Stochastic homogenization of HJ equations: a differential game approach

Davini, A., Saona, R. & Ziliotto, B. (2026). Stochastic homogenization of HJ equations: a differential game approach. Annales de l'Institut Henri Poincaré C: Analyse non linéaire, [In Press]
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Abstract

We prove stochastic homogenization for a class of non-convex and non-coercive first-order Hamilton-Jacobi equations in a finite-range-dependence environment for Hamiltonians that can be expressed by a max-min formula. Exploiting the representation of solutions as value functions of differential games, we develop a game-theoretic approach to homogenization. We furthermore extend this result to a class of Lipschitz Hamiltonians that need not admit a global max-min representation. Our methods allow us to get a quantitative convergence rate for solutions with linear initial data toward the corresponding ones of the effective limit problem.

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