Filter-based regularization for impulse response modeling

Anna Marconato, Maarten Schoukens, Joannes Schoukens

Research output: Unpublished contribution to conferencePoster

Abstract

In the last years, the success of kernel-based regularization techniques in solving impulse response modeling tasks has revived the interest on linear system identification. In this work, an alternative perspective on the same problem is introduced. Instead of relying on a Bayesian framework to include assumptions about the system in the definition of the covariance matrix of the parameters, here the prior knowledge is injected at the cost function level. The key idea is to define the regularization matrix as a filtering operation on the parameters, which allows for a more intuitive formulation of the problem from an engineering point of view. Moreover, this results in a unified framework to model low-pass, band-pass and high-pass systems, and systems with one or more resonances. The proposed filter-based approach outperforms the existing regularization method based on the TC and DC kernels, as illustrated by means of Monte Carlo simulations on several linear modeling examples.
Original languageEnglish
Publication statusPublished - 26 Sept 2016
EventERNSI WORKSHOP 2016 - Cison di Valmarino, Italy
Duration: 25 Sept 201628 Sept 2016

Workshop

WorkshopERNSI WORKSHOP 2016
Country/TerritoryItaly
CityCison di Valmarino
Period25/09/1628/09/16

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