Publication | Closed Access
Novel mixture model for the representation of potential energy surfaces
25
Citations
25
References
2016
Year
Numerical AnalysisEngineeringMachine LearningVariational AnalysisComplex SystemsComputational ChemistryChemistryComputational MechanicsEnergy MinimizationData SciencePotential TheoryMixture AnalysisPhysic Aware Machine LearningNumerical SimulationMixture ModelMathematical ChemistryModeling And SimulationData Mining TechniqueNovel Mixture ModelPhysicsQuantum ChemistryMixture DistributionNatural SciencesMolecular PropertySurface ModelingMultiscale Modeling
We demonstrate that knowledge of chemical physics on a materials system can be automatically extracted from first-principles calculations using a data mining technique; this information can then be utilized to construct a simple empirical atomic potential model. By using unsupervised learning of the generative Gaussian mixture model, physically meaningful patterns of atomic local chemical environments can be detected automatically. Based on the obtained information regarding these atomic patterns, we propose a chemical-structure-dependent linear mixture model for estimating the atomic potential energy. Our experiments show that the proposed mixture model significantly improves the accuracy of the prediction of the potential energy surface for complex systems that possess a large diversity in their local structures.
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