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Bayesian-optimized machine learning and experimental study of Al₂O₃-CuO hybrid nanofluid thermal performance in turbulent circular tube flow

Praveen Kumar Kanti, Hallera Basavarajappa Marulasiddeshi, Nejla Mahjoub Saïd, V. Vicki Wanatasanappan, Prabhu Paramasivam, Leliso Hobicho Dabelo

2025Scientific Reports6 citationsDOIOpen Access PDF

Abstract

Abstract This study explores the thermal behavior of hybrid nanofluids (HNFs) composed of water mixed with equal proportions (50:50) of Al₂O₃ and CuO nanoparticles (NPs) under turbulent flow regimes. The nanofluids (NFs) are prepared in the volume concentrations range of 0–1%. Both experimental investigations and numerical simulations were carried out to evaluate the effects of NP concentration and Reynolds number (Re) on Nusselt number (Nu), friction factor, and entropy generation. Results demonstrated a marked enhancement in heat transfer with increasing NP concentration and flow rate. Notably, the use of HNFs led to a 71% reduction in total entropy generation (TEG) compared to water alone. Empirical correlations were developed to predict the Nu and friction factor accurately. Furthermore, an XGBoost machine learning model was employed to estimate thermal parameters with high precision. The model achieved an R² of 1.000 (training) and 0.991 (testing) with an MSE of 0.001 for TEG. For the friction factor, R² training as 0.686 and R² test as 0.916 (testing) were obtained. Nu model achieved perfect training accuracy (R² = 1.000) and strong testing performance (R² = 0.975, MSE = 29.457). These results affirm the effectiveness of XGBoost in modeling thermofluidic behavior in HNF systems.

Topics & Concepts

NanofluidNusselt numberReynolds numberTurbulenceMaterials scienceEntropy (arrow of time)ThermalHeat transferMechanicsFriction factorThermodynamicsMachine learningMechanical engineeringFlow (mathematics)Artificial intelligenceBejan numberComputer scienceAbsolute deviationNanoparticleHeat transfer coefficientEmpirical modellingRange (aeronautics)MathematicsVolumetric flow rateThermal engineeringFriction lossHeat transfer enhancementPerformance predictionComposite materialNanofluid Flow and Heat TransferSolar Thermal and Photovoltaic SystemsFluid Dynamics and Vibration Analysis
Bayesian-optimized machine learning and experimental study of Al₂O₃-CuO hybrid nanofluid thermal performance in turbulent circular tube flow | Litcius