Enabling High Throughput Kinetic Experimentation by Using Flow as a Differential Kinetic Technique**

Author:

Lennon Gavin1ORCID,Dingwall Paul1ORCID

Affiliation:

1. School of Chemistry and Chemical Engineering Queen's University Belfast David Keir Building, Stranmillis Road Belfast BT9 5AG UK

Abstract

AbstractKinetic data is most commonly collected through the generation of time‐series data under either batch or flow conditions. Existing methods to generate kinetic data in flow collect integral data (concentration over time) only. Here, we report a method for the rapid and direct collection of differential kinetic data (direct measurement of rate) in flow by performing a series of instantaneous rate measurements on sequential small‐scale reactions. This technique decouples the time required to generate a full kinetic profile from the time required for a reaction to reach completion, enabling high throughput kinetic experimentation. In addition, comparison of kinetic profiles constructed at different residence times allows the robustness, or stability, of homogeneously catalysed reactions to be interrogated. This approach makes use of a segmented flow platform which was shown to quantitatively reproduce batch kinetic data. The proline mediated aldol reaction was chosen as a model reaction to perform a high throughput kinetic screen of 216 kinetic profiles in 90 hours, one every 25 minutes, which would have taken an estimated continuous 3500 hours in batch, an almost 40‐fold increase in experimental throughput matched by a corresponding reduction in material consumption.

Funder

Engineering and Physical Sciences Research Council

Royal Society

Publisher

Wiley

Subject

General Chemistry,Catalysis

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