Towards a methodology for robust parameter identificationConsideration is given to the problem of estimating, from experimental data, real parameters for a model with uncertainty in the form of both additive noise and norm-bounded perturbations. Such models frequently arise in robust control theory, and a framework is introduced for the consideration of experimental data in robust control analysis problems. If the analysis tools applied include robust stability tests for real parameter variations (real mu), the framework can be used to address the problem of robust parameter identification. While the techniques discussed can quickly become computationally overwhelming when applied to physical systems and real data, the approach introduces a novel way of looking at the identification problem and may be helpful in arriving at a more tractable methodology.
Document ID
19910045577
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Smith, Roy S. (JPL Pasadena, CA, United States)
Doyle, John C. (California Institute of Technology Pasadena, United States)