Mean curvature bounds and eigenvalues of Robin Laplacians
Konstantin Pankrashkin, Nicolas Popoff

TL;DR
This paper analyzes the asymptotic behavior of eigenvalues of Robin Laplacians with attractive boundary conditions, revealing geometric influences and establishing optimality of the ball for maximum mean curvature among star-shaped domains.
Contribution
It provides new asymptotic formulas for eigenvalues involving maximum mean curvature and proves the ball minimizes this curvature among star-shaped domains of fixed volume.
Findings
Eigenvalues have specific asymptotics involving maximum mean curvature.
The ball minimizes maximum mean curvature among star-shaped domains.
Ball domains have higher eigenvalues than other star-shaped domains of same volume for large Robin parameter.
Abstract
We consider the Laplacian with attractive Robin boundary conditions, \[ Q^\Omega_\alpha u=-\Delta u, \quad \dfrac{\partial u}{\partial n}=\alpha u \text{ on } \partial\Omega, \] in a class of bounded smooth domains ; here is the outward unit normal and is a constant. We show that for each and , the th eigenvalue has the asymptotics \[ E_j(Q^\Omega_\alpha)=-\alpha^2 -(\nu-1)H_\mathrm{max}(\Omega)\,\alpha+{\mathcal O}(\alpha^{2/3}), \] where is the maximum mean curvature at . The discussion of the reverse Faber-Krahn inequality gives rise to a new geometric problem concerning the minimization of . In particular, we show that the ball is the strict minimizer of among the smooth star-shaped domains of a given volume,…
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