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Contribution Analysis Of Dimensionless Variables For Laminar And Turbulent Flow Convection Heat Transfer In A Horizontal Tube Using Artificial Neural Network

机译:基于人工神经网络的水平管内层流和湍流对流换热的无量纲变量贡献分析

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摘要

The artificial neural network (ANN) method has shown its superior predictive power compared to the conventional approaches in many studies. However, it has always been treated as a "black box" because it provides little explanation on the relative influence of the independent variables in the prediction process. In this study, the ANN method was used to develop empirical correlations for laminar and turbulent heat transfer in a horizontal tube under the uniform wall heat flux boundary condition and three inlet configurations (re-entrant, square-edged, and bell-mouth). The contribution analysis for the dimensionless variables was conducted using the index of contribution defined in this study. The relative importance of the independent variables appearing in the correlations was examined using the index of contribution based on the coefficient matrices of the ANN correlations. For the turbulent heat transfer data, the Reynolds and Prandtl numbers were observed as the most important parameters, and the length-to-diameter and bulk-to-wall viscosity ratios were found to be the least important parameters. The method was extended to analyze the more complicated forced and mixed convection data in developing laminar flow. The dimensionless parameters influencing the heat transfer in this region were the Rayleigh number and the Graetz number. The contribution analysis clearly showed that the Rayleigh number has a significant influence on the mixed convection heat transfer data, and the forced convection heat transfer data is more influenced by the Graetz number. The results of this study clearly indicated that the contribution analysis method can be used to provide correct physical insight into the influence of different variables or a combination of them on complicated heat transfer problems.
机译:在许多研究中,与传统方法相比,人工神经网络(ANN)方法已显示出其优越的预测能力。但是,它始终被视为“黑匣子”,因为它几乎没有解释自变量在预测过程中的相对影响。在这项研究中,使用ANN方法开发了在均匀壁热通量边界条件和三种进气口配置(凹角,方形和喇叭口)下水平管中层流和湍流传热的经验相关性。使用本研究中定义的贡献指数进行了无量纲变量的贡献分析。使用基于ANN相关性系数矩阵的贡献指数,检查了相关性中出现的自变量的相对重要性。对于湍流传热数据,雷诺数和普朗特数被认为是最重要的参数,而长度与直径和体积与壁的粘度比则是最不重要的参数。该方法被扩展为分析层流发展过程中更复杂的强迫和混合对流数据。影响该区域传热的无量纲参数是瑞利数和格列兹数。贡献分析清楚地表明,瑞利数对混合对流传热数据有显着影响,而强迫对流传热数据受Graetz数影响更大。这项研究的结果清楚地表明,贡献分析方法可用于提供正确的物理见解,以了解不同变量或它们的组合对复杂传热问题的影响。

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  • 来源
    《Heat Transfer Engineering》 |2008年第9期|793-804|共12页
  • 作者单位
  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 00:19:45

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