The Operando Nature of Isobutene Adsorbed in Zeolite H-SSZ-13 Unraveled by Machine Learning Potentials Beyond DFT Accuracy.

Angew Chem Int Ed Engl

Center for Molecular Modeling, Ghent University, Technologiepark 46, 9052, Zwijnaarde, Belgium.

Published: January 2025

AI Article Synopsis

  • Understanding the nature of adsorbed olefins in zeolites is vital for grasping zeolite-catalyzed processes, which involves accurate potential energy surface (PES) assessment and considering entropic effects.
  • A new transfer learning approach is proposed to enhance molecular dynamics simulations aimed at achieving high accuracy in determining the PES and studying isobutene's adsorption in a specific zeolite (H-SSZ-13).
  • The results reveal that while the formation of tert-butyl carbenium ions in zeolites is energetically unfavorable and lacks entropic stabilization, they still exist as transient intermediates across a wide temperature range.

Article Abstract

Unraveling the nature of adsorbed olefins in zeolites is crucial to understand numerous zeolite-catalyzed processes. A well-grounded theoretical description critically depends on both an accurate determination of the potential energy surface (PES) and a reliable account of entropic effects at operating conditions. Herein, we propose a transfer learning approach to perform random phase approximation (RPA) quality enhanced sampling molecular dynamics simulations, thereby approaching chemical accuracy on both the determination and exploration of the PES. The proposed methodology is used to investigate isobutene adsorption in H-SSZ-13 as prototypical system to estimate the relative stability of physisorbed olefins, carbenium ions and surface alkoxide species (SAS) in Brønsted-acidic zeolites. We show that the tert-butyl carbenium ion formation is highly endothermic and no entropic stabilization is observed compared to the physisorbed complex within H-SSZ-13. Hence, its predicted concentration and lifetime are negligible, making a direct experimental observation unlikely. Yet, it remains a shallow minimum on the free energy surface over the whole considered temperature range (273-873 K), being therefore a short-lived reaction intermediate rather than a transition state species.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11701358PMC
http://dx.doi.org/10.1002/anie.202413637DOI Listing

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