Significance of EMHD graphene oxide (GO) water ethylene glycol nanofluid flow in a Darcy–Forchheimer medium by machine learning algorithm

The low heat efficiency of base fluids is a key problem among investigators. To address this issue, investigators utilize tiny-sized (1–100 nm) metal solid material inside the base fluids to boost thermal performance of base solvents. A numerical investigation on the thermal application functioning...

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Vydáno v:European physical journal plus Ročník 138; číslo 3; s. 213
Hlavní autoři: Shafiq, Anum, Çolak, Andaç Batur, Sindhu, Tabassum Naz
Médium: Journal Article
Jazyk:angličtina
Vydáno: Berlin/Heidelberg Springer Berlin Heidelberg 07.03.2023
Springer Nature B.V
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ISSN:2190-5444, 2190-5444
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Shrnutí:The low heat efficiency of base fluids is a key problem among investigators. To address this issue, investigators utilize tiny-sized (1–100 nm) metal solid material inside the base fluids to boost thermal performance of base solvents. A numerical investigation on the thermal application functioning of graphene oxide water/ethylene glycol-based nanofluids under the influence of the electromagnetohydrodynamic and Darcy–Forchheimer medium has been compiled in the present study via a machine learning algorithm. In the study of nanofluid flow, thermal radiation and a convective boundary condition are also used. The Runge–Kutta fourth-order shooting method was utilized to calculate the system of equations. The skin friction coefficient and Nusselt parameter were simulated with various variables, and two distinct artificial neural networks have been developed based on the findings. It is beneficial to estimate the fluid temperature with a large Biot number. R value above 0.99 was obtained for the developed artificial neural networks. The deviation rate was also calculated at very low values. The outcomes show that the proposed artificial neural network models can accurately predict the skin friction coefficient and Nusselt number.
Bibliografie:ObjectType-Article-1
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ISSN:2190-5444
2190-5444
DOI:10.1140/epjp/s13360-023-03798-5