Generative Model for Constructing Reaction Path from Initial to Final States (2401.10721v2)
Abstract: Mapping the chemical reaction pathways and their corresponding activation barriers is a significant challenge in molecular simulation. Given the inherent complexities of 3D atomic geometries, even generating an initial guess of these paths can be difficult for humans. This paper presents an innovative approach that utilizes neural networks to generate initial guesses for reaction pathways based on the initial state and learning from a database of low-energy transition paths. The proposed method is initiated by inputting the coordinates of the initial state, followed by progressive alterations to its structure. This iterative process culminates in the generation of the guess reaction path and the coordinates of the final state. The method does not require one-the-fly computation of the actual potential energy surface, and is therefore fast-acting. The application of this geometry-based method extends to complex reaction pathways illustrated by organic reactions. Training was executed on the Transition1x dataset of organic reaction pathways. The results revealed the generation of reactions that bore substantial similarities with the test set of chemical reaction paths. The method's flexibility allows for reactions to be generated either to conform to predetermined conditions or in a randomized manner.
- Klein, L.; Krämer, A.; Noé, F. Equivariant flow matching. 2023,
- Zheng, S. et al. Towards Predicting Equilibrium Distributions for Molecular Systems with Deep Learning. 2023,
- Triplett, L.; Lu, J. Diffusion Methods for Generating Transition Paths. 2023,
- Sickafus, K. E.; Kotomin, E. A.; Uberuaga, B. P. Radiation Effects in Solids; Springer Science & Business Media, 2007.
- Tang, H.; Li, B.; Song, Y.; Liu, M.; Xu, H.; Wang, G.; Chung, H.; Li, J. Reinforcement learning-guided long-timescale simulation of hydrogen transport in metals. 2023,
- Lipman, Y.; Chen, R. T. Q.; Ben-Hamu, H.; Nickel, M.; Le, M. Flow Matching for Generative Modeling. 2022,
- Geiger, M.; Smidt, T. e3nn: Euclidean Neural Networks. 2022,
- Hendrycks, D.; Gimpel, K. Gaussian Error Linear Units (GELUs). 2016,
- He, K.; Zhang, X.; Ren, S.; Sun, J. Deep residual learning for image recognition. Proceedings of the IEEE conference on computer vision and pattern recognition. 2016; pp 770–778.
- Zaheer, M.; Guruganesh, G.; Dubey, A.; Ainslie, J.; Alberti, C.; Ontanon, S.; Pham, P.; Ravula, A.; Wang, Q.; Yang, L.; Ahmed, A. Big Bird: Transformers for Longer Sequences. 2020,
- Vaswani, A.; Shazeer, N.; Parmar, N.; Uszkoreit, J.; Jones, L.; Gomez, A. N.; Kaiser, Ł.; Polosukhin, I. Attention is all you need. Adv. Neural Inf. Process. Syst. 2017, 30.
- Zhao, Q. YARP reaction database. figshare. Dataset, 2021; https://doi.org/10.6084/m9.figshare.14766624.v7.
- Ho, J.; Salimans, T. Classifier-Free Diffusion Guidance. 2022,