2024 AIChE Annual Meeting
(564e) Bayesian Optimization of a Continuous Polymer Precipitation Process
Authors
The development of an effective continuous polymer precipitation process requires careful thought of process parameters. For antisolvent precipitation processes, these include the ratio of antisolvent to polymer solution, the flow rate of polymer solution, and the retention rating of the phase-separation component. This study continues the 2023 AIChE presentation (“An Efficient, Cost-Effective, Continuous Polymer Purification Method”), focusing on a self-optimization machine learning method, i.e., Bayesian optimization (BO), that expedites the optimization of experimental parameters’ design space. In this study, BO is used to predict the combination of process parameters that achieve desired outcome measures, including impurity reduction, reduction in polydispersity index (PDI), etc. BO designs a series of experiments to gradually locate the desired optimum. Results obtained demonstrate that the sequence of generated experiments allows pinpointing operating conditions for target outcome measures. The implementation of BO led to reduced experimental effort and increased efficiency in process development. The transition to continuous polymer precipitation combined with the Bayesian optimization technique advances manufacturing process development to the next level.