Prediction of Humid Air Heat Exchanger Performance Using Artificial Neural Networks

A. Pacheco-Vega, M. Sen, K. T. Yang, R. McClain
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引用次数: 2

Abstract

In the present study we apply an artificial neural network to predict the operation of a humid air-water fin-tube compact heat exchanger. The network configuration is of the feedforward type with a sigmoid activation function and a backpropagation algorithm. Published experimental data, corresponding to humid air flowing over the heat exchanger tubes and water flowing inside them, are used to train the neural network. After training with known experimental values of the humid-air flow rates, dry-bulb and wet-bulb inlet temperatures for various geometrical configurations, the j-factor and heat transfer rate predictions of the network were tested against the experimental values. Comparisons were made with published predictions of power-law correlations which were obtained from the same data. The results demonstrate that the neural network is able to predict the performance of this heat exchanger much better than the correlations.
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基于人工神经网络的湿空气换热器性能预测
本文应用人工神经网络对湿空气-水翅片管紧凑型换热器的运行进行了预测。网络配置为前馈型,具有s型激活函数和反向传播算法。发表的实验数据,对应于流经热交换器管的潮湿空气和管内流动的水,被用来训练神经网络。在使用已知的各种几何构型的湿空气流速、干球和湿球入口温度的实验值进行训练后,根据实验值对网络的j因子和传热率预测进行了测试。与从相同数据中获得的幂律相关性的已发表预测进行了比较。结果表明,神经网络对换热器性能的预测效果优于相关预测。
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