Efficacy evaluation of oxide-MWCNT water hybrid nanofluids: an experimental and artificial neural network approach

V Kumar, A Pare, AK Tiwari, SK Ghosh - Colloids and Surfaces A …, 2021 - Elsevier
Colloids and Surfaces A: Physicochemical and Engineering Aspects, 2021Elsevier
The temperature dependencies of the thermophysical properties of different hybrid
nanofluids have been investigated in the present work. Laboratory experiments were
performed and optimized ANN model was developed for prediction and regression analysis.
MWCNT-water based Al 2 O 3, TiO 2, ZnO and CeO 2 nanofluids were used for this purpose.
Metal oxide based nanofluids and MWCNT nanofluids were prepared and mixed in the 80:
20 volumetric ratio. Nanofluids were prepared for volumetric concentrations varying from …
Abstract
The temperature dependencies of the thermophysical properties of different hybrid nanofluids have been investigated in the present work. Laboratory experiments were performed and optimized ANN model was developed for prediction and regression analysis. MWCNT-water based Al2O3, TiO2, ZnO and CeO2 nanofluids were used for this purpose. Metal oxide based nanofluids and MWCNT nanofluids were prepared and mixed in the 80:20 volumetric ratio. Nanofluids were prepared for volumetric concentrations varying from 0.25% to 2.0%. Thermophysical properties of hybrid nanofluids were measured at temperatures varying from 25 °C to 50 °C. Thermal conductivity ratios, specific heat, dynamic viscosity ratio and density were obtained against varying parameters. The CeO2 - MWCNT/water hybrid nanofluid showed highest efficacy with excellent thermophysical properties and highest Mouromtseff number (MO). A hyper-parameter optimized ANN model predicted the properties of hybrid nanofluids across four thermophysical parameters. The ANN predicted results provide good accuracy with experimental results (R > 0.999, MSE < 0.001, Deviations < ± 5%).
Elsevier
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