282 research outputs found
A Comparison Between Different Cycle Decompositions for Metropolis Dynamics
In the last decades the problem of metastability has been attacked on
rigorous grounds via many different approaches and techniques which are briefly reviewed in this paper.
It is then useful to understand connections between different
point of views. In view of this
we consider irreducible, aperiodic and
reversible Markov chains with exponentially
small transition probabilities in the framework of Metropolis dynamics.
We compare two different cycle decompositions and prove their equivalence
Competitive nucleation in metastable systems
Metastability is observed when a physical system is close to a first order
phase transition. In this paper the metastable behavior of a two state
reversible probabilistic cellular automaton with self-interaction is discussed.
Depending on the self-interaction, competing metastable states arise and a
behavior very similar to that of the three state Blume-Capel spin model is
found
Basic Ideas to Approach Metastability in Probabilistic Cellular Automata
Cellular Automata are discrete--time dynamical systems on a spatially
extended discrete space which provide paradigmatic examples of nonlinear
phenomena. Their stochastic generalizations, i.e., Probabilistic Cellular
Automata, are discrete time Markov chains on lattice with finite single--cell
states whose distinguishing feature is the \textit{parallel} character of the
updating rule. We review some of the results obtained about the metastable
behavior of Probabilistic Cellular Automata and we try to point out
difficulties and peculiarities with respect to standard Statistical Mechanics
Lattice models.Comment: arXiv admin note: text overlap with arXiv:1307.823
A comparison between different cycle decompositions for Metropolis dynamics
In the last decades the problem of metastability has been attacked on
rigorous grounds via many different approaches and techniques which are briefly
reviewed in this paper. It is then useful to understand connections between
different point of views. In view of this we consider irreducible, aperiodic
and reversible Markov chains with exponentially small transition probabilities
in the framework of Metropolis dynamics. We compare two different cycle
decompositions and prove their equivalence
Electrocardiography for Assessment of Hypertensive Heart Disease: A New Role for an Old Tool
Left ventricular (LV) hypertrophy (LVH), detected
either by electrocardiography (ECG) or echocardiography
(ECHO), has long been recognized as a powerful
predictor of serious cardiovascular (CV) sequelae.A
very large and highly consistent body of evidence
indicates that LVH is not only an adaptation to
increased hemodynamic load in hypertension, but is
also independently associated with an enhanced risk for
myocardial infarction, cardiac sudden death, congestive
heart failure, and stroke in the general population, as
well as in patients with systemic hypertension, coronary
heart disease, chronic kidney disease, and atrial fibrillation. Intriguingly, the cumulative incidence of
cardiovascular events increases progressively with
increasing LV mass (LVM), without evidence of any
threshold separating the postulated “compensatory”
from “pathological” LVH. In other words, patients
with LVM in the upper-normal range already have
increased risk for CV events
Competitive nucleation in reversible Probabilistic Cellular Automata
The problem of competitive nucleation in the framework of Probabilistic
Cellular Automata is studied from the dynamical point of view. The dependence
of the metastability scenario on the self--interaction is discussed. An
intermediate metastable phase, made of two flip--flopping chessboard
configurations, shows up depending on the ratio between the magnetic field and
the self--interaction. A behavior similar to the one of the stochastic
Blume--Capel model with Glauber dynamics is found
Phase transitions in random mixtures of elementary cellular automata
We investigate one-dimensional probabilistic cellular automata, called Diploid Elementary Cellular Automata (DECA), obtained as random mixtures of two different elementary cellular automata rules. All the cells are updated synchronously and the probability for one cell to be 0 or 1 at time t depends only on the value of the same cell and that of its neighbors at time t−1. These very simple models show a very rich behavior strongly depending on the choice of the two elementary cellular automata that are randomly mixed together and on the parameter which governs probabilistically the mixture. In particular, we study the existence of phase transition for the whole set of possible DECA obtained by mixing the null rule which associates 0 to any possible local configuration, with any of the other 255 elementary rules. We approach the problem analytically via a mean field approximation and via the use of a rigorous approach based on the application of the Dobrushin criterion. The main feature of our approach is the possibility to describe the behavior of the whole set of considered DECA without exploiting the local properties of the individual models. The results that we find are consistent with numerical studies already published in the scientific literature and also with some rigorous results proven for some specific models
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