Nonlinear system modeling based on constrained Volterra series estimates
Abstract
A simple nonlinear system modeling algorithm designed to work with limited \emph{a priori }knowledge and short data records, is examined. It creates an empirical Volterra series-based model of a system using an -constrained least squares algorithm with . If the system is a continuous and bounded map with a finite memory no longer than some known , then (for a parameter model and for a number of measurements ) the difference between the resulting model of the system and the best possible theoretical one is guaranteed to be of order , even for . The performance of models obtained for and is tested on the Wiener-Hammerstein benchmark system. The results suggest that the models obtained for are better suited to characterize the nature of the system, while the sparse solutions obtained for yield smaller error values in terms of input-output behavior.
Cite
@article{arxiv.1804.07258,
title = {Nonlinear system modeling based on constrained Volterra series estimates},
author = {P. Śliwiński and A. Marconato and P. Wachel and G. Birpoutsoukis},
journal= {arXiv preprint arXiv:1804.07258},
year = {2018}
}