Tailoring Phosphine Ligands for Improved C-H Activation: Insights from Δ-Machine Learning

10 April 2024, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Transition metal complexes have played crucial roles in various homogeneous catalytic processes due to their exceptional versatility. This adaptability stems not only from the central metal ions but also from the vast array of choices of the ligand spheres, which form an enormously large chemical space. For example, Rh complexes, with a well-designed ligand sphere, are known to be efficient in catalyzing the C-H activation process in alkanes. To investigate the structure-property relation of the Rh complex and identify the optimal ligand that minimizes the calculated reaction energy ΔE of an alkane C-H activation, we have applied a Δ-Machine Learning method trained on various features to study 1,743 pairs of reactants (Rh(PLP)(Cl)(CO)) and intermediates (Rh(PLP)(Cl)(CO)(H)(propyl)). Our findings demonstrate that the models exhibit robust predictive performance when trained on features derived from electron density (R2 = 0.816), and SOAPs (R2 = 0.819), a set of position-based descriptors. Leveraging the model trained on xTB-SOAPs that only depend on the xTB-equilibrium structures, we propose an efficient and accurate screening procedure to explore the extensive chemical space of bisphosphine ligands. By applying this screening procedure, we identify ten newly selected reactant-intermediate pairs with an average ΔE of 33.2 kJ mol-1, remarkably lower than the average ΔE of the original data set of 68.0 kJ mol-1. This underscores the efficacy of our screening procedure in pinpointing structures with significantly lower energy levels.

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Title
Tailoring Phosphine Ligands for Improved C-H Activation: Insights from Δ-Machine Learning SI
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Supporting Information for manuscript "Tailoring Phosphine Ligands for Improved C-H Activation: Insights from Δ-Machine Learning". This includes detailed information of the feature sets and the implementation of our machine learning models.
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