Recursive Diffeomorphism-Based Regression for Shape Functions

Abstract
This paper proposes a recursive diffeomorphism based regression method for one-dimensional generalized mode decomposition problem that aims at extracting generalized modes from their superposition . First, a one-dimensional synchrosqueezed transform is applied to estimate instantaneous information, e.g., and . Second, a novel approach based on diffeomorphisms and nonparametric regression is proposed to estimate wave shape functions . These two methods lead to a framework for the generalized mode decomposition problem under a weak well-separation condition. Numerical examples of synthetic and real data are provided to demonstrate the fruitful applications of these methods.
View on arXivComments on this paper