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Buoyant Flow and Thermal Analysis in a Nanofluid-Filled Cylindrical Porous Annulus with a Circular Baffle: A Computational and Machine Learning-Based Approach

Pushpa Gowda, Sankar Mani, Ahmad Salah and Sebastian A. Altmeyer ()
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Pushpa Gowda: College of Computing and Information Sciences, University of Technology and Applied Sciences, Nizwa 611, Oman
Sankar Mani: College of Computing and Information Sciences, University of Technology and Applied Sciences, Ibri P.O. Box 466, Oman
Ahmad Salah: College of Computing and Information Sciences, University of Technology and Applied Sciences, Ibri P.O. Box 466, Oman
Sebastian A. Altmeyer: Department of Physics—Aerospace Division, Universitat Politècnica de Catalunya—Barcelona Tech, 08034 Barcelona, Spain

Mathematics, 2025, vol. 13, issue 12, 1-21

Abstract: Control of buoyancy-assisted convective flow and the associated thermal behavior of nanofluids in finite-sized conduits has become a great challenge for the design of many types of thermal equipment, particularly for heat exchangers. This investigation discusses the numerical simulation of the buoyancy-driven convection (BDC) of a nanofluid (NF) in a differently heated cylindrical annular domain with an interior cylinder attached with a thin baffle. The annular region is filled with non-Darcy porous material saturated-nanofluid and both NF and the porous structure are in local thermal equilibrium (LTE). Higher thermal conditions are imposed along the interior cylinder as well as the baffle, while the exterior cylinder is maintained with lower or cold thermal conditions. The Darcy–Brinkman–Forchheimer model, which accounts for inertial, viscous, and non-linear drag forces was adopted to model the momentum equations. An implicit finite difference methodology by considering time-splitting methods for transient equations and relaxation-based techniques is chosen for the steady-state model equations. The impacts of various pertinent parameters, such as the Rayleigh and Darcy numbers, baffle dimensions, like length and position, on flow, thermal distributions, as well as thermal dissipation rates are systematically estimated through accurate numerical predictions. It was found that the baffle dimensions are very crucial parameters to effectively control the flow and associated thermal dissipation rates in the domain. In addition, machine learning techniques were adopted for the chosen analysis and an appropriate model developed to predict the outcome accurately among the different models considered.

Keywords: annulus; baffle; porosity; machine learning; numerical technique (search for similar items in EconPapers)
JEL-codes: C (search for similar items in EconPapers)
Date: 2025
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