite Volume Approach, Case Stud. Thermal Eng., vol. 37, p. 102233, 2022. 5. Buongiorno, J., Convective Transport in Nanofluid, ASME. J. Heat Transf., vol. 128, no. 3, pp. 240-250, 2006.
Cited by
12 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|