4,169 research outputs found
Revisiting random deposition with surface relaxation: approaches from growth rules to Edwards-Wilkinson equation
We present several approaches for deriving the coarse-grained continuous
Langevin equation (or Edwards-Wilkinson equation) from a random deposition with
surface relaxation (RDSR) model. First we introduce a novel procedure to divide
the first transition moment into the three fundamental processes involved:
deposition, diffusion and volume conservation. We show how the diffusion
process is related to antisymmetric contribution and the volume conservation
process is related to symmetric contribution, which renormalizes to zero in the
coarse-grained limit. In another approach, we find the coefficients of the
continuous Langevin equation, by regularizing the discrete Langevin equation.
Finally, in a third approach, we derive these coefficients from the set of test
functions supported by the stationary probability density function (SPDF) of
the discrete model. The applicability of the used approaches to other discrete
random deposition models with instantaneous relaxation to a neighboring site is
discussed.Comment: 12 pages, 4 figure
Optimizing Replica Exchange Moves For Molecular Dynamics
In this short note we sketch the statistical physics framework of the replica
exchange technique when applied to molecular dynamics simulations. In
particular, we draw attention to generalized move sets that allow a variety of
optimizations as well as new applications of the method.Comment: 4 pages, 3 figures; revised version (1 figure added), PRE in pres
Partition Function Zeros and Finite Size Scaling of Helix-Coil Transitions in a Polypeptide
We report on multicanonical simulations of the helix-coil transition of a
polypeptide. The nature of this transition was studied by calculating partition
function zeros and the finite-size scaling of various quantities. Estimates for
critical exponents are presented.Comment: RevTex, 4 eps-files; to appear in Phys. Rev. Le
Generalized-ensemble Monte carlo method for systems with rough energy landscape
We present a novel Monte Carlo algorithm which enhances equilibrization of
low-temperature simulations and allows sampling of configurations over a large
range of energies. The method is based on a non-Boltzmann probability weight
factor and is another version of the so-called generalized-ensemble techniques.
The effectiveness of the new approach is demonstrated for the system of a small
peptide, an example of the frustrated system with a rugged energy landscape.Comment: Latex; ps-files include
Global Optimization by Energy Landscape Paving
We introduce a novel heuristic global optimization method, energy landscape
paving (ELP), which combines core ideas from energy surface deformation and
tabu search. In appropriate limits, ELP reduces to existing techniques. The
approach is very general and flexible and is illustrated here on two protein
folding problems. For these examples, the technique gives faster convergence to
the global minimum than previous approaches.Comment: to appear in Phys. Rev. Lett. (2002
Stochastic model for the CheY-P molarity in the neighbourhood of E. coli flagella motors
E.coli serves as prototype for the study of peritrichous enteric bacteria
that perform runs and tumbles alternately. Bacteria run forward as a result of
the counterclockwise (CCW) rotation of their flagella bundle and perform
tumbles when at least one of their flagella rotates clockwise (CW), moving away
from the bundle. The flagella are hooked to molecular rotary motors of
nanometric diameter able to make transitions between CCW and CW rotations that
last up to one hundredth of a second. At the same time, flagella move or rotate
the bacteria's body microscopically during lapses that range between a tenth
and ten seconds. We assume that the transitions between CCW and CW rotations
occur solely by fluctuations of CheY-P molarity in the presence of two
threshold values, and that a veto rule selects the run or tumble motions. We
present Langevin eqs for the CheY-P molarity in the vicinity of each molecular
motor. This model allows to obtain the run- or tumble-time distribution as a
linear combination of decreasing exponentials that is a function of the steady
molarity of CheY-P in the neighbourhood of the molecular motor, which fits
experimental data. In turn, if the internal signaling system is unstimulated,
we show that the runtime distributions reach power-law behaviour, a
characteristic of self-organized systems, in some time range and, afterwards,
exponential cutoff. In addition, our model explains without any fitting
parameters the ultrasensitivity of the flagella motors as a function of the
steady state of CheY-P molarity. In addition, we show that the tumble bias for
peritrichous bacterium has a similar sigmoid-shape to the CW bias, although
shifted to lower concentrations when the flagella number increases. Thus, the
increment in the flagella number allows lower operational values for each motor
increasing amplification and robustness of the chemotatic pathway.Comment: 13 pages, 7 figure
Multi-Overlap Simulations for Transitions between Reference Configurations
We introduce a new procedure to construct weight factors, which flatten the
probability density of the overlap with respect to some pre-defined reference
configuration. This allows one to overcome free energy barriers in the overlap
variable. Subsequently, we generalize the approach to deal with the overlaps
with respect to two reference configurations so that transitions between them
are induced. We illustrate our approach by simulations of the brainpeptide
Met-enkephalin with the ECEPP/2 energy function using the global-energy-minimum
and the second lowest-energy states as reference configurations. The free
energy is obtained as functions of the dihedral and the root-mean-square
distances from these two configurations. The latter allows one to identify the
transition state and to estimate its associated free energy barrier.Comment: 12 pages, (RevTeX), 14 figures, Phys. Rev. E, submitte
Metropolis simulations of Met-Enkephalin with solvent-accessible area parameterizations
We investigate the solvent-accessible area method by means of Metropolis
simulations of the brain peptide Met-Enkephalin at 300. For the energy
function ECEPP/2 nine atomic solvation parameter (ASP) sets are studied. The
simulations are compared with one another, with simulations with a distance
dependent electrostatic permittivity , and with vacuum
simulations (). Parallel tempering and the biased Metropolis
techniques RM are employed and their performance is evaluated. The measured
observables include energy and dihedral probability densities (pds), integrated
autocorrelation times, and acceptance rates. Two of the ASP sets turn out to be
unsuitable for these simulations. For all other systems selected configurations
are minimized in search of the global energy minima, which are found for the
vacuum and the system, but for none of the ASP models. Other
observables show a remarkable dependence on the ASPs. In particular, we find
three ASP sets for which the autocorrelations at 300K are considerably
smaller than for vacuum simulations.Comment: 10 pages and 8 figure
- …