We present three algorithms for calculating rate constants and sampling transition paths for rare events in simulations with stochastic dynamics. The methods do not require a priori knowledge of the phase-space density and are suitable for equilibrium or nonequilibrium systems in stationary state. All the methods use a series of interfaces in phase space, between the initial and final states, to generate transition paths as chains of connected partial paths, in a ratchetlike manner. No assumptions are made about the distribution of paths at the interfaces. The three methods differ in the way that the transition path ensemble is generated. We apply the algorithms to kinetic Monte Carlo simulations of a genetic switch and to Langevin dynamics...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
We propose a novel stochastic method to generate Brownian paths conditioned to start at an initial p...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
We develop two novel transition path sampling (TPS) algorithms for harvesting ensembles of rare even...
Using tools of statistical mechanics, it is routine to average over the distribution of microscopic ...
Transition path sampling (TPS) was developed for studying activated processes in complex systems wit...
We present a new method, Non-Stationary Forward Flux Sampling, that allows efficient simulation of r...
We review two recently developed efficient methods for calculating rate constants of processes domin...
Computer simulations of molecular processes such as nucleation in first-order phase transitions or t...
We analyze the efficiency of several simulation methods which we have recently proposed for calculat...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
The problem of flickering trajectories in standard kinetic Monte Carlo (kMC) simulations prohibits s...
A good deal of molecular dynamics simulations aims at predicting and quantifying rare events, such a...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
We propose a novel stochastic method to generate Brownian paths conditioned to start at an initial p...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
We develop two novel transition path sampling (TPS) algorithms for harvesting ensembles of rare even...
Using tools of statistical mechanics, it is routine to average over the distribution of microscopic ...
Transition path sampling (TPS) was developed for studying activated processes in complex systems wit...
We present a new method, Non-Stationary Forward Flux Sampling, that allows efficient simulation of r...
We review two recently developed efficient methods for calculating rate constants of processes domin...
Computer simulations of molecular processes such as nucleation in first-order phase transitions or t...
We analyze the efficiency of several simulation methods which we have recently proposed for calculat...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
The problem of flickering trajectories in standard kinetic Monte Carlo (kMC) simulations prohibits s...
A good deal of molecular dynamics simulations aims at predicting and quantifying rare events, such a...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...
We propose a novel stochastic method to generate Brownian paths conditioned to start at an initial p...
International audienceWe propose a novel stochastic method to generate Brownian paths conditioned to...