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Revisiting the Paradigm of Reaction Optimization in Flow with a Priori Computational Reaction Intelligence

Pauline Bianchi, Jean‐Christophe M. Monbaliu

2023Angewandte Chemie International Edition12 citationsDOIOpen Access PDF

Abstract

The use of micro/meso-fluidic reactors has resulted in both new scenarios for chemistry and new requirements for chemists. Through flow chemistry, large-scale reactions can be performed in drastically reduced reactor sizes and reaction times. This obvious advantage comes with the concomitant challenge of re-designing long-established batch processes to fit these new conditions. The reliance on experimental trial-and-error to perform this translation frequently makes flow chemistry unaffordable, thwarting initial aspirations to revolutionize chemistry. By combining computational chemistry and machine learning, we have developed a model that provides predictive power tailored specifically to flow reactions. We show its applications to translate batch to flow, to provide mechanistic insight, to contribute reagent descriptors, and to synthesize a library of novel compounds in excellent yields after executing a single set of conditions.

Topics & Concepts

A priori and a posterioriComputer scienceFlow (mathematics)MathematicsEpistemologyPhilosophyGeometryProcess Optimization and IntegrationInnovative Microfluidic and Catalytic Techniques InnovationAdvanced Control Systems Optimization
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