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Experimental and ANN-Based Evaluation of Water-Based Al2O3, TiO2, and CuO Nanofluids for Enhanced Engine Cooling Performance
by
Sroka, Zbigniew J.
, Magdziak-Tokłowicz, Monika
, Sufe, Gadisa
in
aluminum oxide (Al2O3)
/ artificial neural network (ANN)
/ Business metrics
/ Cooling
/ copper oxide (CuO)
/ Data collection
/ Energy consumption
/ Energy efficiency
/ engine cooling
/ Heat conductivity
/ Heat transfer
/ Hydraulics
/ nanofluids
/ Nanoparticles
/ Neural networks
/ Surfactants
/ titanium dioxide (TiO2)
/ Vehicles
/ Viscosity
2025
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Experimental and ANN-Based Evaluation of Water-Based Al2O3, TiO2, and CuO Nanofluids for Enhanced Engine Cooling Performance
by
Sroka, Zbigniew J.
, Magdziak-Tokłowicz, Monika
, Sufe, Gadisa
in
aluminum oxide (Al2O3)
/ artificial neural network (ANN)
/ Business metrics
/ Cooling
/ copper oxide (CuO)
/ Data collection
/ Energy consumption
/ Energy efficiency
/ engine cooling
/ Heat conductivity
/ Heat transfer
/ Hydraulics
/ nanofluids
/ Nanoparticles
/ Neural networks
/ Surfactants
/ titanium dioxide (TiO2)
/ Vehicles
/ Viscosity
2025
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Experimental and ANN-Based Evaluation of Water-Based Al2O3, TiO2, and CuO Nanofluids for Enhanced Engine Cooling Performance
by
Sroka, Zbigniew J.
, Magdziak-Tokłowicz, Monika
, Sufe, Gadisa
in
aluminum oxide (Al2O3)
/ artificial neural network (ANN)
/ Business metrics
/ Cooling
/ copper oxide (CuO)
/ Data collection
/ Energy consumption
/ Energy efficiency
/ engine cooling
/ Heat conductivity
/ Heat transfer
/ Hydraulics
/ nanofluids
/ Nanoparticles
/ Neural networks
/ Surfactants
/ titanium dioxide (TiO2)
/ Vehicles
/ Viscosity
2025
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Experimental and ANN-Based Evaluation of Water-Based Al2O3, TiO2, and CuO Nanofluids for Enhanced Engine Cooling Performance
Journal Article
Experimental and ANN-Based Evaluation of Water-Based Al2O3, TiO2, and CuO Nanofluids for Enhanced Engine Cooling Performance
2025
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Overview
This study presents an integrated experimental and computational investigation into the thermal and hydraulic performance of three oxide-based nanofluids: aluminum oxide (Al2O3), titanium dioxide (TiO2), and copper oxide (CuO) for advanced engine cooling applications. A custom-built test rig was used to assess nanofluid behavior under varying flow rates, nanoparticle volume fractions, and temperature gradients, replicating realistic engine conditions. According to the results, at ideal concentrations, CuO nanofluids continuously demonstrate better heat transfer properties, outperforming TiO2 by up to 15% and AlO3 by 7%. However, performance plateaus beyond 1.5% volume fraction due to increased viscosity and pressure drop. A multilayer feedforward artificial neural network (ANN) model was developed to predict convective heat transfer coefficients and friction factors based on experimental inputs, achieving a mean absolute percentage error below 5% and a coefficient of determination (R2) exceeding 0.98. The ANN demonstrated robust generalization across varying operating conditions and nanoparticle types, confirming its utility for surrogate modeling and optimization. This work is distinguished by its dual focus on thermal efficiency and hydraulic stability, as well as its use of data-driven modeling validated by empirical results. The findings provide actionable insights for thermal management system design in internal combustion, hybrid, and electric vehicles, where efficient, compact, and reliable cooling solutions are increasingly vital. The study advances the practical application of nanofluids by offering a comparative, ANN-validated framework that bridges the gap between lab-scale performance and real-world automotive cooling demands.
Publisher
MDPI AG
Subject
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