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Deep learning predicts boiling heat transfer

Youngjoon Suh, Ramin Bostanabad, Yoonjin Won

2021Scientific Reports97 citationsDOIOpen Access PDF

Abstract

Boiling is arguably Nature's most effective thermal management mechanism that cools submersed matter through bubble-induced advective transport. Central to the boiling process is the development of bubbles. Connecting boiling physics with bubble dynamics is an important, yet daunting challenge because of the intrinsically complex and high dimensional of bubble dynamics. Here, we introduce a data-driven learning framework that correlates high-quality imaging on dynamic bubbles with associated boiling curves. The framework leverages cutting-edge deep learning models including convolutional neural networks and object detection algorithms to automatically extract both hierarchical and physics-based features. By training on these features, our model learns physical boiling laws that statistically describe the manner in which bubbles nucleate, coalesce, and depart under boiling conditions, enabling in situ boiling curve prediction with a mean error of 6%. Our framework offers an automated, learning-based, alternative to conventional boiling heat transfer metrology.

Topics & Concepts

BoilingBubbleNucleate boilingComputer scienceHeat transferConvolutional neural networkArtificial intelligenceTransfer of learningMechanicsThermodynamicsPhysicsHeat transfer coefficientHeat Transfer and Boiling StudiesNuclear Physics and ApplicationsMachine Learning in Materials Science
Deep learning predicts boiling heat transfer | Litcius