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Permutation invariant potential energy surfaces for polyatomic reactions using atomistic neural networks
63
Citations
43
References
2016
Year
EngineeringComputational ChemistryChemistryEnergy MinimizationMolecular DesignMolecular ComputingPhysic Aware Machine LearningAtom-centered Mapping FunctionsMathematical ChemistryDissociation ContinuaBiophysicsPotential Energy SurfacesPhysicsAtomic PhysicsPhysical ChemistryQuantum ChemistryAtomistic Neural NetworksAb-initio MethodPolyatomic ReactionsNatural SciencesChemical Kinetics
The applicability and accuracy of the Behler-Parrinello atomistic neural network method for fitting reactive potential energy surfaces is critically examined in three systems, H + H2 → H2 + H, H + H2O → H2 + OH, and H + CH4 → H2 + CH3. A pragmatic Monte Carlo method is proposed to make efficient choice of the atom-centered mapping functions. The accuracy of the potential energy surfaces is not only tested by fitting errors but also validated by direct comparison in dynamically important regions and by quantum scattering calculations. Our results suggest this method is both accurate and efficient in representing multidimensional potential energy surfaces even when dissociation continua are involved.
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