Skouras Eugene D, Karagiannakis Nikolaos P, Burganos Vasilis N
Institute of Chemical Engineering Sciences (ICE-HT), Foundation for Research and Technology, Hellas (FORTH), GR-26504 Patras, Greece.
Department of Mechanical Engineering, University of the Peloponnese, GR-26334 Patras, Greece.
Nanomaterials (Basel). 2024 Jan 30;14(3):282. doi: 10.3390/nano14030282.
Hybrid nanofluids contain more than one type of nanoparticle and have shown improved thermofluidic properties compared to more conventional ones that contain a single nanocomponent. Such hybrid systems have been introduced to improve further the thermal and mass transport properties of nanoparticulate systems that affect a multitude of applications. The impact of a second particle type on the effective thermal conductivity of nanofluids is investigated here using the reconstruction of particle configurations and prediction of thermal efficiency with meshless methods, placing emphasis on the role of particle aggregation. An algorithm to obtain particle clusters of the core-shell type is presented as an alternative to random mixing. The method offers rapid, controlled reconstruction of clustered systems with tailored properties, such as the fractal dimension, the average number of particles per aggregate, and the distribution of distinct particle types within the aggregates. The nanoparticle dispersion conditions are found to have a major impact on the thermal properties of hybrid nanofluids. Specifically, the spatial distribution of the two particle types within the aggregates and the shape of the aggregates, as described by their fractal dimension, are shown to affect strongly the conductivity of the nanofluid even at low volume fractions. Cluster configurations made up of a high-conducting core and a low-conducting shell were found to be advantageous for conduction. Low fractal dimension aggregates favored the creation of long continuous pathways across the nanofluid and increased conductivity.
混合纳米流体包含不止一种类型的纳米颗粒,与包含单一纳米组分的传统纳米流体相比,其热流体性质得到了改善。引入这种混合体系是为了进一步提高纳米颗粒体系的热传输和质量传输性质,这些性质影响着众多应用。本文利用颗粒构型的重构和无网格方法预测热效率,研究了第二种颗粒类型对纳米流体有效热导率的影响,重点关注颗粒团聚的作用。提出了一种获得核壳型颗粒团簇的算法,作为随机混合的替代方法。该方法能够快速、可控地重构具有定制性质的团聚体系,如分形维数、每个聚集体的平均颗粒数以及聚集体内不同颗粒类型的分布。发现纳米颗粒的分散条件对混合纳米流体的热性质有重大影响。具体而言,聚集体内两种颗粒类型的空间分布以及聚集体的形状(由其分形维数描述),即使在低体积分数下也被证明对纳米流体的电导率有强烈影响。由高导电核和低导电壳组成的团簇构型被发现有利于传导。低分形维数的聚集体有利于在纳米流体中形成长的连续通道并提高电导率。