The problem of flickering trajectories in standard kinetic Monte Carlo (kMC) simulations prohibits sampling of the transition path ensembles (TPEs) on Markovian networks representing many slow dynamical processes of interest. In the present contribution, we overcome this problem using knowledge of the metastable macrostates, determined by an unsupervised community detection algorithm, to perform enhanced sampling kMC simulations. We implement two accelerated kMC methods to simulate the nonequilibrium stochastic dynamics on arbitrary Markovian networks, namely, weighted ensemble (WE) sampling and kinetic path sampling (kPS). WE-kMC utilizes resampling in pathway space to maintain an ensemble of representative trajectories covering the state ...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
Markov jump processes and continuous time Bayesian networks are important classes of continuous time...
We develop two novel transition path sampling (TPS) algorithms for harvesting ensembles of rare even...
Markov state models (MSMs) and other related kinetic network models are frequently used to study the...
Using tools of statistical mechanics, it is routine to average over the distribution of microscopic ...
We present three algorithms for calculating rate constants and sampling transition paths for rare ev...
Kinetic (aka dynamic) Monte Carlo (KMC) is a powerful method for numerical simulations of time depen...
Stochastic systems often exhibit multiple viable metastable states that are long-lived. Over very lo...
Markov jump processes (or continuous-time Markov chains) are a simple and important class of continu...
In the past 15 years transition path sampling (TPS) has evolved from its basic algorithm to an entir...
The graph transformation (GT) algorithm robustly computes the mean first-passage time to an absorbin...
We describe state-reduction algorithms for the analysis of first-passage processes in discrete- and ...
We propose a transition path sampling (TPS) scheme designed to enhance sampling in systems with mult...
Finite Markov chains are probabilistic network models that are commonly used as representations of d...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
Markov jump processes and continuous time Bayesian networks are important classes of continuous time...
We develop two novel transition path sampling (TPS) algorithms for harvesting ensembles of rare even...
Markov state models (MSMs) and other related kinetic network models are frequently used to study the...
Using tools of statistical mechanics, it is routine to average over the distribution of microscopic ...
We present three algorithms for calculating rate constants and sampling transition paths for rare ev...
Kinetic (aka dynamic) Monte Carlo (KMC) is a powerful method for numerical simulations of time depen...
Stochastic systems often exhibit multiple viable metastable states that are long-lived. Over very lo...
Markov jump processes (or continuous-time Markov chains) are a simple and important class of continu...
In the past 15 years transition path sampling (TPS) has evolved from its basic algorithm to an entir...
The graph transformation (GT) algorithm robustly computes the mean first-passage time to an absorbin...
We describe state-reduction algorithms for the analysis of first-passage processes in discrete- and ...
We propose a transition path sampling (TPS) scheme designed to enhance sampling in systems with mult...
Finite Markov chains are probabilistic network models that are commonly used as representations of d...
Interest in atomically detailed simulations has grown significantly with recent advances in computat...
Activated processes driven by rare fluctuations are discussed in this thesis. Understanding the dyna...
Markov jump processes and continuous time Bayesian networks are important classes of continuous time...