Accurate pressure drop estimation in forced boiling phenomena is important during the thermal analysis and the geometric design of cryogenic heat exchangers. However, current methods to predict the pressure drop have one of two problems: lack of accuracy or generalization to different situations. In this work, we present the correlated-informed neural networks (CoINN), a new paradigm in applying the artificial neural network (ANN) technique combined with a successful pressure drop correlation as a mapping tool to predict the pressure drop of zeotropic mixtures in micro-channels. The proposed approach is inspired by Transfer Learning, highly used in deep learning problems with reduced datasets. Our method improves the ANN performance by transferring the knowledge of the Sun & Mishima correlation for the pressure drop to the ANN. The correlation having physical and phenomenological implications for the pressure drop in micro-channels considerably improves the performance and generalization capabilities of the ANN. The final architecture consists of three inputs: the mixture vapor quality, the micro-channel inner diameter, and the available pressure drop correlation. The results show the benefits gained using the correlated-informed approach predicting experimental data used for training and a posterior test with a mean relative error (mre) of 6%, lower than the Sun & Mishima correlation of 13%. Additionally, this approach can be extended to other mixtures and experimental settings, a missing feature in other approaches for mapping correlations using ANNs for heat transfer applications.
翻译:在强制沸腾现象的热分析和低温热交换器的几何设计期间,对强制沸腾现象的准确压力降压估计很重要。然而,目前预测压力降压的方法有两个问题之一:缺乏准确性或对不同情况缺乏概括性。在这项工作中,我们介绍了相关且知情的神经网络(CoINN),这是应用人工神经网络(ANN)技术的新范例,加上成功的压力降压关系,作为预测微通道中热质混合物压力降压的绘图工具。拟议方法的灵感来自转移学习,该方法在减少数据集的深层学习问题中使用。我们的方法通过向ANNN转移S & Mishima相关压力降压的知识来改进ANN的性能。在应用人工神经网络(ANN)技术时,一个具有物理和生理影响的新范例,以及一个成功的降压下降关系,作为预测微气流中热混合物降压混合物降压作用的工具。最后结构由三种投入组成:混合物蒸气质量、微气流内部直径,以及现有的压力降温关联性关系。我们的方法改进了AN-NNNT的性能的性能表现。我们的方法通过向AN-MI和Mimimal-imal-imal-imal-toimex