2008 Annual Meeting
(402d) Milling of Roller Compacted API with Excipients: Model Identification and Verification
Authors
We present the experimentally characterized dynamic evolution of the particle size distributions for two lab scale quadro comills, namely Quadro U5 and Quadro 197. Three types of roller compacted granules of Acetaminophen, Ibuprofen and Tolmetin with MCC and SiO2 as excipients were used for the milling experiments. Both the mills were operated in batch mode, a requisite to generating the data for inverse problem. The operating parameters such as the impeller speed and the batch sizes were chosen to gather dynamic data. The data thus generated is subjected to the inverse problem approach to extract the models for both the breakage rates and daughter size distributions. These models are validated by comparing the forward simulation of the population balance equation with experimental measurements.
Furthermore, an attempt will be reported to unify the extracted milling models to account for the effects of various operating parameters using an artificial neural network approach. The overall aim of the present work is to develop a general framework integrating population balances with artificial neural networks with the aim of providing a flexible and practical approach for the development of hybrid models for milling model.
Reference
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3. Nere, N. K. McCann, R., Morris, K. and D. Ramkrishna. On the Modeling of Milling in Pharmaceutical Industry. AIChE Annual meeting, Philadelphia, PA , November 2008.