In this article we discuss recent work on coarse-graining methods for microscopic stochastic lattice systems. We emphasize the numerical analysis of the schemes, focusing on error quantification as well as on the construction of improved algorithms capable of operating in wider parameter regimes. We also discuss adaptive coarse-graining schemes which have the capacity of automatically adjusting during the simulation if substantial deviations are detected in a suitable error indicator. The methods employed in the development and the analysis of the algorithms rely on a combination of statistical mechanics methods (renormalization and cluster expansions), statistical tools (reconstruction and impor...
In this thesis we derive deterministic and stochastic models that describe physical processes and th...
Starting from a microscopic stochastic lattice spin system and the corresponding coarse-grained mode...
In this paper we investigate the approximation properties of the coarse-graining procedure applied t...
In this article we discuss recent work on coarse-graining methods for microscopic stochastic lattice...
In this paper we continue our study of coarse-graining schemes for stochastic many-body microscopic ...
The primary objective of this work is to develop coarse-graining schemes for stochastic many-body mi...
In this paper we continue our study of coarse-graining schemes for stochastic many-body microscopic ...
The primary objective of this work is to develop coarse-graining schemes for stochastic many-body mi...
In this paper we continue our study of coarse-graining schemes for stochastic many-body microscopic ...
We develop coarse-graining schemes for stochastic many-particle microscopic models with competing sh...
We develop coarse-graining schemes for stochastic many-particle microscopic models with competing sh...
Plechac, PetrThis dissertation is focused on numerical schemes of coarse-graining (CG) for stochasti...
The coarse-grained Monte Carlo (CGMC) algorithm was originally proposed in the series of works [M. A...
Diverse scientific disciplines ranging from materials science to catalysis to biomolecular dynamics ...
In this thesis we derive deterministic and stochastic models that describe physical processes and th...
Starting from a microscopic stochastic lattice spin system and the corresponding coarse-grained mode...
In this paper we investigate the approximation properties of the coarse-graining procedure applied t...
In this article we discuss recent work on coarse-graining methods for microscopic stochastic lattice...
In this paper we continue our study of coarse-graining schemes for stochastic many-body microscopic ...
The primary objective of this work is to develop coarse-graining schemes for stochastic many-body mi...
In this paper we continue our study of coarse-graining schemes for stochastic many-body microscopic ...
The primary objective of this work is to develop coarse-graining schemes for stochastic many-body mi...
In this paper we continue our study of coarse-graining schemes for stochastic many-body microscopic ...
We develop coarse-graining schemes for stochastic many-particle microscopic models with competing sh...
We develop coarse-graining schemes for stochastic many-particle microscopic models with competing sh...
Plechac, PetrThis dissertation is focused on numerical schemes of coarse-graining (CG) for stochasti...
The coarse-grained Monte Carlo (CGMC) algorithm was originally proposed in the series of works [M. A...
Diverse scientific disciplines ranging from materials science to catalysis to biomolecular dynamics ...
In this thesis we derive deterministic and stochastic models that describe physical processes and th...
Starting from a microscopic stochastic lattice spin system and the corresponding coarse-grained mode...
In this paper we investigate the approximation properties of the coarse-graining procedure applied t...