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Parameterization of Model Validating Sets for Uncertainty Bound Optimizations
Author(s) -
Kyong B. Lim,
Daniel P. Giesy
Publication year - 2000
Publication title -
journal of guidance control and dynamics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.573
H-Index - 143
eISSN - 1533-3884
pISSN - 0731-5090
DOI - 10.2514/2.4544
Subject(s) - linear fractional transformation , mathematics , bounded function , allowance (engineering) , mathematical optimization , diagonal , collinearity , transformation (genetics) , set (abstract data type) , basis (linear algebra) , scalar (mathematics) , algorithm , computer science , robust control , control system , statistics , mechanical engineering , mathematical analysis , biochemistry , chemistry , geometry , electrical engineering , gene , programming language , engineering
Given measurement data, a nominal model and a linear fractional transformation uncertainty structure with an allowance on unknown but bounded exogenous disturbances, easily computable tests for the existence of a model validating uncertainty set are given. Under mild conditions, these tests are necessary and sufficient for the case of complex, nonrepeated, block-diagonal structure. For the more general case which includes repeated and/or real scalar uncertainties, the tests are only necessary but become sufficient if a collinearity condition is also satisfied. With the satisfaction of these tests, it is shown that a parameterization of all model validating sets of plant models is possible. The new parameterization is used as a basis for a systematic way to construct or perform uncertainty tradeoff with model validating uncertainty sets which have specific linear fractional transformation structure for use in robust control design and analysis. An illustrative example which includes a comparison of candidate model validating sets is given.

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