2024
DOI: 10.1021/acs.jcim.3c01575
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Machine Learning Models for Predicting Zirconocene Properties and Barriers

Justin K. Kirkland,
Jugal Kumawat,
Maliheh Shaban Tameh
et al.

Abstract: Zr metallocenes have significant potential to be highly tunable polyethylene catalysts through modification of the aromatic ligand framework. Here we report the development of multiple machine learning models using a large library (>700 systems) of DFT-calculated zirconocene properties and barriers for ethylene polymerization. We show that very accurate machine learning models are possible for HOMO–LUMO gaps of precatalysts but the performance significantly depends on the machine learning algorithm and type of… Show more

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