Title :
Continuous-time control model validation using finite experimental data
Author :
Smith, Roy ; Dullerud, Geir E.
Author_Institution :
Dept. of Electr. & Comput. Eng., California Univ., Santa Barbara, CA, USA
fDate :
8/1/1996 12:00:00 AM
Abstract :
The application of robust control theory requires models containing unknown, bounded perturbations and unknown, bounded input signals. Model validation is a means of assessing the applicability of a given model with respect to experimental data. This paper develops a theoretical framework, and a computational solution, for the model validation problem in the case where the model, including unknown perturbations and signals, is given in the continuous time domain, yet the experimental datum is a finite, sampled signal. The continuous nature of the unknown components is treated directly with a sampled data lifting theory. This gives results which are valid for any sample period and any datum length. Explicit calculation of whether sufficient data for invalidation has been obtained arises naturally in this framework. A common class of robust control models is treated and leads to a convex matrix optimization problem. A simulation example illustrates the approach
Keywords :
continuous time systems; control system synthesis; modelling; robust control; sampled data systems; signal sampling; continuous-time control model validation; convex matrix optimization; finite experimental data; finite sampled signal; robust control theory; sampled data lifting theory; unknown bounded input signals; unknown bounded perturbations; Additive noise; Control systems; Design methodology; Feedback; Helium; Iterative methods; Power system modeling; Robust control; System testing; Uncertain systems;
Journal_Title :
Automatic Control, IEEE Transactions on