Issue 40, 2024

Ultrafast dynamics in spatially confined photoisomerization: accelerated simulations through machine learning models

Abstract

This study sheds light on the exploration of photoresponsive host–guest systems, highlighting the intricate interplay between confined spaces and photosensitive guest molecules. Conducting nonadiabatic molecular dynamics (NAMD) simulations based on electronic structure calculations for such large systems remains a formidable challenge. By leveraging machine learning (ML) as an accelerator for NAMD simulations, we analytically constructed excited-state potential energy surfaces along relevant collective variables to investigate photoisomerization processes efficiently. Combining the quantum mechanics/molecular mechanics (QM/MM) methodology with ML-based NAMD simulations, we elucidated the reaction pathways and identified the key degrees of freedom as reaction coordinates leading to conical intersections. A machine learning-based nonadiabatic dynamics model has been developed to compare the excited-state dynamics of the guest molecule, benzopyran, in both the gas phase and its behavior within the confined space of cucurbit[5]uril. This comparative analysis was designed to determine the influence of the environment on the photoisomerization rate of the guest molecule. The results underscore the effectiveness of ML models in simulating trajectory evolution in a cost-effective manner. This research offers a practical approach to accelerate NAMD simulations in large-scale systems of photochemical reactions, with potential applications in other host–guest complex systems.

Graphical abstract: Ultrafast dynamics in spatially confined photoisomerization: accelerated simulations through machine learning models

Supplementary files

Article information

Article type
Paper
Submitted
11 Apr 2024
Accepted
20 Sep 2024
First published
24 Sep 2024

Phys. Chem. Chem. Phys., 2024,26, 25994-26003

Ultrafast dynamics in spatially confined photoisomerization: accelerated simulations through machine learning models

W. Xu, H. Xu, M. Zhu and J. Wen, Phys. Chem. Chem. Phys., 2024, 26, 25994 DOI: 10.1039/D4CP01497A

To request permission to reproduce material from this article, please go to the Copyright Clearance Center request page.

If you are an author contributing to an RSC publication, you do not need to request permission provided correct acknowledgement is given.

If you are the author of this article, you do not need to request permission to reproduce figures and diagrams provided correct acknowledgement is given. If you want to reproduce the whole article in a third-party publication (excluding your thesis/dissertation for which permission is not required) please go to the Copyright Clearance Center request page.

Read more about how to correctly acknowledge RSC content.

Social activity

Spotlight

Advertisements