SYITSYITOCAug 20, 2012

Anisotropic Norm Bounded Real Lemma for Linear Discrete Time Varying Systems

arXiv:1208.408114 citationsh-index: 14
Originality Incremental advance
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It provides a theoretical tool for robust performance analysis of time-varying systems under entropy-constrained noise, extending H-infinity control theory.

The paper extends the Bounded Real Lemma to finite horizon linear discrete time varying systems with statistically uncertain inputs, providing a state-space criterion for the anisotropic norm to not exceed a given threshold via a difference Riccati equation inequality.

We consider a finite horizon linear discrete time varying system whose input is a random noise with an imprecisely known probability law. The statistical uncertainty is described by a nonnegative parameter a which constrains the anisotropy of the noise as an entropy theoretic measure of deviation of the actual noise distribution from Gaussian white noise laws with scalar covariance matrices. The worst-case disturbance attenuation capabilities of the system with respect to the statistically uncertain random inputs are quantified by the a-anisotropic norm which is an appropriately constrained operator norm of the system. We establish an anisotropic norm bounded real lemma which provides a state-space criterion for the a-anisotropic norm of the system not to exceed a given threshold. The criterion is organized as an inequality on the determinants of matrices associated with a difference Riccati equation and extends the Bounded Real Lemma of the H-infinity-control theory. We also provide a necessary background on the anisotropy-based robust performance analysis.

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