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📄 Abstract
Abstract: This paper revisits the set membership identification for linear control
systems and establishes its convergence rates under relaxed assumptions on (i)
the persistent excitation requirement and (ii) the system disturbances. In
particular, instead of assuming persistent excitation exactly, this paper
adopts the block-martingale small-ball condition enabled by randomly perturbed
control policies to establish the convergence rates of SME with high
probability. Further, we relax the assumptions on the shape of the bounded
disturbance set and the boundary-visiting condition. Our convergence rates hold
for disturbances bounded by general convex sets, which bridges the gap between
the previous convergence analysis for general convex sets and the existing
convergence rate analysis for $\ell_\infty$ balls. Further, we validate our
convergence rates by several numerical experiments.
This manuscript contains supplementary content in the Appendix.