Design and Optimization of Catalysts Based on Mechanistic Insights Derived from Quantum Chemical Reaction Modeling

Until recently, computational tools were mainly used to explain chemical reactions after experimental results were obtained. With the rapid development of software and hardware technologies to make computational modeling tools more reliable, they can now provide valuable insights and even become pre...

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Veröffentlicht in:Chemical reviews 2019-06, Vol.119 (11), p.6509-6560
Hauptverfasser: Ahn, Seihwan, Hong, Mannkyu, Sundararajan, Mahesh, Ess, Daniel H, Baik, Mu-Hyun
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Sprache:eng
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Zusammenfassung:Until recently, computational tools were mainly used to explain chemical reactions after experimental results were obtained. With the rapid development of software and hardware technologies to make computational modeling tools more reliable, they can now provide valuable insights and even become predictive. In this review, we highlighted several studies involving computational predictions of unexpected reactivities or providing mechanistic insights for organic and organometallic reactions that led to improved experimental results. Key to these successful applications is an integration between theory and experiment that allows for incorporation of empirical knowledge with precise computed values. Computer modeling of chemical reactions is already a standard tool that is being embraced by an ever increasing group of researchers, and it is clear that its utility in predictive reaction design will increase further in the near future.
ISSN:0009-2665
1520-6890
DOI:10.1021/acs.chemrev.9b00073