Thermal conductivity of hydraulic oil-GO/Fe3O4/TiO2 ternary hybrid nanofluid: Experimental study, RSM analysis, and development of optimized GPR model

[Display omitted] •Thermal conductivity of GO-Fe3O4-TiO2/Oil ternary hybrid nanofluid is measured.•The zeta potential and dynamic light scattering tests are done.•The maximum thermal conductivity is recorded for the mixing ratio of 1:1:1.•A three-variable correlation is presented to predict thermal...

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Veröffentlicht in:Journal of molecular liquids 2023-09, Vol.385, p.122338, Article 122338
Hauptverfasser: Shahsavar, Amin, Sepehrnia, Mojtaba, Maleki, Hamid, Darabi, Reyhaneh
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Sprache:eng
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Zusammenfassung:[Display omitted] •Thermal conductivity of GO-Fe3O4-TiO2/Oil ternary hybrid nanofluid is measured.•The zeta potential and dynamic light scattering tests are done.•The maximum thermal conductivity is recorded for the mixing ratio of 1:1:1.•A three-variable correlation is presented to predict thermal conductivity.•Gaussian process regression for estimating the thermal conductivity is used. In the present paper, the thermal conductivity (TC) of a hydraulic oil-based nanofluid in the presence of ternary nano-additives, graphene oxide (GO), iron oxide (Fe3O4), and titanium dioxide (TiO2), is analyzed in a wide range of volume fractions (VFs), temperatures, and mixing ratios (MRs). The stability of ternary hybrid nanofluids (THNFs) and size distribution of nanomaterial is obtained through zeta potential and dynamic light scattering (DLS) tests. Zeta potential and DLS tests indicated the remarkable stability of the samples with the GO(2): Fe3O4(1): TiO2(1) MR. Analysis of the measurements revealed that the enlargement in temperature and VFs improved the TC of THNFs for all MRs (1:1:1, 2:1:1, 1:2:1, 1:1:2). The highest TC enhancement is observed at the highest temperature (65 °C) and VF (1%), which for the MRs of 1:1:1, 1:1:2, 1:2:1, and 2:1:1 equal to 36.04%, 26.28%, 25.95%, and 33.86%, respectively. Furthermore, considering the average TC enhancement in the presence of nano-additives for various temperatures, MRs of GO(1): Fe3O4(1): TiO2(1) and GO(1): Fe3O4(1): TiO2(2) indicated the best and worst efficiency with 30.46% and 22.01%, respectively. The RSM method is applied to provide a simple and efficient formula-based model to describe the TC of THNFs in terms of input variables. In addition, a novel genetic algorithm-based optimization of training/structure parameters of Gaussian process regression (GPR) as a leading machine learning algorithm is developed, which provided thoroughly precise outcomes (Rtest2=0.9994 and Rtrain2=0.9998) for the prediction of TC of THNFs. The sensitivity analysis for the present THNFs revealed that the TC sensitivity is maximized at the highest VF and temperature.
ISSN:0167-7322
1873-3166
DOI:10.1016/j.molliq.2023.122338