
In this study, the energy transference of a hybrid Al2O3-Cu-H2O nanosuspension within a lid-driven heated square chamber is simulated. The domain is affected by a horizontal magnetic field. The vertical sidewalls are insulated and the horizontal borders of the chamber are held at different fixed temperatures. A fourth-order accuracy compact method is applied to work out the vorticity-stream function view of incompressible Oberbeck–Boussinesq equations. The method used is validated against previous numerical and experimental works and good agreement is shown. The flow patterns, Nusselt numbers, and velocity profiles are studied for different Richardson numbers, Hartmann numbers, and the solid volume fraction of hybrid nanoparticles. Flow field and heat convection are highly affected by the magnetic field and volume fraction of each type of nanoparticles in a hybrid nanofluid. The results show an improvement of heat transfer using nanoparticles. To achieve a higher heat transmission rate by using the hybrid nanofluid, flow parameters like Richardson number and Hartmann number should be considered.
магнитное поле, смешанная конвекция, compact finite difference scheme, квадратные полости, magnetic field, lid-driven square cavity, Article, Chemistry, hybrid nanofluid, гибридные наножидкости, mixed convection, QD1-999, численное моделирование
магнитное поле, смешанная конвекция, compact finite difference scheme, квадратные полости, magnetic field, lid-driven square cavity, Article, Chemistry, hybrid nanofluid, гибридные наножидкости, mixed convection, QD1-999, численное моделирование
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