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MODELING OF REFRIGERANT FLOW THROUGH ADIABATIC CAPILLARY TUBES USING NEURAL NETWORK AND RESPONSE SURFACE METHODOLOGY

机译:神经网络和响应表面方法对绝热毛细管中的制冷剂流动进行建模

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This paper presents a new Response Surface Methodology based neural network approach to model the refrigerant flow through adiabatic capillary tube. Experimental data of ten different refrigerants in the literatures covering subcooled, two-phase and supercritical inlet conditions are collected as the database, which plays as an experiment rig. Box-Behnken design (BBD) and Central Composite design (CCD) are applied to determine a small dataset for neural network training. With BBD, 25 sets of data are selected for neural network training and the average deviation (A.D.), standard deviation (S.D.) and coefficient of determination (R~2) of trained neural network for all data are 2.6%, 9.6% and 0.948, respectively. With CCD, 22 sets of data are selected and the A.D., S.D. and R2 for all data are 0.05%, 10.2% and 0.934, respectively. In addition, the results show that the proposed model is superior than classical polynomial response surface model in such a nonlinear problem.
机译:本文提出了一种新的基于响应面方法的神经网络方法,以对通过绝热毛细管的制冷剂流动进行建模。收集了文献中涵盖过冷,两相和超临界入口条件的十种不同制冷剂的实验数据作为数据库,作为实验平台。 Box-Behnken设计(BBD)和中央复合设计(CCD)用于确定用于神经网络训练的小型数据集。使用BBD,选择了25组数据进行神经网络训练,所有数据的训练神经网络的平均偏差(AD),标准偏差(SD)和确定系数(R〜2)分别为2.6%,9.6%和0.948 , 分别。使用CCD时,将选择22组数据,然后选择A.D.,S.D。所有数据的R2和R2分别为0.05%,10.2%和0.934。此外,结果表明,在这种非线性问题上,所提出的模型优于经典的多项式响应面模型。

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