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Prediction of heat transfer coefficient during condensation of R134a in inclined tubes using artificial neural network

机译:基于人工神经网络的R134a斜管冷凝过程传热系数预测。

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An artificial neural network model was developed to predict convective heat transfer coefficient (HTC) during condensation of R134a in an inclined smooth tube for the entire range of inclination angles at different saturation temperatures and regardless of flow pattern. The network was designed and trained using a total of 440 experimental data points collected from the literature. Inclination angle, mass flux, saturation temperature and mean vapor quality were used as input variables of multiple layer perceptron (MLP) neural network, while the corresponding HTC was selected as its output variable. By trial-and-error method, MLP network with 18 neurons in the hidden layer was achieved as optimal structure of the ANN which made it possible to predict the HTC with a high accuracy. Mean absolute percent error (NAPE) of 1.48% and correlation coefficient (R) of 0.997 for training data and MAPE of 1.94% and R value of 0.995 for testing data were obtained. Also, 95% and 99% all data were within +/- 5% and +/- 7% error band, respectively. MAPE of 1.61% and R value of 0.9963 were calculated for all data. These results confirm the high ability of the ANNs for predicting the HTC values for the entire range of inclination angles and independent of the flow pattern. (C) 2016 Elsevier Ltd. All rights reserved.
机译:开发了一个人工神经网络模型来预测在倾斜的光滑管中R134a冷凝过程中,在不同饱和温度和倾角的整个倾角范围内,无论流动模式如何,对流换热系数(HTC)。该网络是使用从文献中收集的440个实验数据点进行设计和训练的。倾角,质量通量,饱和温度和平均蒸气质量用作多层感知器(MLP)神经网络的输入变量,而选择相应的HTC作为其输出变量。通过试错法,实现了在隐层中具有18个神经元的MLP网络作为ANN的最佳结构,从而可以高精度地预测HTC。对于训练数据,获得的平均绝对百分比误差(NAPE)为1.48%,相关系数(R)为0.997,对于测试数据,获得的MAPE为1.94%,R值为0.995。同样,所有数据的95%和99%分别在+/- 5%和+/- 7%误差带内。对于所有数据,MAPE为1.61%,R值为0.9963。这些结果证实了人工神经网络对整个倾角范围内的HTC值具有预测能力,并且与流动模式无关,具有很高的预测能力。 (C)2016 Elsevier Ltd.保留所有权利。

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