Hybrid Fuzzy Learning Controller for an Unstable Nonlinear System

  • Chung, Byeong-Mook (School of Mechanical Engineering, Yeungnam University, Taegu, South Korea) ;
  • Lee, Jae-Won (School of Mechanical Engineering, yeungnam University, Taegu, South Korea) ;
  • Joo, Hae-Ho (School of Mechanical Engineering, Yeungnam University, Taegu, South Korea) ;
  • Lim, Yoon-Kyu (School of Mechanical Engineering, Yeungnam University, Taegu, South Korea)
  • Published : 2000.06.01

Abstract

Although it is well known that fuzzy learning controller is powerful for nonlinear systems, it is very difficult to apply a learning method if they are unstable. An unstable system diverges for impulse input. This divergence makes it difficult to learn the rules unless we can find the initial rules to make the system table prior to learning. Therefore, we introduced LQR(Linear Quadratic Regulator) technique to stabilize the system. It is a state feedback control to move unstable poles of a linear system to stable ones. But, if the system is nonlinear or complicated to get a liner model, we cannot expect good results with only LQR. In this paper, we propose that the LQR law is derived from a roughly approximated linear model, and next the fuzzy controller is tuned by the adaptive on-line learning with the real nonlinear plant. This hybrid controller of LQR and fuzzy learning was superior to the LQR of a linearized model in unstable nonlinear systems.

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