Title :
Continuous — Time self — Tuning controller using delta model identification
Author :
Bobal, V. ; Sysel, M. ; Dostal, P.
Author_Institution :
Dept. of Control Theor., Tomas Bata Univ. in Zlin, Zlin, Czech Republic
Abstract :
This contribution presents the application of self-tuning continuous - time controller for process control modelled by S - models. The process is identified by the regression (ARX) model using the recursive least squares method (RLSM) with applied directional forgetting. The basic RLSM algorithm has been modified for the δ- model structures. Controller synthesis is designed on the basis of the pole placement method (a couple double real poles in s - plane has been chosen in the characteristic polynomial). This continuous - time controller is based on the fact that the δ - parameter estimates have excellent convergence and over a short sampling period converge to their continuous versions. The advantage of this approach is that in the identification part of the self - tuning algorithm is not necessary to use computation the parameter estimates of the differential equation using the state variable filter. Choice of initial parameter estimates does not make problems, too.
Keywords :
adaptive control; continuous time systems; control system synthesis; differential equations; least squares approximations; process control; regression analysis; self-adjusting systems; δ-model structures; ARX model; RLSM; S-models; applied directional forgetting; continuous-time self-tuning controller; controller synthesis; delta model identification; differential equation; process control; recursive least squares method; regression model; state variable filter; Algorithm design and analysis; Convergence; Differential equations; Least squares methods; Polynomials; Process control; Tuning; δ-model; Adaptive control; continuous-time control; pole assignment; recursive identification;
Conference_Titel :
Control Conference (ECC), 2001 European
Conference_Location :
Porto
Print_ISBN :
978-3-9524173-6-2