Literature DB >> 15836017

Ab initio potential-energy surfaces for complex, multichannel systems using modified novelty sampling and feedforward neural networks.

L M Raff1, M Malshe, M Hagan, D I Doughan, M G Rockley, R Komanduri.   

Abstract

A neural network/trajectory approach is presented for the development of accurate potential-energy hypersurfaces that can be utilized to conduct ab initio molecular dynamics (AIMD) and Monte Carlo studies of gas-phase chemical reactions, nanometric cutting, and nanotribology, and of a variety of mechanical properties of importance in potential microelectromechanical systems applications. The method is sufficiently robust that it can be applied to a wide range of polyatomic systems. The overall method integrates ab initio electronic structure calculations with importance sampling techniques that permit the critical regions of configuration space to be determined. The computed ab initio energies and gradients are then accurately interpolated using neural networks (NN) rather than arbitrary parametrized analytical functional forms, moving interpolation or least-squares methods. The sampling method involves a tight integration of molecular dynamics calculations with neural networks that employ early stopping and regularization procedures to improve network performance and test for convergence. The procedure can be initiated using an empirical potential surface or direct dynamics. The accuracy and interpolation power of the method has been tested for two cases, the global potential surface for vinyl bromide undergoing unimolecular decomposition via four different reaction channels and nanometric cutting of silicon. The results show that the sampling methods permit the important regions of configuration space to be easily and rapidly identified, that convergence of the NN fit to the ab initio electronic structure database can be easily monitored, and that the interpolation accuracy of the NN fits is excellent, even for systems involving five atoms or more. The method permits a substantial computational speed and accuracy advantage over existing methods, is robust, and relatively easy to implement.

Entities:  

Year:  2005        PMID: 15836017     DOI: 10.1063/1.1850458

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  4 in total

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Authors:  Julia Westermayr; Philipp Marquetand
Journal:  Chem Rev       Date:  2020-11-19       Impact factor: 60.622

2.  Theoretical studies on triplet-state driven dissociation of formaldehyde by quasi-classical molecular dynamics simulation on machine-learning potential energy surface.

Authors:  Shichen Lin; Daoling Peng; Weitao Yang; Feng Long Gu; Zhenggang Lan
Journal:  J Chem Phys       Date:  2021-12-07       Impact factor: 3.488

3.  A local mode picture for H atom reaction with vibrationally excited H2O: a full dimensional state-to-state quantum dynamics investigation.

Authors:  Shu Liu; Dong H Zhang
Journal:  Chem Sci       Date:  2015-09-29       Impact factor: 9.825

4.  ANI-1: an extensible neural network potential with DFT accuracy at force field computational cost.

Authors:  J S Smith; O Isayev; A E Roitberg
Journal:  Chem Sci       Date:  2017-02-08       Impact factor: 9.825

  4 in total

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