4.7 Article

Influence of non-uniform magnetic field on the thermal efficiency hydrodynamic characteristics of nanofluid in double pipe heat exchanger

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SCIENTIFIC REPORTS
卷 13, 期 1, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/s41598-022-26285-w

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The impact of non-uniform magnetic field on the heat transfer rate of nanofluid flow in double pipe heat exchangers is comprehensively studied. Computational fluid dynamics (CFD) technique is used to visualize the flow dynamics of nanofluid in the presence of a magnetic source. It is found that the magnetic field intensifies the circulation formation in the gap of the inner tube, resulting in enhanced heat transfer. Comparison of different tube geometries shows that the triangular tube is more efficient in improving the heat transfer of nanofluid flow.
Enhancement of the heat transfer rate inside the double pipe heat exchangers is significant for industrial applications. In present work, the usage of non-uniform magnetic field on the heat transfer rate of the nanofluid flow streamed inside double pipe heat exchangers are comprehensively studied. Computational technique of CFD is used for the visualization of the nanofluid hydrodynamic in existence of the magnetic source. Influences of the magnetic intensity and nanofluid velocity on the heat transfer are also presented. Simple algorithm is used for the modeling of the incompressible nanofluid flow with addition of magnetic source. Presented results show that magnetic source intensifies the formation of the circulation in the gap of the inner tube and consequently, heat transfer is enhanced in our domain. Comparison of different geometries of tube reveals that the triangle tube is more efficient for improvement of the heat transfer of nanofluid flow. Our results indicate that heat transfer in the tube with triangular shape is more than other configurations and its performance is 15% more than smooth tube.

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