Claudio Lehmann, Kevin Eckey, Maria Viehoff, Christoph Greve and Thorsten Röder*,
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引用次数: 0
Abstract
The goal of sustainable and efficient chemical production has led to an increased focus on continuous processes, especially in the production of fine chemicals or active pharmaceutical ingredients. However, developing and optimizing continuous processes can be challenging. Autonomous online optimization can help facilitate this process. This article presents a fully automated flow chemistry platform for optimizing flash chemistry (reaction times less than 1 s), using online mass spectrometry and global optimization algorithms, such as Bayesian optimization and SNOBFIT, for autonomous online optimization of chemical reactions. The algorithms were tuned and statistically evaluated using simulated optimization runs. Subsequently, they were applied in a practical case study, using a mixing-sensitive example of flash chemistry as a model system to investigate online reaction optimization. Automated response factor fitting was used to obtain quantitative data directly during reaction monitoring. This approach allowed the extraction of meaningful data without the need for postprocessing. The use of an initial design of experiments (DoE) approach was advantageous as it provides a well-discovered experimental space and often leads to a minimal number of subsequent experiments for optimization. Although random starting points may require fewer total experiments, the DoE approach offers greater reliability in achieving optimal results. Comparative analysis between Bayesian optimization and SNOBFIT indicates that Bayesian optimization outperforms SNOBFIT, achieving better results with fewer experimental iterations. Thus, Bayesian optimization has proven to be a powerful tool for autonomous optimization of chemical processes.
期刊介绍:
The journal Organic Process Research & Development serves as a communication tool between industrial chemists and chemists working in universities and research institutes. As such, it reports original work from the broad field of industrial process chemistry but also presents academic results that are relevant, or potentially relevant, to industrial applications. Process chemistry is the science that enables the safe, environmentally benign and ultimately economical manufacturing of organic compounds that are required in larger amounts to help address the needs of society. Consequently, the Journal encompasses every aspect of organic chemistry, including all aspects of catalysis, synthetic methodology development and synthetic strategy exploration, but also includes aspects from analytical and solid-state chemistry and chemical engineering, such as work-up tools,process safety, or flow-chemistry. The goal of development and optimization of chemical reactions and processes is their transfer to a larger scale; original work describing such studies and the actual implementation on scale is highly relevant to the journal. However, studies on new developments from either industry, research institutes or academia that have not yet been demonstrated on scale, but where an industrial utility can be expected and where the study has addressed important prerequisites for a scale-up and has given confidence into the reliability and practicality of the chemistry, also serve the mission of OPR&D as a communication tool between the different contributors to the field.