2020 Virtual AIChE Annual Meeting
(334b) Characterizing and Modeling Pharmaceutical Twin Screw Feeder Mass Flow Rates Using Statistical Time Series Analysis
Authors
This work describes the novel characterization and modeling of the stochastic nature of a screw feederâs mass flow rate using statistical time series analysis and a deterministic flowsheet model. First, experimental data was used to estimate the parameters of a hybrid mechanistic-empirical screw feeder model, based on Bascone et al. 2020 [3]. Next, the stochastic residual of the mass flow was isolated by subtracting the flowsheet modelâs deterministic mass flow from the feeder-reported mass flow. Then, each experiment's stochastic residual was fit to an autoregressive moving average model (ARMA) [5], characterizing the mass flow variation. Finally, a predictive model mapping powder properties and operating conditions to ARMA model parameters was developed. This predictive model was integrated with our deterministic feeder model, yielding a novel mechanistic-empirical-stochastic flowsheet model that simulates realistic, high-variance mass flows and is suitable for the development of CMDP processes and controllers.
Research Interests: Dynamic Systems, Multivariate Analysis, Constrained Regression, Optimization, and Technical Software Development
[1] Y. Yu, âTheoretical modelling and experimental investigation of the performance of screw feeders,â PhD thesis, 1997.
[2] F. Boukouvala, V. Niotis, R. Ramachandran, F. J. Muzzio, and M. G. Ierapetritou, âAn integrated approach for dynamic flowsheet modeling and sensitivity analysis of a continuous tablet manufacturing process,â Computers & Chemical Engineering, vol. 42, pp. 30â47, 2012.
[3] D. Bascone, F. Galvanin, N. Shah, and S. Garcìa-Muñoz, âA hybrid mechanistic-empirical approach to the modelling of twin screw feeders for continuous tablet manufacturing,â Industrial & Engineering Chemistry Research, 2020.
[4] P. Toson and J. G. Khinast, âParticle-level residence time data in a twin-screw feeder,â Data in brief, vol. 27, p. 104672, 2019.
[5] G. E. P. Box, G. M. Jenkins, G. C. Reinsel, and G. M. Ljung, Time series analysis: Forecasting and control. John Wiley & Sons, 2015.