Title :
Robustness of linear quadratic state feedback designs in the presence of system uncertainty
Author :
Patel, R.V. ; Toda, M. ; Sridhar, B.
Author_Institution :
NASA Ames Research Center, Moffett Field, CA, USA
fDate :
12/1/1977 12:00:00 AM
Abstract :
The well-known stabilizing property of linear quadratic state feedback (LQSF) design is used to obtain a quantitative measure of the robustness of LQSF designs in the presence of perturbations. Bounds are obtained for allowable nonlinear, time-varying perturbations such that the resulting closed-loop system remains stable. The special case of linear, time-invariant perturbations is also treated. The bounds are expressed in terms of the weighting matrices in a quadratic performance index and the corresponding positive definite solution of the algebraic matrix Riccati equation, and are easy to compute for any given LQSF design. A relationship is established between the perturbation bounds and the dominant eigenvalues of the closed-loop optimal system model. Some interesting asymptotic properties of the bounds are also discussed. An autopilot for the flare control of the Augmentor Wing Jet STOL Research Aircraft (AWJSRA) is designed, based on LQSF theory, and the results presented in this paper. The variation of the perturbation bounds to changes in the weighting matrices in the LQSF design is studied by computer simulations, and appropriate weighting matrices are chosen to obtain a reasonable bound for perturbations in the system matrix and at the same time meet the practical constraints for the flare maneuver of the AWJSRA. Results from the computer simulation of a satisfactory autopilot design for the flare control of the AWJSRA are presented.
Keywords :
Aircraft control; Linear systems, time-invariant continuous-time; Linear systems, time-varying continuous-time; Nonlinear systems, time-varying; Optimal control; Perturbation methods; State-feedback; Time-varying systems, nonlinear; Uncertain systems; Computer simulation; Eigenvalues and eigenfunctions; Matrices; Nonlinear equations; Performance analysis; Riccati equations; Robustness; State feedback; Time varying systems; Uncertainty;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.1977.1101658