Title :
Order Reduction via Multiple Singular Parameters
Author_Institution :
Department of Electrical and Computer Engineering, Washington State University, Pullman, WA 99164-2210
Abstract :
Model reduction methods based upon singular perturbation theory is now well developed in analysis and design of large scale control systems. However, applications of singular-perturbational results are dictated by the fact that mathematical models must be expressed in the singularly perturbed form. The problem of identifying singular parameters from a dynamic model of a large scale physical system is still relatively unexplored. Sanuti, Syrcos and Wason recently made a significant contribution in developing a systematic procedure which converts the state equations of a large scale linear time-invariant system to singularly perturbed form. [1][2] It is the purpose of this paper to address the problem of identifying singular parameters which will facilitate controller and observer designs with the aid of reduced-order models. In this paper singular values of an internally-balanced generalized state model are shown to be used as singular parameters in multiparameter singular-perturbational models.
Keywords :
Application software; Computer simulation; Control system synthesis; Equations; Large-scale systems; Mathematical model; Power system interconnection; Reduced order systems; Reliability theory; Singular value decomposition;
Conference_Titel :
American Control Conference, 1984
Conference_Location :
San Diego, CA, USA