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Machine Learning for Experimental Reactivity of a Set of Metal Clusters toward C-H Activation.

Xi-Guan ZhaoQi YangYing XuQing-Yu LiuZi-Yu LiXiao-Xiao LiuYan-Xia ZhaoSheng-Gui He
Published in: Journal of the American Chemical Society (2024)
Understanding the mechanisms of C-H activation of alkanes is a very important research topic. The reactions of metal clusters with alkanes have been extensively studied to reveal the electronic features governing C-H activation, while the experimental cluster reactivity was qualitatively interpreted case by case in the literature. Herein, we prepared and mass-selected over 100 rhodium-based clusters (Rh x V y O z - and Rh x Co y O z - ) to react with light alkanes, enabling the determination of reaction rate constants spanning six orders of magnitude. A satisfactory model being able to quantitatively describe the rate data in terms of multiple cluster electronic features (average electron occupancy of valence s orbitals, the minimum natural charge on the metal atom, cluster polarizability, and energy gap involved in the agostic interaction) has been constructed through a machine learning approach. This study demonstrates that the general mechanisms governing the very important process of C-H activation by diverse metal centers can be discovered by interpreting experimental data with artificial intelligence.
Keyphrases
  • machine learning
  • artificial intelligence
  • big data
  • deep learning
  • systematic review
  • single cell
  • multidrug resistant
  • wastewater treatment
  • mass spectrometry
  • genome wide
  • high resolution
  • liquid chromatography