A Flat-bottom Elastic Network Model for Generating Improved Plausible Reaction Paths

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

Abstract

Rapid generation of a plausible reaction path connecting a given reactant and product in advance is crucial for the efficient computation of precise reaction paths or transition states. We propose a computationally efficient potential energy based on molecular structure to generate such paths. This potential energy has a flat bottom consisting of structures without atomic collisions while preserving non-reactive chemical bonds, bond angles, and partial planar structures. By combining this potential energy with the direct MaxFlux method, a recently developed reaction path/transition state search method, we can find the shortest plausible path passing within the bottom. Numerical results show that this combination yields lower-energy paths compared to the paths obtained by the well-known image-dependent pair potential. We also theoretically investigate the differences between these two potential energies. The proposed potential energy and path generation routine are implemented in our Python version of the direct MaxFlux method, available on GitHub.

Keywords

reaction path
transition state
elastic network model

Supplementary materials

Title
Description
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Title
Supporting information: A Flat-bottom Elastic Network Model for Generating Improved Plausible Reaction Paths
Description
Additional information about the individual results for 121 reactions in set ZBA121.
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Title
TS and Intermediate Structures of Bianthracene
Description
Molecular structures of the transition state and the intermediate state of 9,9’-bianthracene in .xyz file format.
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