Artificial Neural Network Modeling of Hydrodynamics of Liquid‐Solid Circulating Fluidized Beds

RR Palkar, V Shilapuram - Chemical Engineering & Technology, 2017 - Wiley Online Library
Chemical Engineering & Technology, 2017Wiley Online Library
Solids holdup and solids circulation rate are the two important hydrodynamic variables
affected by process conditions. These two variables have a significant influence on the
performance of a liquid‐solid circulating fluidized bed (LSCFB). An artificial neural network
(ANN) methodology was developed and simulated to predict the performance of the LSCFB
for the experimental dataset collected under various process conditions. Different statistical
parameters were applied to evaluate the prominent and unique characteristic features of the …
Abstract
Solids holdup and solids circulation rate are the two important hydrodynamic variables affected by process conditions. These two variables have a significant influence on the performance of a liquid‐solid circulating fluidized bed (LSCFB). An artificial neural network (ANN) methodology was developed and simulated to predict the performance of the LSCFB for the experimental dataset collected under various process conditions. Different statistical parameters were applied to evaluate the prominent and unique characteristic features of the ANN‐predicted parameters. The ANN model successfully predicted the experimental observations and captured the actual nonlinear behavior noticed during the experiments. Model validation confirmed that this data‐driven technique can be used to model such nonlinear systems.
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