2022 Annual Meeting
(673g) An Adaptive Sampling Surrogate Model for Mixing Time Prediction and Mixing Characterization
Authors
Saeed Jafari Kang - Presenter, University of Nevada, Reno
Iman Mirzaee, Amgen
Pablo A. Rolandi, Amgen Inc.
Fabrice Schlegel, Amgen Inc
Joao Alberto De Faria, Amgen
Maryam Medghalchi, Amgen
Characterization of process tanks to determine effective mixing and homogenous conditions is a time consuming and cost intensive effort. Therefore, we have developed a comprehensive in-silico model to predict mixing time based on tank specifications, agitation rate and mixture physical properties. Our model is developed based a Computational Fluid Dynamics (CFD) model which is validated in mixing analysis of biopharma mixing vessels. The CFD model is integrated into a four-variables surrogate model in which an adaptive sampling method is applied. Our surrogate model is capable of predicting mixing time and mixing characterization with less than 25% error with only 60 model training samples. The developed surrogate model is available in as a web interface for use by domain experts.