人工神经网络技术估算水-氧化铝纳米流体的热物理性质

Q4 Environmental Science
Sajja Ravi Babu, K. K. Krishna Varma, Kunapuli Siva Satya Mohan
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引用次数: 3

摘要

纳米流体具有优于载体流体的热物理特性,是最具影响力的传热流体。导热系数、密度、粘度、比热、体积膨胀系数和其他热物理参数在任何传热应用的热管理中都起着重要作用。这种热管理控制设备或仪器的使用寿命,在其运行过程中散热。如果设备热管理良好,那么它的使用寿命将延长。否则设备会因过热而停止工作。纳米流体的热物理性质随纳米颗粒浓度的变化而变化。估计不同浓度的纳米颗粒的性质既耗时又不经济。文献中有许多经验模型可用于确定纳米流体的热物理性质。然而,每种模型提供不同的热物性值,在可用的模型中选择最佳模型是一项复杂的任务。为此,为了避免选择最佳模型的复杂性,并为了设想纳米流体的热物理性质,采用了人工神经网络(ANN)技术。该技术在研究人员中广泛应用于各种应用。在这项工作中,利用人工神经网络方法估算了体积分数在0.01%至0.1%之间的水基Al2O3纳米流体的粘度和导热系数。导热系数的均方误差(MSE)为4.504e-09,粘度的均方误差(MSE)为6.4742e-09。热导率和粘度数据集的训练时间分别为5秒和4秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network Technique for Estimating the Thermo-Physical Properties of Water-Alumina Nanofluid
With its superior thermo-physical characteristics to the carrier fluid, nanofluid is the most impactful heat transfer fluid. Thermal conductivity, density, viscosity, specific heat, coefficient of volumetric expansion, and other thermophysical parameters play an important part in the thermal management of any heat transfer application. This thermal management governs the service life of an equipment or apparatus, which dissipates heat during its operation. If the equipment is well-managed thermally, then its service life will be extended. Otherwise the equipment stops functioning due to excess heat. Thermo-physical properties of nanofluid vary with the change in the concentration of nanoparticles. Estimation of the properties with the varying concentrations of the nanoparticles is time consuming and is economically not viable. There were many empirical models available in the literature for determining the thermo-physical properties of nanofluids. However, each model provides different values of thermo-physical properties and choosing the best model among the models available is a complex task. In this regard, to avoid the complication in choosing the best model, and in order to envisage the thermo-physical properties of the nanofluid, the Artificial Neural Network (ANN) technique was used. This technique is widely used among the researchers for various applications. The ANN approach was utilized in this work to estimate viscosity and thermal conductivity of water-based Al2O3 nanofluid for volume fractions between 0.01% and 0.1%. For thermal conductivity, mean square error (MSE) was observed as 4.504e-09 and for viscosity, it was observed as 6.4742e-09. Training times were 5 seconds and 4 seconds for thermal conductivity and viscosity datasets, respectively.
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来源期刊
Ecological Engineering  Environmental Technology
Ecological Engineering Environmental Technology Environmental Science-Environmental Science (miscellaneous)
CiteScore
1.30
自引率
0.00%
发文量
159
审稿时长
8 weeks
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