Title :
A new kernel-based approach to overparameterized Hammerstein system identification
Author :
Riccardo S. Risuleo;Giulio Bottegal;Håkan Hjalmarsson
Author_Institution :
ACCESS Linnaeus Center, School of Electrical Engineering, KTH Royal Institute of Technology, Sweden
Abstract :
The object of this paper is the identification of Hammerstein systems, which are dynamic systems consisting of a static nonlinearity and a linear time-invariant dynamic system in cascade. We assume that the nonlinear function can be described as a linear combination of p basis functions. We model the system dynamics by means of an np-dimensional vector. This vector, usually referred to as overparameterized vector, contains all the combinations between the nonlinearity coefficients and the first n samples of the impulse response of the linear block. The estimation of the overparameterized vector is performed with a new regularized kernel-based approach. To this end, we introduce a novel kernel tailored for overparameterized models, which yields estimates that can be uniquely decomposed as the combination of an impulse response and p coefficients of the static nonlinearity. As part of the work, we establish a clear connection between the proposed identification scheme and our recently developed nonparametric method based on the stable spline kernel.
Keywords :
"Kernel","Linear systems","Splines (mathematics)","Nonlinear dynamical systems","System dynamics","Finite impulse response filters","Covariance matrices"
Conference_Titel :
Decision and Control (CDC), 2015 IEEE 54th Annual Conference on
DOI :
10.1109/CDC.2015.7402095