2021
DOI: 10.1002/cjoc.202100303
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Neural Network Representations for Studying Gas‐Surface Reaction Dynamics: Beyond the Born‐Oppenheimer Static Surface Approximation

Abstract: In the past a few years, there has been significant progress in theoretical characterizations of gas‐surface reaction dynamics at the atomic level. One of the major breakthroughs is the machine learning representations of the potential energy surfaces and related properties for molecules on metal surfaces from first‐principles, particularly neural networks based methods. In this review, we focus on recent advances of the development and applications of high‐dimensional symmetry‐preserving neural network repres… Show more

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Cited by 12 publications
(12 citation statements)
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References 195 publications
(122 reference statements)
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“…Because of the huge number of electrons in the metal, the electronic structure of gas–surface systems is typically characterized by density functional theory (DFT). On the basis of molecule–surface PESs calculated on the fly , or fitted to DFT points, , the nuclear motion for both the molecular and surface DOFs can be further determined. This adiabatic treatment allows the intramolecular vibrational energy redistribution (IVR) and/or energy exchange between molecules and surface phonons.…”
Section: H2 Scattering From Metal Surfacesmentioning
confidence: 99%
“…Because of the huge number of electrons in the metal, the electronic structure of gas–surface systems is typically characterized by density functional theory (DFT). On the basis of molecule–surface PESs calculated on the fly , or fitted to DFT points, , the nuclear motion for both the molecular and surface DOFs can be further determined. This adiabatic treatment allows the intramolecular vibrational energy redistribution (IVR) and/or energy exchange between molecules and surface phonons.…”
Section: H2 Scattering From Metal Surfacesmentioning
confidence: 99%
“…40 The key advantage of this EANN method is that the density-like descriptors given in eq 2 scale linearly with respect to the number of neighboring atoms. 42 The final CO 2 + W(110) PES was fitted to 9418 points with both energies and forces. These data points were divided into training and test sets with the ratio of 90:10.…”
Section: Neural Network Potential Energy Surfacementioning
confidence: 99%
“…The EANN PES is invariant with respect to translation, rotation, and permutation . The key advantage of this EANN method is that the density-like descriptors given in eq scale linearly with respect to the number of neighboring atoms …”
Section: Computational Detailsmentioning
confidence: 99%
“…Recent advances in atomistic neural network (AtNN)-based approaches have shown great promise in constructing highdimensional PESs with surface DOFs for studying the gassurface dynamics from first principles at affordable costs. 43,44 Such PESs, once well-trained, will allow efficient calculation of a larger number of trajectories at the same level of accuracy as AIMD with merely about ten to hundred thousandth of cost. There have been successful applications of AtNN to molecular adsorption and desorption on metal surfaces.…”
Section: Introductionsmentioning
confidence: 99%