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Heat Rate Predictions in Humid Air-Water Heat Exchangers Using Correlations and Neural Networks

机译:利用相关性和神经网络预测湿空气-水热交换器中的热速率

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We consider the flow of humid air over fin-tube multi-row multi-column compact heat exchangers with possible condensation. Previously published experimental data are used to show that a regression analysis for the best-fit correlation of a prescribed from does not provide an unique answer, and that there are small but significant differences between the predictions of the different correlations thus obtained. It is also shown that it is more accurate to predict the heat rate directly rather than through intermediate quantities like the j-factors. The artificial neural network technique is offered as an alternative tech- nique. It is trained with experimental values of the humid-air flow rates, dry-bulb and wet-bulb inlet temperatures, fin spacing, and heat transfer rates. The trained network is then used to make predictions of the heat transfer. Comparison of the results dmon- strates that the neural network is more accurate than convectional coorelations.
机译:我们考虑湿空气在翅片管多排多柱紧凑型换热器上的流动,并可能产生冷凝。先前发布的实验数据用于显示对处方的最佳拟合相关性的回归分析不能提供唯一的答案,因此,所获得的不同相关性的预测之间存在很小但明显的差异。还表明,直接预测加热速率比通过j因子这样的中间量预测更为准确。提供了人工神经网络技术作为替代技术。用湿空气流速,干球和湿球入口温度,翅片间距和传热率的实验值进行训练。然后,将训练有素的网络用于热传递的预测。结果的比较表明,神经网络比对流协相关更准确。

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