2022
DOI: 10.48550/arxiv.2201.07835
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Correlated-informed neural networks: a new machine learning framework to predict pressure drop in micro-channels

Abstract: 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… Show more

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