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Quantum-mechanical transition-state model combined with machine learning provides catalyst design features for selective Cr olefin oligomerization

机译:量子机械过渡 - 状态模型与机器学习相结合,提供了用于选择性Cr烯烃低聚的催化剂设计特征

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The use of data science tools to provide the emergence of non-trivial chemical features for catalyst design is an important goal in catalysis science. Additionally, there is currently no general strategy for computational homogeneous, molecular catalyst design. Here, we report the unique combination of an experimentally verified DFT-transition-state model with a random forest machine learning model in a campaign to design new molecular Cr phosphine imine (Cr(P,N)) catalysts for selective ethylene oligomerization, specifically to increase 1-octene selectivity. This involved the calculation of 1-hexene?:?1-octene transition-state selectivity for 105 (P,N) ligands and the harvesting of 14 descriptors, which were then used to build a random forest regression model. This model showed the emergence of several key design features, such as Cr–N distance, Cr–α distance, and Cr distance out of pocket, which were then used to rapidly design a new generation of Cr(P,N) catalyst ligands that are predicted to give >95% selectivity for 1-octene.
机译:使用数据科学工具提供催化剂设计非琐碎化学特征的出现是催化科学中的重要目标。此外,目前没有用于计算均匀的分子催化剂设计的一般策略。在这里,我们报告了一种实验验证的DFT-转换状态模型与随机林机器学习模型的独特组合,在活动中,以设计新的分子Cr磷酸亚胺(Cr(P,N))催化剂,用于选择性乙烯低聚,具体介绍增加1-辛烯选择性。这涉及1-己烯的计算:1-辛烯过渡 - 状态选择性105(p,N)配体和14个描述符的收获,然后用于构建随机森林回归模型。该模型显示出出现几个关键设计特征,例如Cr-N距离,Cr-α距离和袋的Cr距离,然后用于迅速设计新一代Cr(P,N)催化剂配体预计将为1-Octene提供> 95%的选择性。

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