posted on 2021-07-23, 13:55authored byHamza Y. Ismail, Mehakpreet SinghMehakpreet Singh, Saeed Shirazian, Ahmad B. Albadarin, Gavin M. Walker
A hybrid model was developed for simulation of continuous wet granulation of pharmaceu tical formulations via twin-screw granulator. The model was based on population balance
model (PBM) for prediction of particle size distribution, while artificial neural network (ANN)
was used for estimation of mean residence time which is required for numerical solution of
PBM. A new numerical scheme based on finite volume approach was developed for solution
of one dimensional PBM to predict granule size distribution obtained in a twin-screw gran ulator. The model takes into account liquid and feed flow rates, and screw speed, while the
granule size distribution is the model’s main output. Aggregation and breakage were consid ered as the main mechanisms in the process, and the model was developed and solved for
different zones of extruder, i.e. conveying and kneading ones. The model’s predictions were
validated through comparing with experimental data collected using a 12mm twin-screw
extruder for granulation of microcrystalline cellulose. The results indicated that the model
is facile, robust and valid, which can predict the performance of twin-screw granulator for
pharmaceutical formulations.
History
Publication
Chemical Engineering Research and Design;163, pp. 320-326