2024 AIChE Annual Meeting
(492b) Machine Learning-Driven, High-Throughput Solvent Screening Technique for Biobased 2,3-Butanediol Extraction
Authors
In this talk, we explore the implementation of an ML-driven, HT workflow as a solvent screening method to optimize the separation of 2,3-BDO in bioprocesses. A dataset of 3459 entries for BDO’s solubility in organic solvents was curated based on publicly accessible databases. It allowed for the development of a Histogram Gradient Boosting model to accurately predict 2,3-BDO’s solubility in organic solvents. An initial list of 55 solvent candidates was generated based on the screening of the ML model. A narrowed set of 24 solvent candidates was selected for experimental investigation. The influence of experimental parameters such as solvent feed ratio, equilibrium time, and temperature, on the solvent distribution coefficient and extraction efficiency of 2,3-BDO were evaluated. Furthermore, the development of an automated liquid handling platform for HT solvent screening is established. To this end, the present study demonstrates the use of an ML-driven, automated HT workflow as a rapid solvent screening method for the optimized solvent extraction of 2,3-BDO. Such findings lay the foundation for the use of AI-driven technologies for quicker and more accurate screening of solvents for a wide range of bio-separation applications.
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