(736f) Speeding up of Gas-Particle Flow Simulations Using Non-Iterative Time Advancement (NITA) Solver
AIChE Annual Meeting
2016
2016 AIChE Annual Meeting
Particle Technology Forum
Industrial Application of Computational and Numerical Approaches to Particle Flow II
Thursday, November 17, 2016 - 4:45pm to 5:03pm
Kinetic theory based Two-Fluid model (TFM) for gas-particle flow simulations is routinely used from initial conceptual designs to improving the efficiency of the particle handling equipment. There has always been a demand for simulations to be faster and scalable, especially with recent advances in high performance and cloud computing. In this study we demonstrate the considerable speed-up of gas-particle flow simulations using the NITA solver and scalability of TFM over a large number of compute cores. The National Energy Technology Laboratory (NETL) small-scale fluidized bed, bubbling fluidized bed and circulating fluidized bed challenge problems were used to test the speed-up of the simulations using NITA solver. It was observed that the NITA solver both qualitatively and quantitatively captured distinct gas-particle flow patterns as predicted by the classical iterative time advancement solver while speeding up the simulations by as much as a factor of six. The scalability of kinetic theory based TFM was tested using NETL circulating fluidized bed problem and the model achieved excellent scalability over a large number of compute cores.