Utilizing deep learning algorithms and artificial neural networks to forecast the viscosity, thermal conductivity, and electrical conductivity of Fe3O4/TiO2 magnetic hybrid nanofluid

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2026Author
K Jebur, ShadhaM Abdullah, Hiba
D Abbas, Areej
Sawaran Singh, Narinderjit Singh
J Kasim, Dheyaa
Salahshour, Soheil
Rahimi, A
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Jebur SK, Abdullah HM, Abbas AD, Sawaran Singh NS, Jasim DJ, Salahshour S, Rahimi A. Utilizing deep learning algorithms and artificial neural networks to forecast the viscosity, thermal conductivity, and electrical conductivity of Fe3O4/TiO2 magnetic hybrid nanofluid. Sci Rep. 2026 Apr 6.Abstract
Machine learning provides a powerful approach for predicting the complex thermophysical properties of nanofluids. This study employs a suite of machine learning algorithms to forecast the viscosity, thermal conductivity, and electrical conductivity of a Fe₃O₄/TiO₂ magnetic nanofluid, using experimental data over the temperature range of 10-50 °C and volume fractions of 0-0.3%. Among Gaussian Process Regression, Multiple Linear Regression, Support Vector Regression, Multilayer Perceptron, and Multiple Polynomial Regression (MPR), the MPR model demonstrated superior performance, achieving a correlation coefficient above 0.99 and the lowest error metrics (e.g., Root Mean Square Error of 0.0216 for viscosity). Subsequent multi-objective optimization using the Multi-objective Grey Wolf Optimizer (MOGWO) generated a Pareto front of optimal solutions. The most balanced solution, identified using entropy-based weighting, corresponded to a configuration of 60 wolves and 300 iterations. This integrated framework accurately predicts the thermophysical properties and identifies optimal trade-offs for engineering applications.
















