Random Tessellations and Gibbsian solutions of Hamilton-Jacobi Equations
Mehdi Ouaki, Fraydoun Rezakhanlou

TL;DR
This paper constructs Gibbs-like measures on convex functions linked to Laguerre tessellations and explores their invariance under Hamilton-Jacobi PDE dynamics, proposing a kinetic PDE for the kernel evolution.
Contribution
It introduces a family of Gibbs-like measures on piecewise linear convex functions connected to Laguerre tessellations and studies their invariance under Hamilton-Jacobi PDEs.
Findings
Constructed a family of Gibbs-like measures characterized by a kernel.
Established a PDE condition for the consistency of tessellations.
Conjectured invariance of these measures under PDE dynamics.
Abstract
We pursue two goals in this article. As our first goal, we construct a family of Gibbs like measures on the set of piecewise linear convex functions . It turns out that there is a one-to-one correspondence between the gradient of such convex functions and . Each cell in a Laguerre tessellation is a convex polygon that is marked by a vector . Each measure in our family is uniquely characterized by a kernel , which represents the rate at which a line separating two cells associated with marks and passes through . To construct our measures, we give a precise recipe for the law of the restriction of our tessellation to a box. This recipe involves a boundary condition, and a dynamical description of our random tessellation inside…
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