Optimized broad-histogram simulations for strong first-order phase transitions: droplet transitions in the large-Q Potts model

  • ,
  • Emanuel Gull ,
  • Simon Trebst ,
  • Matthias Troyer ,
  • David A Huse

Journal of Statistical Mechanics: Theory and Experiment | , Vol 2010: pp. P01020

The numerical simulation of strongly first-order phase transitions has remained a notoriously difficult problem even for classical systems due to the exponentially suppressed (thermal) equilibration in the vicinity of such a transition. In the absence of efficient update techniques, a common approach to improve equilibration in Monte Carlo simulations is to broaden the sampled statistical ensemble beyond the bimodal distribution of the canonical ensemble. Here we show how a recently developed feedback algorithm can systematically optimize such broad-histogram ensembles and significantly speed up equilibration in comparison with other extended ensemble techniques such as flat-histogram, multicanonical or Wang-Landau sampling. As a prototypical example of a strong first-order transition we simulate the two-dimensional Potts model with up to Q = 250 different states on large systems. The optimized histogram develops a distinct multipeak structure, thereby resolving entropic barriers and their associated phase transitions in the phase coexistence region such as droplet nucleation and annihilation or droplet-strip transitions for systems with periodic boundary conditions. We characterize the effi- ciency of the optimized histogram sampling by measuring round-trip times τ (N, Q) across the phase transition for samples of size N spins. While we find power-law scaling of τ vs. N for small Q . 50 and N . 402 , we observe a crossover to exponential scaling for larger Q. These results demonstrate that despite the ensemble optimization broad-histogram simulations cannot fully eliminate the supercritical slowing down at strongly first-order transitions.