Publication | Closed Access
Metadynamics Simulations of the High-Pressure Phases of Silicon Employing a High-Dimensional Neural Network Potential
235
Citations
28
References
2008
Year
EngineeringMaterial SimulationComputational MechanicsSilicon On InsulatorHigh-pressure PhasesPhysic Aware Machine LearningNumerical SimulationNanoscale ModelingComplex SequenceMaterials ScienceMaterials EngineeringPhysicsMetadynamics SimulationsMicroelectronicsDiamond-like CarbonNatural SciencesStable Diamond StructureApplied PhysicsCondensed Matter PhysicsMaterial ModelingMultiscale Modeling
We study in a systematic way the complex sequence of the high-pressure phases of silicon obtained upon compression by combining an accurate high-dimensional neural network representation of the density-functional theory potential-energy surface with the metadynamics scheme. Starting from the thermodynamically stable diamond structure at ambient conditions we are able to identify all structural phase transitions up to the highest-pressure fcc phase at about 100 GPa. The results are in excellent agreement with experiment. The method developed promises to be of great value in the study of inorganic solids, including those having metallic phases.
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