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Generalized neural network correlation for flow boiling heat transfer of R22 and its alternative refrigerants inside horizontal smooth tubes

机译:R22及其替代制冷剂在水平光管内流动沸腾传热的广义神经网络关联

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摘要

The correct prediction of refrigerant boiling heat transfer performance is important for the design of evaporators. A generalized neural network correlation for boiling heat transfer coefficient of R22 and its alternative refrigerants R134a, R407C and R410A inside horizontal smooth tubes has been developed in this paper. Four kinds of dimensionless parameter groups from existing generalized correlations are selected as the input of neural network, while the Nusselt number is used as the output. Three-layer perceptron is employed as the universal approximator to build the relationship between the input and output parameters. The neuron number of hidden layer is determined by the performance of model accuracy and the standard sensitivity analysis. The experimental data of the four refrigerants in open literatures are used for correlation. The results show that the input parameter group based on the Gungor-Winterton correlation is better than the other three groups. Compared with the experimental data, the average, mean and root-mean-square deviations of the trained neural network are 2.5%, 13.0% and 20.3%, respectively, and approximately 74% of the deviations are within ±20%, which is much better than that of the existing generalized correlations.
机译:对制冷剂沸腾传热性能的正确预测对于蒸发器的设计很重要。本文研究了R22及其替代制冷剂R134a,R407C和R410A在水平光导管内沸腾传热系数的广义神经网络相关性。从现有的广义相关中选择四种无量纲参数组作为神经网络的输入,而将Nusselt数用作输出。三层感知器用作通用逼近器,以建立输入和输出参数之间的关系。隐藏层的神经元数量取决于模型准确性和标准灵敏度分析的性能。将公开文献中的四种制冷剂的实验数据用于相关性。结果表明,基于Gungor-Winterton相关性的输入参数组优于其他三个组。与实验数据相比,训练后的神经网络的平均偏差,均值偏差和均方根偏差分别为2.5%,13.0%和20.3%,大约74%的偏差在±20%以内,这在很大程度上比现有的广义相关更好。

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