Title of article :
COMPRESSIVE SPECTRAL RENORMALIZATION METHOD
Author/Authors :
BAYINDIR, C Engineering Faculty - Isık University - Sile, Istanbul
Abstract :
In this paper a novel numerical scheme for finding the sparse self-localized
states of a nonlinear system of equations with missing spectral data is introduced. As
in the Petviashivili’s and the spectral renormalization method, the governing equation is
transformed into Fourier domain, but the iterations are performed for far fewer number of
spectral components (M) than classical versions of the these methods with higher number
of spectral components (N). After the converge criteria is achieved for M components,
N component signal is reconstructed from M components by using the l1 minimization
technique of the compressive sampling. This method can be named as compressive
spectral renormalization (CSRM) method. The main advantage of the CSRM is that,
it is capable of finding the sparse self-localized states of the evolution equation(s) with
many spectral data missing.
Keywords :
Spectral renormalization , Petviashivili’s method , compressive sampling , spectral methods , nonlinear Schr¨odinger equation
Journal title :
Turkish World Mathematical Society Journal of Applied and Engineering Mathematics