Optimized Nested Markov Chain Monte Carlo Sampling: Theory

ORAL

Abstract

Metropolis Monte Carlo sampling of a reference potential is used to build a Markov chain in the isothermal-isobaric ensemble. At the endpoints of the chain, the energy is reevaluated at a different level of approximation (the ``full'' energy) and a composite move encompassing all of the intervening steps is accepted on the basis of a modified Metropolis criterion. By manipulating the thermodynamic variables characterizing the reference system we maximize the average acceptance probability of composite moves, lengthening significantly the random walk made between consecutive evaluations of the full potential at a fixed acceptance probability. This provides maximally decorrelated samples of the full potential, thereby lowering the total number required to build ensemble averages of a given variance. The efficiency of the method is illustrated using model potentials appropriate to molecular fluids at high pressure. Implications for ab initio or density functional theory (DFT) treatment are discussed.

Authors

  • Joshua Coe

    • Theoretical Division, Los Alamos National Lab
  • Thomas Sewell

    • University of Missouri at Columbia
    • Department of Chemistry, University of Missouri-Columbia, Columbia, MO 65211-7600
    • University of Missouri - Columbia
    • University of Missouri
  • M. Sam Shaw

    • Theoretical Division, Los Alamos National Lab