4.6 Article

Knowledge extraction in catalysis utilizing design of experiments and machine learning

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ELSEVIER SCI LTD
DOI: 10.1016/j.coche.2021.100781

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  1. South Carolina Smart State Center for Strategic Approaches to the Generation of Electricity (SAGE)

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This review highlights the utilization of design of experiments and machine learning in catalysis for optimizing reaction conditions, catalysts, and predicting new formulations. The advantages and disadvantages of these techniques are discussed, along with showcasing the ability to extract meaningful knowledge from small experimental data sets. The review concludes by presenting a potential method to combine the benefits of both machine learning and design of experiments to expedite catalyst discovery and optimization.
In this review, we highlight how design of experiments and machine learning can be utilized in catalysis to help optimize reaction conditions, catalysts, and predict new catalyst formulations. An overview of how the techniques work is presented, and the advantages and disadvantages of the techniques are discussed. We showcase the ability to extract meaningful knowledge utilizing small experimental data sets and the recent advancements in the use of machine learning in catalysis. We conclude the review by presenting a potential method to combine the benefits of both machine learning and design of experiments to help accelerate catalyst discovery and optimization.

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