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首页> 外文期刊>International Journal of Refrigeration >Use of artificial neural network approach for depicting mass flow rate of R134a/LPG refrigerant through straight and helical coiled adiabatic capillary tubes of vapor compression refrigeration system
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Use of artificial neural network approach for depicting mass flow rate of R134a/LPG refrigerant through straight and helical coiled adiabatic capillary tubes of vapor compression refrigeration system

机译:使用人工神经网络方法来描绘R134A / LPG制冷剂的质量流速通过直螺旋式绝热毛细管的蒸汽压缩制冷系统

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摘要

In this work, an experimental investigation carried out with R134a and LPG refrigerant mixture for depicting mass flow rate through straight and helical coil adiabatic capillary tubes in a vapor compression refrigeration system. Various experiments conducted under steady-state conditions, by changing capillary tube length, inner diameter, coil diameter and degree of subcooling. The outcomes demonstrated that mass flow rate through helical coil capillary tube discovered lower than straight capillary tube by about 5- 16%. Dimensionless correlation and Artificial Neural Network (ANN) models developed to predict the mass flow rate. It found that dimensionless correlation and ANN model predictions concurred well with experimental results and brought out an absolute fraction of variance of 0.961 and 0.988, root mean square error of 0.489 kg/h and 0.275 kg/h and mean absolute percentage error of 4.75% and 2.31%, respectively. The outcomes suggested that ANN model shows better statistical prediction than dimensionless correlation model. (c) 2017 Elsevier Ltd and IIR. All rights reserved.
机译:在这项工作中,用R134A和LPG制冷剂混合物进行的实验研究,用于通过蒸汽压缩制冷系统中的直线和螺旋线圈​​绝热毛细管描绘质量流速。通过改变毛细管长度,内径,线圈直径和过过冷却度,在稳态条件下进行各种实验。结果表明,通过螺旋卷筒管的质量流速被发现低于直毛细管约5-16%。无量纲相关和人工神经网络(ANN)模型来预测质量流量。它发现无量纲相关性和ANN模型预测与实验结果很好地相容,并达到0.961和0.988的无方差的绝对分数,根均方误差为0.489 kg / h和0.275kg / h,平均百分比误差为4.75% 2.31%分别。结果表明,ANN模型显示出比无量纲相关模型更好的统计预测。 (c)2017年Elsevier Ltd和IIR。版权所有。

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