We present a new molecular dynamics algorithm for sampling the canonical distribution. In this approach the velocities of all the particles are rescaled by a properly chosen random factor. The algorithm is formally justified and it is shown that, in spite of its stochastic nature, a quantity can still be defined that remains constant during the evolution. In numerical applications this quantity can be used to measure the accuracy of the sampling. We illustrate the properties of this new method on Lennard-Jones and TIP4P water models in the solid and liquid phases. Its performance is excellent and largely independent on the thermostat parameter also with regard to the dynamic properties.
Enhancing sampling and analyzing simulations are central issues in molecular simulation. Recently, we introduced PLUMED, an open-source plug-in that provides some of the most popular molecular dynamics (MD) codes with implementations of a variety of different enhanced sampling algorithms and collective variables (CVs). The rapid changes in this field, in particular new directions in enhanced sampling and dimensionality reduction together with new hardwares, require a code that is more flexible and more efficient. We therefore present PLUMED 2 here -a complete rewrite of the code in an object-oriented programming language (C++). This new version introduces greater flexibility and greater modularity, which both extends its core capabilities and makes it far easier to add new methods and CVs. It also has a simpler interface with the MD engines and provides a single software library containing both tools and core facilities. Ultimately, the new code better serves the ever-growing community of users and contributors in coping with the new challenges arising in the field.
Here we present a program aimed at free-energy calculations in molecular systems. It consists of a series of routines that can be interfaced with the most popular classical molecular dynamics (MD) codes through a simple patching procedure. This leaves the possibility for the user to exploit many different MD engines depending on the system simulated and on the computational resources available. Free-energy calculations can be performed as a function of many collective variables, with a particular focus on biological problems, and using state-of-the-art methods such as metadynamics, umbrella sampling and Jarzynski-equation based steered MD. The present software, written in ANSI-C language, can be easily interfaced with both fortran and C/C++ codes.
With both catalytic and genetic functions,
ribonucleic acid (RNA)
is perhaps the most pluripotent chemical species in molecular biology,
and its functions are intimately linked to its structure and dynamics.
Computer simulations, and in particular atomistic molecular dynamics
(MD), allow structural dynamics of biomolecular systems to be investigated
with unprecedented temporal and spatial resolution. We here provide
a comprehensive overview of the fast-developing field of MD simulations
of RNA molecules. We begin with an in-depth, evaluatory coverage of
the most fundamental methodological challenges that set the basis
for the future development of the field, in particular, the current
developments and inherent physical limitations of the atomistic force
fields and the recent advances in a broad spectrum of enhanced sampling
methods. We also survey the closely related field of coarse-grained
modeling of RNA systems. After dealing with the methodological aspects,
we provide an exhaustive overview of the available RNA simulation
literature, ranging from studies of the smallest RNA oligonucleotides
to investigations of the entire ribosome. Our review encompasses tetranucleotides,
tetraloops, a number of small RNA motifs, A-helix RNA, kissing-loop
complexes, the TAR RNA element, the decoding center and other important
regions of the ribosome, as well as assorted others systems. Extended
sections are devoted to RNA–ion interactions, ribozymes, riboswitches,
and protein/RNA complexes. Our overview is written for as broad of
an audience as possible, aiming to provide a much-needed interdisciplinary
bridge between computation and experiment, together with a perspective
on the future of the field.
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