Tolman Electronic Parameter Predictions from a Machine Learning Model Provide Insight into Phosphine Ligand Electronic Effects
收藏Figshare2023-12-28 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Tolman_Electronic_Parameter_Predictions_from_a_Machine_Learning_Model_Provide_Insight_into_Phosphine_Ligand_Electronic_Effects/24915213
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Phosphines are extremely important ligands in organometallic chemistry, and their donor or acceptor ability can be measured through the Tolman electron parameter (TEP). Here, we describe the development of a TEP machine learning model (called TEPid) that provides nearly instantaneous calculation of experimentally calibrated CO vibrational stretch frequencies for (R)3P–Ni0(CO)3 complexes. This machine learning model with an error of less than 1 cm–1 (compared to density functional theory (DFT) calculated values) was developed using >4,000 DFT calculated (R)3P–Ni0(CO)3 TEP values and 19 connectivity-based descriptors associated with SMILES strings. We also built a web-based interface to run the machine learning model where phosphine SMILES strings can be entered and TEP values returned. We applied this TEPid model to examine the donor and acceptor capabilities of phosphines in the large Kraken phosphine database. This showed that the Kraken database is skewed toward donor phosphines. In the same spirit of the Kraken database, we generated tens of thousands of new experimentally based phosphines that, when combined with Kraken phosphines, provide an electronically balanced ligand library.
创建时间:
2023-12-28



