Ground States in Spatially Discrete Nonlinear Schr\"odinger Lattices
Atanas G. Stefanov, Ryan M. Ross, Panayotis G. Kevrekidis

TL;DR
This paper investigates the stability of ground states in discrete nonlinear Schrödinger lattices, extending Weinstein's variational approach, establishing spectral stability, and providing numerical validation of stability criteria across parameter ranges.
Contribution
It introduces a new construction of homogeneous waves for all parameter values and establishes a rigorous stability criterion based on classical spectral analysis methods.
Findings
Normalized waves are spectrally stable solutions.
Homogeneous waves are constructed for all parameter values.
Numerical results confirm the stability criterion and show stability changes with parameters.
Abstract
In his seminal work, Weinstein considered the question of the ground states for discrete Schr\"odinger equations with power law nonlinearities, posed on . More specifically, he constructed the so-called normalized waves, by minimizing the Hamiltonian functional, for fixed power (i.e. mass). This type of variational method allows one to claim, in a straightforward manner, set stability for such waves. In this work, we revisit and build upon Weinstein's work in several directions. First, for the normalized waves, we show that they are in fact spectrally stable as solutions of the corresponding discrete NLS evolution equation. Next, we construct the so-called homogeneous waves, by using a different constrained optimization problem. Importantly, this construction works for all values of the parameters, e.g. supercritical problems. We establish a rigorous…
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Taxonomy
TopicsSpectral Theory in Mathematical Physics · Advanced Mathematical Physics Problems · Numerical methods in inverse problems
