posted on 2016-09-06, 00:00authored byLetif Mones, Noam Bernstein, Gábor Csányi
Practical free energy reconstruction
algorithms involve three separate
tasks: biasing, measuring some observable, and finally reconstructing
the free energy surface from those measurements. In more than one
dimension, adaptive schemes make it possible to explore only relatively
low lying regions of the landscape by progressively building up the
bias toward the negative of the free energy surface so that free energy
barriers are eliminated. Most schemes use the final bias as their
best estimate of the free energy surface. We show that large gains
in computational efficiency, as measured by the reduction of time
to solution, can be obtained by separating the bias used for dynamics
from the final free energy reconstruction itself. We find that biasing
with metadynamics, measuring a free energy gradient estimator, and
reconstructing using Gaussian process regression can give an order
of magnitude reduction in computational cost.