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首页> 外文期刊>Bulletin of materials science >Electrical conductivity and pH modelling of magnesium oxidea??ethylene glycol nanofluids
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Electrical conductivity and pH modelling of magnesium oxidea??ethylene glycol nanofluids

机译:氧化镁,乙二醇纳米流体的电导率和pH建模

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Nanofluids as new composite fluids have found their place as one of the attractive research areas. In recent years, research has increased on using nanofluids as alternative heat transfer fluids to improve the efficiency of thermal systems without increasing their size. Therefore, the examination and approval of different novel modelling techniques on nanofluid properties have made progress in this area. Stability of the nanofluids is still an important concern. Research studies on nanofluids have indicated that electrical conductivity and pH are two important properties that have key roles in the stability of the nanofluid. In the present work, three different sizes of magnesium oxide (MgO) nanoparticles of 20, 40 and 100 nm at different volume fractions up to 3% of the base fluid of ethylene glycol (EG) were studied for pH and electrical conductivity modelling. The temperature of the nanofluids was between 20 and 70$^{circ}$C for modelling. A genetic algorithm polynomial neural network hybrid system and an adaptive neuro-fuzzy inference system approach have been utilized to predict the pH and the electrical conductivity of MgOa??EG nanofluids based on an experimental data set.
机译:纳米流体作为新型复合流体已成为有吸引力的研究领域之一。近年来,关于使用纳米流体作为替代传热流体以提高热系统效率而又不增加其尺寸的研究已经增多。因此,在纳米流体特性方面不同的新型建模技术的审查和批准在这一领域取得了进展。纳米流体的稳定性仍然是重要的问题。对纳米流体的研究表明,电导率和pH是两个重要特性,对纳米流体的稳定性起关键作用。在目前的工作中,研究了三种不同尺寸的20、40和100 nm的氧化镁(MgO)纳米颗粒,其体积分数高达乙二醇(EG)基础液的3%,用于pH和电导率建模。用于建模的纳米流体的温度在20至70°C之间。基于实验数据集,已使用遗传算法多项式神经网络混合系统和自适应神经模糊推理系统方法来预测MgOa ?? EG纳米流体的pH值和电导率。

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