Non-equilibrium large deviations and parabolic-hyperbolic PDE with irregular drift
Benjamin Fehrman, Benjamin Gess

TL;DR
This paper develops a robust theory for degenerate parabolic-hyperbolic PDEs with irregular drift, enabling analysis of large deviations in interacting particle systems and solving longstanding open problems.
Contribution
It introduces a well-posedness framework for such PDEs using renormalized solutions and kinetic form, extending classical concepts to nonlinear settings.
Findings
Established equivalence between renormalized and weak solutions.
Solved a long-standing open problem in large deviations for zero range processes.
Linked macroscopic fluctuation theory with fluctuating hydrodynamics rigorously.
Abstract
Large deviations of conservative interacting particle systems, such as the zero range process, about their hydrodynamic limit and their respective rate functions lead to the analysis of the skeleton equation; a degenerate parabolic-hyperbolic PDE with irregular drift. We develop a robust well-posedness theory for such PDEs in energy-critical spaces based on concepts of renormalized solutions and the equation's kinetic form. We establish these properties by proving that renormalized solutions are equivalent to classical weak solutions, extending concepts of [DiPerna, Lions; Ann. Math., 1989], [Ambrosio; Invent. Math., 2004] to the nonlinear setting. The relevance of the results toward large deviations in interacting particle systems is demonstrated by applications to the identification of l.s.c. envelopes of restricted rate functions, to zero noise large deviations for conservative…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Theoretical and Computational Physics · Markov Chains and Monte Carlo Methods
