Coarse-graining, reconstruction and importance sampling methods for the simulation of many-particle stochastic systems
Abstract:
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 present 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 importance sampling) and PDE-inspired analysis (a posteriori estimates). We also discuss the
connections and extensions of our work on lattice systems to the coarse-graining of polymers.
Applied Mathematics Seminar