作者
Katherine McCullough, Travis Williams, Kathleen Mingle, Pooyan Jamshidi, Jochen Lauterbach
发表日期
2020
期刊
Physical Chemistry Chemical Physics
卷号
22
期号
20
页码范围
11174-11196
出版商
Royal Society of Chemistry
简介
High throughput experimentation in heterogeneous catalysis provides an efficient solution to the generation of large datasets under reproducible conditions. Knowledge extraction from these datasets has mostly been performed using statistical methods, targeting the optimization of catalyst formulations. The combination of advanced machine learning methodologies with high-throughput experimentation has enormous potential to accelerate the predictive discovery of novel catalyst formulations that do not exist with current statistical design of experiments. This perspective describes selective examples ranging from statistical design of experiments for catalyst synthesis to genetic algorithms applied to catalyst optimization, and finally random forest machine learning using experimental data for the discovery of novel catalysts. Lastly, this perspective also provides an outlook on advanced machine learning …
引用总数
20202021202220232024225322821
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