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Numerical solutions for multi-layer flow of hybrid nanofluid using feedforward neural network
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作者 K.Pravin Kashyap n.naresh kumar +3 位作者 P.Vijay kumar P.Durgaprasad Pankaj Shukla C.S.K.Raju 《Propulsion and Power Research》 2025年第3期580-594,共15页
This article emphasises finding solutions for fluid flow and heat transfer-related problems through the Levenberg-Marquardt back-propagation technique.The solutions are developed for a three-layered channel with the p... This article emphasises finding solutions for fluid flow and heat transfer-related problems through the Levenberg-Marquardt back-propagation technique.The solutions are developed for a three-layered channel with the porous medium in the middle layer.The main motive of the numerical experiment is to investigate the parametric effects on the Cu-Al_(2)O_(3) hybrid nanofluid in the central layer,Cu nanofluid in the left layer and Al_(2)O_(3) nanofluid in the right layer.The training and testing data for generating the solution are sought through shooting technique.Levenberg-Marquardt back-propagation solutions show that the error for the training data is very close to zero.The computational domain is extended using a machine learning approach for various parametric values with zero Jacobian error.Results show that the slippery nature of the left wall has a noticeable effect in the hybrid nanofluid channel compared to the other layers.Also observed that the porosity decreases the velocity as the solid space dominates the fluid space and thus has a strong opposing force,reducing its velocity. 展开更多
关键词 Domain extension Machine learning Porous medium Navier slip Shooting method CONVECTION
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