Abstract

The critical heat flux (CHF) is a crucial thermo-hydraulic parameter or phenomenon in boiling heat transfer in many industry applications. For a long narrow rectangular channel, a fundamental heat transfer unit in the nuclear industry, the CHF is hard to measure and predict owing to the large aspect ratio (>1000) in geometry. Current technologies can only predict the value of CHF. Still, they cannot predict where the CHF occurs (the positions occurring dry out in narrow rectangular channels) in the large aspect ratio narrow rectangular channel. In this study, we establish a nonlinear relationship between CHF values and their specific occurrence locations under various operating conditions (various inlet mass flow rate, inlet temperature, wall heat flux density) using deep feed-forward neural networks (DFNN) coupled with CHF empirical correlations. Compared with the traditional empirical correlation method and the neural networks (NN) method, the new proposed method can predict both the value of CHF and the specific location where the CHF occurs. By inducing the empirical correlations into the neural networks, the prediction error decreases from 10% to 5% compared to the traditional NN methods. This work aims to provide a predictable and controllable strategy for CHF in narrow rectangular channels.

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