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Prediction of the Thermal Conductivity of Refrigerants by Computational Methods and Artificial Neural Network

机译:用计算方法和人工神经网络预测制冷剂的导热系数

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摘要

>Background: The thermal conductivity of fluids can be calculated by several computational methods. However, these methods are reliable only at the confined levels of density, and there is no specific computational method for calculating thermal conductivity in the wide ranges of density.>Methods: In this paper, two methods, an Artificial Neural Network (ANN) approach and a computational method established upon the Rainwater-Friend theory, were used to predict the value of thermal conductivity in all ranges of density. The thermal conductivity of six refrigerants, R12, R14, R32, R115, R143, and R152 was predicted by these methods and the effectiveness of models was specified and compared.>Results: The results show that the computational method is a usable method for predicting thermal conductivity at low levels of density. However, the efficiency of this model is considerably reduced in the mid-range of density. It means that this model cannot be used at density levels which are higher than 6. On the other hand, the ANN approach is a reliable method for thermal conductivity prediction in all ranges of density. The best accuracy of ANN is achieved when the number of units is increased in the hidden layer.>Conclusion: The results of the computational method indicate that the regular dependence between thermal conductivity and density at higher densities is eliminated. It can develop a nonlinear problem. Therefore, analytical approaches are not able to predict thermal conductivity in wide ranges of density. Instead, a nonlinear approach such as, ANN is a valuable method for this purpose.
机译:>背景:可以通过多种计算方法来计算流体的导热系数。但是,这些方法仅在有限的密度水平上是可靠的,并且没有用于在宽密度范围内计算导热系数的特定计算方法。>方法:在本文中,有两种方法,一种是人工方法。使用神经网络(ANN)方法和基于Rainwater-Friend理论建立的计算方法来预测所有密度范围内的热导率值。通过这些方法预测了R12,R14,R32,R115,R143和R152六种制冷剂的导热系数,并说明了模型的有效性。>结果:结果表明,该计算方法是在低密度水平下预测导热系数的可用方法。但是,该模型的效率在密度的中间范围内显着降低。这意味着不能在高于6的密度级别上使用该模型。另一方面,ANN方法是在所有密度范围内进行导热系数预测的可靠方法。当在隐层中增加单位数量时,ANN的精度最高。>结论:计算方法的结果表明,在较高密度下,导热系数与密度之间的规律相关性已消除。它可以发展出非线性问题。因此,分析方法无法预测大范围密度下的导热系数。取而代之的是,诸如ANN之类的非线性方法是用于此目的的一种有价值的方法。

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