$\mu$-Controller Design using Genetic Algorithm

유전알고리즘을 이용한 $\mu$제어기 설계

  • 기용상 (광주과학기술원 기전공학과) ;
  • 안병하 (광주과학기술원 기전공학과)
  • Published : 1996.11.01

Abstract

$\mu$ theory can handle the parametric uncertainty and produces more non-conservative controller than H$_{\infty}$ control theory. However an existing solution of the theory, D-K iteration, creates a controller of huge order and cannot handle the real or mixed real-complex perturbation sets. In this paper, we use genetic algorithms to solve these problems of the D-K iteration method. The Youla parameterization is used to obtain all stabilizing controllers and the genetic algorithms determines the values of the state feedback gain, the observer gain, and Q parameter to minimize $\mu$, the structured singular value, of given system. From an example, we show that this method produces lower order controller which controls a real parameter-perturbed plant than D-K iteration method.

Keywords