Shrabani Dinda , Tanvi Bhola , Suyash Pant , Anand Chandrasekaran , Alex K. Chew , Mathew D. Halls , Madhavi Sastry
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引用次数: 0
Abstract
We present a generic machine learning (ML) workflow for rapid screening of 3d-transition metal pincer catalysts utilizing bis(imino)pyridine ligands for homogeneous polymerization reactions. In this study, we compiled a dataset comprising over 503 catalysts. We identified the best quantitative structure–activity relationship (QSAR) models among hundreds, including both categorical and continuous, to predict catalytic activity, combining molecular fingerprints and descriptors. Top-performing models achieve high accuracy with coefficient of determination (R2) of nearly 80% for test sets; further validated by 5-fold cross-validation. We devised a mechanism to filter the outliers, such as ligands with meta-substituted groups. Steric map and QM-based descriptors like NBO charge, spin, HOMO-LUMO gap, and Fukui indices are identified as important features. In silico catalysts were generated by enumeration at ortho positions with bulky ligands like CHPh2, CH(p-F-Ph)2; directly linked with buried volume. This work supports increased innovation and accelerated development of new pincer catalysts using ML-based predictive modeling.
期刊介绍:
The Journal of Catalysis publishes scholarly articles on both heterogeneous and homogeneous catalysis, covering a wide range of chemical transformations. These include various types of catalysis, such as those mediated by photons, plasmons, and electrons. The focus of the studies is to understand the relationship between catalytic function and the underlying chemical properties of surfaces and metal complexes.
The articles in the journal offer innovative concepts and explore the synthesis and kinetics of inorganic solids and homogeneous complexes. Furthermore, they discuss spectroscopic techniques for characterizing catalysts, investigate the interaction of probes and reacting species with catalysts, and employ theoretical methods.
The research presented in the journal should have direct relevance to the field of catalytic processes, addressing either fundamental aspects or applications of catalysis.