2022 Annual Meeting
(493c) Prediction of Particle Dynamics Using Random Forcing Model in a Turbulent Particle-Laden Shear Flow
Authors
To capture the particle-phase statistics, simulations runs are performed in horizontal turbulent couette flow in the dilute limit by Fluctuating Force Fluctuating Torque Simulation (F3TS) methodology for heavy particles with St ~ 50 (fluid Integral time-scale is based on the half-channel width and wall-velocity). Under the condition of perfectly smooth β=-1.0 and elastic collisions e=1.0, where the effect of fluctuating velocity and the vorticity field of fluid is dominant on particle-dynamics, it is observed that the F3TS model predicts the particle mean translational velocity ( ) and mean rotational velocity () quiet well. Among the fluctuating quantities, a slight deviation from DNS results is observed for the statistics and . The effect of inelasticity (for e=0.9) is found to be only on the decrease in particle cross-stream fluctuating motion observed through and . The model prediction remains similar to that of the ideal collisions. On the other hand, it is observed that in presence of perfectly rough (β=+1.0) and elastic (e=1.0) collisions, the mean particle angular velocity and particle translational and angular velocity fluctuations increase through increase of roughness induced collisions. Further analysis reveals that the effect of fluctuating torque is necessary to predict span-wise and cross-stream particle rotational mean square velocity. It is worth mentioning that the particle phase velocity statistics clearly show that the wall-particle roughness factor is dominant over inter-particle roughness factor as wall-particle collision frequency is higher than inter-particle collision frequency. This is well captured by the model as well. In presence of roughness, the model found out to be performing better than the previous cases in predicting the mean and mean-square translational and angular velocity components.