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首页> 外文期刊>Applied thermal engineering: Design, processes, equipment, economics >Characterization of a triple concentric-tube heat exchanger with corrugated tubes using Artificial Neural Networks (ANN)
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Characterization of a triple concentric-tube heat exchanger with corrugated tubes using Artificial Neural Networks (ANN)

机译:使用人工神经网络与瓦楞烟管的三重同心管热交换器的表征(ANN)

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摘要

This work presents a model of Artificial Neural Networks (ANNs) capable of accurately predicting the heat transfer rate and pressure drop in a triple concentric-tube heat exchanger (TTHX) with corrugated and non-corrugated inner tubes and involving a fluid typically used in the food industry. Pitch and depth are varied in the case of corrugated tubes. The ANN model was developed and validated using a huge databank including 181 experimental datasets. The best training algorithm is the Bayesian regulation. A back-propagation algorithm, which is considered to be the most common learning method for ANNs, is used in the training and testing of the network. Different network configurations were tested, and the optimum ANN configuration consisted of a network with two hidden layers with 15 and 21 nodes in the first and second layer, respectively. The ANNs results were found to be in good agreement with the experimental data, with the absolute average relative deviation (AARD) being below 1.91% for the heat transfer coefficient and below 3.82% for the pressure drop, respectively. The simplicity of the developed ANN model and its low levels of error for a huge experimental databank are some of the key features of the model.
机译:该工作介绍了一种人工神经网络(ANNS)模型,其能够精确地预测三联同心管热交换器(TTHX)中的传热速率和压力下降,其具有波纹状和非波纹内管,并且涉及通常使用的流体食品工业。在波纹管的情况下,俯仰和深度变化。 ANN模型是使用巨大数据库开发和验证的,包括181个实验数据集。最好的训练算法是贝叶斯法规。在网络的训练和测试中使用了被认为是ANNS最常见的学习方法的反向传播算法。测试了不同的网络配置,并且最佳ANN配置包括具有两个隐藏层的网络,分别在第一和第二层中具有15和21个节点。发现ANNS结果与实验数据吻合良好,绝对平均相对偏差(AARD)分别低于1.91%,对于压降分别低于3.82%。发达的ANN模型的简单性及其巨大的实验数据库的低误差是模型的一些关键特征。

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