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Jet Impingement Heat Transfer of Confined Single and Double Jets with Non-Newtonian Power Law Nanofluid under the Inclined Magnetic Field Effects for a Partly Curved Heated Wall

Author

Listed:
  • Fatih Selimefendigil

    (Department of Mechanical Engineering, Celal Bayar University, 45140 Manisa, Turkey)

  • Hakan F. Oztop

    (Department of Mechanical Engineering, Technology Faculty, Fırat University, 23119 Elazığ, Turkey)

  • Ali J. Chamkha

    (Faculty of Engineering, Kuwait College of Science and Technology, Doha District 35001, Kuwait
    Center of Excellence in Desalination Technology, King Abdulaziz University, P.O. Box 80200, Jeddah 21589, Saudi Arabia)

Abstract

Single and double impinging jets heat transfer of non-Newtonian power law nanofluid on a partly curved surface under the inclined magnetic field effects is analyzed with finite element method. The numerical work is performed for various values of Reynolds number (Re, between 100 and 300), Hartmann number (Ha, between 0 and 10), magnetic field inclination ( γ , between 0 and 90), curved wall aspect ratio ( A R , between 01. and 1.2), power law index ( n , between 0.8 and 1.2), nanoparticle volume fraction ( ϕ , between 0 and 0.04) and particle size in nm ( d p , between 20 and 80). The amount of rise in average Nusselt (Nu) number with Re number depends upon the power law index while the discrepancy between the Newtonian fluid case becomes higher with higher values of power law indices. As compared to case with n = 1, discrepancy in the average Nu number are obtained as − 38 % and 71.5% for cases with n = 0.8 and n = 1.2. The magnetic field strength and inclination can be used to control the size and number or vortices. As magnetic field is imposed at the higher strength, the average Nu reduces by about 26.6% and 7.5% for single and double jets with n greater than 1 while it increases by about 4.78% and 12.58% with n less than 1. The inclination of magnetic field also plays an important role on the amount of enhancement in the average Nu number for different n values. The aspect ratio of the curved wall affects the flow field slightly while the average Nu variation becomes 5%. Average Nu number increases with higher solid particle volume fraction and with smaller particle size. At the highest particle size, it is increased by about 14%. There is 7% variation in the average Nu number when cases with lowest and highest particle size are compared. Finally, convective heat transfer performance modeling with four inputs and one output is successfully obtained by using Adaptive Neuro-Fuzzy Interface System (ANFIS) which provides fast and accurate prediction results.

Suggested Citation

  • Fatih Selimefendigil & Hakan F. Oztop & Ali J. Chamkha, 2021. "Jet Impingement Heat Transfer of Confined Single and Double Jets with Non-Newtonian Power Law Nanofluid under the Inclined Magnetic Field Effects for a Partly Curved Heated Wall," Sustainability, MDPI, vol. 13(9), pages 1-23, May.
  • Handle: RePEc:gam:jsusta:v:13:y:2021:i:9:p:5086-:d:547560
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    References listed on IDEAS

    as
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