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High-throughput experimentation meets artificial intelligence: a new pathway to catalyst discovery

机译:高通量实验符合人工智能:催化剂发现的新途径

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摘要

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 methodologies as applied to experimental data for materials discovery.
机译:异构催化的高通量实验为在可重复条件下产生了大型数据集的有效解决方案。 来自这些数据集的知识提取主要是使用统计方法进行的,靶向催化剂制剂的优化。 具有高通量实验的先进机器学习方法的组合具有巨大的潜力,可以加速具有当前实验统计设计不存在的新型催化剂配方的预测发现。 该透视描述了选择性的实施例,从催化剂合成实验的统计设计范围内,遗传算法应用于催化剂优化,最后使用实验数据进行了用于发现新型催化剂的随机林机学习。 最后,这种观点还提供了适用于应用于材料发现的实验数据的先进机器学习方法的展望。

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