Machine Learning Approach for Predicting Minimum Film Boiling Temperature Considering the Surface Roughness Effect
Jiguo Tang,
Shengzhi Yu,
Zili Gong
et al.
Abstract:The
minimum film boiling (MFB) temperature, a crucial industrial
design parameter for nuclear reactors, cryogenic milling, and grinding,
refers to the lowest sustainable temperature at which stable film
boiling occurs. Despite the development of many thermodynamic and
hydrodynamic models, a universal model for predicting the MFB temperature
is still required. In recent years, machine learning (ML) methods
have been shown to outperform previous correlations in predicting
the MFB temperature. However, these ML m… Show more
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