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Heat Transfer and Pressure Drop Prediction In An In-Line Flat Tube Bundle by Radial Basis Function Network

机译:基于径向基函数网络的直管扁管束传热和压降预测

摘要

This paper aims to predict the heat transfer and pressure drop for an in-line flat tubes configuration in a cross-flow using an artificial neural network. The numerical study of a two-dimensional steady state and incompressible laminar flow for an in-line flat tube configuration in a cross-flow is also considered in this study. The Reynolds number varies from 10 to 320. Heat transfer coefficient and pressure drop results are presented for tube configurations at three transverse pitches of 2.5, 3.0, and 4.5 with two longitudinal pitches of 3.0 and 6.0. The predicted results for the average Nusselt number and dimensionless pressure show good agreement with previous work. The accuracy between the actual values and the neural network approach model results was obtained with a mean absolute relative error less than 4.1%, 4.8%, and 3.8% for the average Nusselt number, dimensionless pressure drop and average friction factor, respectively.
机译:本文旨在使用人工神经网络来预测横流中直列扁平管结构的传热和压降。在这项研究中,还考虑了直管内直管结构的二维稳态和不可压缩层流的数值研究。雷诺数在10到320之间变化。给出了在三个横向节距2.5、3.0和4.5以及两个纵向节距为3.0和6.0的管结构的传热系数和压降结果。平均Nusselt数和无量纲压力的预测结果与先前的工作吻合良好。获得的实际值与神经网络方法模型结果之间的精度分别为:平均努塞尔数,无量纲压降和平均摩擦系数的平均绝对相对误差分别小于4.1%,4.8%和3.8%。

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