4.8 Article

Using Artificial Intelligence To Forecast Water Oxidation Catalysts

期刊

ACS CATALYSIS
卷 9, 期 9, 页码 8383-8387

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acscatal.9b01985

关键词

machine learning; oxygen evolution; artificial intelligence; neural network; combinatorial chemistry

资金

  1. Excellence Initiative by the German federal and state governments [EXC 2186]

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Artificial intelligence and various types of machine learning are of increasing interest not only in the natural sciences but also in a wide range of applied and engineering sciences. In this study, we rethink the view on combinatorial heterogeneous catalysis and combine machine learning methods with combinatorial approaches in electrocatalysis. Several machine learning methods were used to forecast water oxidation catalysts on the basis of literature published data sets and data from our own work. The machine learning models exhibit a decent prediction precision based on the data sets available and confirm that even simple models are suitable for good forecasts.

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