Pd–Methyl Bond EnergyProperty Correlations, Noncorrelations, Machine Learning Models, and Application to Polymerization Catalysis
收藏Figshare2025-07-28 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Pd_Methyl_Bond_Energy_Property_Correlations_Noncorrelations_Machine_Learning_Models_and_Application_to_Polymerization_Catalysis/29483418
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Metal–carbon bonds are a key intermediate in a variety of homogeneous organometallic transformations and often determine the critical thermodynamics and kinetics of catalytic processes. Surprisingly, the influence of different ligands on metal–carbon bond strengths has been largely overlooked. Here we evaluated nearly 700 experimental Pd–methyl complexes by calculating their bond dissociation energies using density functional theory (DFT) and compared these bond strengths to several fundamental molecular properties, and this revealed several surprising correlations and noncorrelations. Most surprising was that several fundamental properties, such as the bond length, bond force constant, and bond electron density, have no correlation with bond strength, despite these correlations often holding for main-group compounds. We were indeed able to identify key ligand-dependent chemical features/descriptors that provided a highly accurate machine learning model and provided insight into the general factors that control the Pd–carbon bond strength, such as radical delocalization and nucleophilicity. Insights gained from the Pd–Me bond energy analysis were then applied to CO migratory insertion steps that are part of copolymerization reactions.
创建时间:
2025-07-28



