Description
Machine learning (ML) has previously been applied to predict reaction barriers for a variety of different chemical reactions. This is seen as the end point for this type of study however, post-reaction barrier analysis/energy decomposition approaches can provide insight into chemical reactivity. One such approach that has previously been used to provide information on chemical reactivity, for cycloaddition reactions in particular, is distortion/interaction-activation strain analysis (DIAS). We demonstrate that ML can be coupled with cheap and rapid semi-empirical quantum mechanical methods (SQM) to predict distortion and interaction energies at a fraction of the computational cost associated with running density functional theory (DFT) calculations. This dataset includes all the structural data in the form of Gaussian16 (Revision A.03 and C.01) output files for the four datasets used in this work and, the literature dataset reactions.
| Date made available | 31 Jan 2025 |
|---|---|
| Publisher | University of Bath |
Research output
- 1 Article
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Distortion/interaction analysis via machine learning
Espley, S. G., Allsop, S. S., Buttar, D., Tomasi, S. & Grayson, M. N., 1 Dec 2024, In: Digital Discovery. 3, 12, p. 2479-2486 8 p.Research output: Contribution to journal › Article › peer-review
Open Access3 Link opens in a new tab Citations (SciVal)
Projects
- 1 Finished
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Machine Learning and Molecular Modelling: A Synergistic Approach to Rapid Reactivity Prediction
Grayson, M. (PI)
Engineering and Physical Sciences Research Council
1/07/22 → 30/06/24
Project: Research council
Datasets
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Dataset for "Machine learning reaction barriers in low data regimes: a horizontal and diagonal transfer learning approach"
Espley, S. (Creator), Farrar, E. (Creator), Grayson, M. (Supervisor), Tomasi, S. (Supervisor) & Buttar, D. (Supervisor), University of Bath, 31 May 2023
DOI: 10.15125/BATH-01229
Dataset
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