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On Sufficient Richness for Linear Time-Invariant Systems

Authors :
Borghesi, Marco
Baroncini, Simone
Carnevale, Guido
Bosso, Alessandro
Notarstefano, Giuseppe
Publication Year :
2025

Abstract

Persistent excitation (PE) is a necessary and sufficient condition for uniform exponential parameter convergence in several adaptive, identification, and learning schemes. In this article, we consider, in the context of multi-input linear time-invariant (LTI) systems, the problem of guaranteeing PE of commonly-used regressors by applying a sufficiently rich (SR) input signal. Exploiting the analogies between time shifts and time derivatives, we state simple necessary and sufficient PE conditions for the discrete- and continuous-time frameworks. Moreover, we characterize the shape of the set of SR input signals for both single-input and multi-input systems. Finally, we show with a numerical example that the derived conditions are tight and cannot be improved without including additional knowledge of the considered LTI system.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.04062
Document Type :
Working Paper