Empirical correlations for bubble diameter and velocity
are incapable
of predicting the local bubble behaviors fairly because the impact
of local hydrodynamics on bubbles in fluidized beds. Based on image
processing, a novel bubble identification method with an adaptive
threshold was proposed to distinguish and characterize bubbles in
fluidized beds. The information regarding bubble properties and local
hydrodynamics can thus be extracted using the big data from highly
resolved simulations. Accordingly, the deep neural network was trained
to accurately predict local bubble properties, where the inputs were
determined by performing correlation analysis and a random forest
algorithm. We found Reynolds number, voidage, and relative coordinates
are the dominant factors, and a four-variable choice was demonstrated
to output satisfactory performance for predicting local bubble diameter
and velocity. The model was preliminarily validated by coupling with
the EMMS drag into CFD codes, which showed that the accuracy of coarse-grid
simulations can be significantly improved