On the Approximation of Toeplitz Operators for Nonparametric $\mathcal{H}_{\infty}$-norm Estimation

2018 Annual American Control Conference (ACC)(2018)

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摘要
Given a stable SISO LTI system G, we investigate the problem of estimating the H -norm of G, denoted ||G|| , when G is only accessible via noisy observations. Wahlberg et al. [1] recently proposed a nonparametric algorithm based on the power method for estimating the top eigenvalue of a matrix. In particular, by applying a clever time-reversal trick, Wahlberg et al. implement the power method on the top left n×n corner Tn of the Toeplitz (convolution) operator associated to G. In this paper, we prove sharp non-asymptotic bounds on the necessary length n needed so that ||Tn|| is an ε-additive approximation of ||G|| . Furthermore, in the process of demonstrating the sharpness of our bounds, we construct a simple family of finite impulse response (FIR) filters where the number of timesteps needed for the power method is arbitrarily worse than the number of timesteps needed for parametric FIR identification via least-squares to achieve the same ε-additive approximation.
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关键词
ε-additive approximation,Toeplitz operator,norm estimation,stable SISO LTI system G,noisy observations,Wahlberg et al,nonparametric algorithm,clever time-reversal trick,nonasymptotic bounds
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