Skip to main content
SHARE
Publication

Histogram-free multicanonical Monte Carlo sampling to calculate the density of states...

by Alfred Farris, Ying Wai Li, Markus Eisenbach
Publication Type
Journal
Journal Name
Computer Physics Communications
Publication Date
Page Numbers
297 to 304
Volume
235

We report a new multicanonical Monte Carlo algorithm to obtain the density of states for physical systems with continuous state variables in statistical mechanics. Our algorithm is able to obtain a closed-form expression for the density of states expressed in a chosen basis set, instead of a numerical array of finite resolution as in previous variants of this class of MC methods such as the multicanonical sampling and Wang–Landau sampling. This is enabled by storing the visited states directly and avoiding the explicit collection of a histogram. This practice also has the advantage of avoiding undesirable artificial errors caused by the discretization and binning of continuous state variables. Our results show that this scheme is capable of obtaining converged results with a much reduced number of Monte Carlo steps, leading to a significant speedup over existing algorithms.