21 research outputs found
Variational approach to coarse-graining of generalized gradient flows
In this paper we present a variational technique that handles coarse-graining and passing to a limit in a unified manner. The technique is based on a duality structure, which is present in many gradient flows and other variational evolutions, and which often arises from a large-deviations principle. It has three main features: (A) a natural interaction between the duality structure and the coarse-graining, (B) application to systems with non-dissipative effects, and (C) application to coarse-graining of approximate solutions which solve the equation only to some error. As examples, we use this technique to solve three limit problems, the overdamped limit of the Vlasov-Fokker-Planck equation and the small-noise limit of randomly perturbed Hamiltonian systems with one and with many degrees of freedom
Variational approach to coarse-graining of generalized gradient flows
In this paper we present a variational technique that handles coarse-graining and passing to a limit in a unified manner. The technique is based on a duality structure, which is present in many gradient flows and other variational evolutions, and which often arises from a large-deviations principle. It has three main features: (A) a natural interaction between the duality structure and the coarse-graining, (B) application to systems with non-dissipative effects, and (C) application to coarse-graining of approximate solutions which solve the equation only to some error. As examples, we use this technique to solve three limit problems, the overdamped limit of the Vlasov-Fokker-Planck equation and the small-noise limit of randomly perturbed Hamiltonian systems with one and with many degrees of freedom
Quantification of coarse-graining error in Langevin and overdamped Langevin dynamics
In molecular dynamics and sampling of high dimensional Gibbs measures coarse-graining is an important technique to reduce the dimensionality of the problem. We will study and quantify the coarse-graining error between the coarse-grained dynamics and an effective dynamics. The effective dynamics is a Markov process on the coarse-grained state space obtained by a closure procedure from the coarse-grained coefficients. We obtain error estimates both in relative entropy and Wasserstein distance, for both Langevin and overdamped Langevin dynamics. The approach allows for vectorial coarse-graining maps. Hereby, the quality of the chosen coarse-graining is measured by certain functional inequalities encoding the scale separation of the Gibbs measure. The method is based on error estimates between solutions of (kinetic) Fokker-Planck equations in terms of large-deviation rate functionals
Variational structures beyond gradient flows: a macroscopic fluctuation-theory perspective
Macroscopic equations arising out of stochastic particle systems in detailed balance (called dissipative
systems or gradient flows) have a natural variational structure, which can be derived from the
large-deviation rate functional for the density of the particle system. While large deviations can be
studied in considerable generality, these variational structures are often restricted to systems in detailed
balance. Using insights from macroscopic fluctuation theory, in this work we aim to generalise this
variational connection beyond dissipative systems by augmenting densities with fluxes, which encode
non-dissipative effects. Our main contribution is an abstract framework, which for a given flux-density
cost and a quasipotential, provides a decomposition into dissipative and non-dissipative components and a
generalised orthogonality relation between them. We then apply this abstract theory to various stochastic
particle systems – independent copies of jump processes, zero-range processes, chemical-reaction networks
in complex balance and lattice-gas models
Untangling Dissipative and Hamiltonian effects in bulk and boundary driven systems
Using the theory of large deviations, macroscopic fluctuation theory provides
a framework to understand the behaviour of non-equilibrium dynamics and steady
states in diffusive systems. We extend this framework to a minimal model of
non-equilibrium non-diffusive system, specifically an open linear network on a
finite graph. We explicitly calculate the dissipative bulk and boundary forces
that drive the system towards the steady state, and non-dissipative bulk and
boundary forces that drives the system in orbits around the steady state. Using
the fact that these forces are orthogonal in a certain sense, we provide a
decomposition of the large-deviation cost into dissipative and non-dissipative
terms. We establish that the purely non-dissipative force turns the dynamics
into a Hamiltonian system. These theoretical findings are illustrated by
numerical examples
Effective dynamics for non-reversible stochastic differential equations: a quantitative study
International audienceCoarse-graining is central to reducing dimensionality in molecular dynamics, and is typically characterized by a mapping which projects the full state of the system to a smaller class of variables. While extensive literature has been devoted to coarse-graining starting from reversible systems, not much is known in the non-reversible setting. In this article, starting with a non-reversible dynamics, we introduce and study an effective dynamics which approximates the (non-closed) projected dynamics. Under fairly weak conditions on the system, we prove error bounds on the trajectorial error between the projected and the effective dynamics. In addition to extending existing results to the non-reversible setting, our error estimates also indicate that the notion of mean force motivated by this effective dynamics is a good one