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Accelerating ab initio path integral molecular dynamics with multilevel sampling of potential surface
arXiv
Authors: Hua Y. Geng
Year
2014
Paper ID
45798
Status
Preprint
Abstract Read
~2 min
Abstract Words
197
Citations
N/A
Abstract
A multilevel approach to sample the potential energy surface in a path integral formalism is proposed. The purpose is to reduce the required number of ab initio evaluations of energy and forces in ab initio path integral molecular dynamics (AI-PIMD) simulation, without compromising the overall accuracy. To validate the method, the internal energy and free energy of an Einstein crystal are calculated and compared with the analytical solutions. As a preliminary application, we assess the performance of the method in a realistic model, the FCC phase of dense atomic hydrogen, in which the calculated result shows that the acceleration rate is about 3 to 4 fold for a two-level implementation, and can be increased to 10 times if extrapolation is used. With only 16 beads used for the ab initio potential sampling, this method gives a well converged internal energy. The residual error in pressure is just about 3 GPa, whereas it is about 20 GPa for a plain AI-PIMD calculation with the same number of beads. The vibrational free energy of the FCC phase of dense hydrogen at 300 K is also calculated with an AI-PIMD thermodynamic integration method, which gives a result of about 0.51 eV/proton at a density of rs=0.912.
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- This paper contributes to the Quantum Simulation research area in the Quantum Articles archive.
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- A multilevel approach to sample the potential energy surface in a path integral formalism is proposed.
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