Experimental investigation and machine learning modeling of the effects of hybridization mixing ratio, nanoparticle type, and temperature on the thermophysical properties of Fe3O4/TiO2, Fe3O4/MgO, and Fe3O4/ZnO-DI water hybrid ferrofluids

Abstract

Please read abstract in the article.

Description

Keywords

Magnetic hybrid ferrofluids (MHFs), Thermoelectric conductivity (TEC), Stability, Hybridization mixing ratios, Viscosity, Heat transfer efficiency

Sustainable Development Goals

SDG-09: Industry, innovation and infrastructure

Citation

Adogbeji, V.O., Atofarati, E.O., Sharifpur, M. et al. Experimental investigation and machine learning modeling of the effects of hybridization mixing ratio, nanoparticle type, and temperature on the thermophysical properties of Fe3O4/TiO2, Fe3O4/MgO, and Fe3O4/ZnO-DI water hybrid ferrofluids. Journal of Thermal Analysis and Calorimetry 150, 10549–10573 (2025). https://doi.org/10.1007/s10973-025-14399-y.