Molecular dynamics (MD) simulations are useful in obtaining thermodynamic and
kinetic properties of bio-molecules but are limited by the timescale barrier, i.e., we
may be unable to efficiently obtain properties because we need to run microseconds
or longer simulations using femtoseconds time steps. While there are several existing
methods to overcome this timescale barrier and efficiently sample thermodynamic
and/or kinetic properties, problems remain in regard to being able to sample un-
known systems, deal with high-dimensional space of collective variables, and focus
the computational effort on slow timescales. Hence, a new sampling method, called
the “Concurrent Adaptive Sampling (CAS) algorithm,” has been developed to tackle
these three issues and efficiently obtain conformations and pathways. The method
is not constrained to use only one or two collective variables, unlike most reaction
coordinate-dependent methods. Instead, it can use a large number of collective vari-
ables and uses macrostates (a partition of the collective variable space) to enhance
the sampling. The exploration is done by running a large number of short simula-
tions, and a clustering technique is used to accelerate the sampling. In this paper,
we introduce the new methodology and show results from two-dimensional models
and bio-molecules, such as penta-alanine and triazine polymer
Revised: September 28, 2017 |
Published: August 21, 2017
Citation
Ahn S., J.W. Grate, and E.F. Darve. 2017.Efficiently Sampling Conformations and Pathways Using the Concurrent Adaptive Sampling (CAS) Algorithm.Journal of Chemical Physics 147, no. 7:Article No. 074115.PNNL-SA-125912.doi:10.1063/1.4999097