Adaptive Control Theory

  • Subject No.
    EE783
  • Research
    Signal
  • Credit
    3
  • Classification
    선택(석/박사)
  • Prerequisite

This course deals with system identification to know the unknown system parameters for controlling the system. There are two schemes for the control of the unknown system: one is direct adaptive control and the other is indirect adaptive control. Robust adaptive control and adaptive control for nonlinear systems are dealt with.
(Prerequisite: EE581)

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