Kadirgama G, Ramasamy D, Kadirgama K, Samylingam L, Aslfattahi Navid, Chalak Qazani Mohammad Reza, Kok Chee Kuang, Yusaf Talal, Schmirler Michal
Faculty of Mechanical and Automotive Engineering Technology, Universiti Malaysia Pahang, Pekan, 26600, Pahang, Malaysia.
Center of Excellence for Advanced Research in Fluid Flow, Universiti Malaysia Pahang, Pekan, 26600, Pahang, Malaysia.
Sci Rep. 2025 Mar 11;15(1):8383. doi: 10.1038/s41598-025-92461-3.
Efficient heat dissipation is crucial for various industrial and technological applications, ensuring system reliability and performance. Advanced thermal management systems rely on materials with superior thermal conductivity and stability for effective heat transfer. This study investigates the thermal conductivity, viscosity, and stability of hybrid AlO-CuO nanoparticles dispersed in Therminol 55, a medium-temperature heat transfer fluid. The nanofluid formulations were prepared with CuO-AlO mass ratios of 10:90, 20:80, and 30:70 and tested at nanoparticle concentrations ranging from 0.1 wt% to 1.0 wt%. Experimental results indicate that the hybrid nanofluids exhibit enhanced thermal conductivity, with a maximum improvement of 32.82% at 1.0 wt% concentration, compared to the base fluid. However, viscosity increases with nanoparticle loading, requiring careful optimization for practical applications. To further analyze and predict thermal conductivity, a Type-2 Fuzzy Neural Network (T2FNN) was employed, demonstrating a correlation coefficient of 96.892%, ensuring high predictive accuracy. The integration of machine learning enables efficient modeling of complex thermal behavior, reducing experimental costs and facilitating optimization. These findings provide insights into the potential application of hybrid nanofluids in solar thermal systems, heat exchangers, and industrial cooling applications.
高效散热对于各种工业和技术应用至关重要,可确保系统的可靠性和性能。先进的热管理系统依赖具有卓越热导率和稳定性的材料来实现有效的热传递。本研究调查了分散在中温传热流体Therminol 55中的AlO-CuO混合纳米颗粒的热导率、粘度和稳定性。纳米流体配方的CuO-AlO质量比为10:90、20:80和30:70,并在0.1 wt%至1.0 wt%的纳米颗粒浓度下进行测试。实验结果表明,与基础流体相比,混合纳米流体的热导率有所提高,在1.0 wt%浓度下最大提高了32.82%。然而,粘度随着纳米颗粒负载量的增加而增加,在实际应用中需要仔细优化。为了进一步分析和预测热导率,采用了二类模糊神经网络(T2FNN),其相关系数为96.892%,确保了较高的预测准确性。机器学习的集成能够对复杂的热行为进行高效建模,降低实验成本并便于优化。这些发现为混合纳米流体在太阳能热系统、热交换器和工业冷却应用中的潜在应用提供了见解。