首页> 外文会议>The 10th International Conference on Enhancement and Promotion of Computational Methods in Engineering and Science (EPMESC X) >Factor Analysis of Convective Heat Transfer for a Horizontal Tube in the Turbulent Flow Region Using Artificial Neural Network
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Factor Analysis of Convective Heat Transfer for a Horizontal Tube in the Turbulent Flow Region Using Artificial Neural Network

机译:基于人工神经网络的紊流区水平管对流换热的因子分析。

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Artificial neural network (ANN) has shown its superior predictive power compared to the conventional approaches in many studies. However, it is always treated as a ‘black box’ because it provides little explanation to the relative influence of the independent variables in the prediction process. Ghajar et al. [1] used the ANN method to develop an empirical correlation for the heat transfer data in a horizontal tube with a reentrant inlet under uniform wall heat flux boundary condition in the transition region. In their work, the least and the most important variables were examined using the coefficient matrices based on a single training. However, the method was only applied to one set of experimental data. The applicability of their method to other data sets is not known. In this study, the method proposed in the previous study is modified and a new set of experimental data for different inlet configurations (square-edged and bell-mouth) from the work of Ghajar and Tam [2] in the turbulent region are used to further verify this method. An index of contribution is defined in this study. Furthermore, the gradient method used and the number of neurons and iterations for each training are carefully examined. Using the revised method and the index of contribution defined in this study, an ANN correlation is established and the Reynolds number (Re) and the Prandtl number (Pr) are observed as the most important parameters. The length-to-diameter ratio (x/D) and the viscosity ratio (μb/μw)0.14 are found to be the least important parameters.
机译:在许多研究中,与传统方法相比,人工神经网络(ANN)表现出了优越的预测能力。但是,它始终被视为“黑匣子”,因为它几乎无法解释自变量在预测过程中的相对影响。 Ghajar等。文献[1]使用ANN方法为过渡区中均匀壁热通量边界条件下带折流入口的水平管中的传热数据建立了经验相关性。在他们的工作中,基于一次训练使用系数矩阵检查了最小和最重要的变量。但是,该方法仅应用于一组实验数据。他们的方法对其他数据集的适用性未知。在本研究中,对先前研究中提出的方法进行了修改,并使用了湍流区域中的Ghajar和Tam [2]的工作针对不同进气口配置(方形和钟形嘴)的一组新的实验数据,以用于进一步验证此方法。在这项研究中定义了贡献指标。此外,仔细检查所使用的梯度方法以及每次训练的神经元数量和迭代次数。使用修正的方法和本研究中定义的贡献指数,建立了ANN相关性,并且雷诺数(Re)和普朗特数(Pr)被视为最重要的参数。发现长径比(x / D)和粘度比(μb/μw)0.14是最不重要的参数。

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