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arxiv: 1802.07695 · v4 · pith:4Y747Q6Mnew · submitted 2018-02-21 · 🧮 math.OC · cs.SY· eess.SY· math.DS

Quadric Inclusion Programs: an LMI Approach to H[infinity]-Model Identification

classification 🧮 math.OC cs.SYeess.SYmath.DS
keywords inclusiondataapproachbehaviorcontroldomainfrequencyidentification
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Practical application of H[infinity] robust control relies on system identification of a valid model-set, described by a linear system in feedback with a stable norm-bounded uncertainty, which must explains all possible (or at least all previously measured) behavior for the control plant. Such models can be viewed as norm-bounded inclusions in the frequency domain, and this note introduces the "Quadric Inclusion Program" that can identify inclusions from input--output data as a convex problem. We prove several key properties of this algorithm and give a geometric interpretation for its behavior. While we stress that the inclusion fitting is outlier-sensitive by design, we offer a method to mitigate the effect of measurement noise. We apply this method to robustly approximate simulated frequency domain data using orthonormal basis functions. The result compares favorably with a least squares approach that satisfies the same data inclusion requirements.

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