Control and Parameter Estimation of Uncertain Robotic Systems by An Iterative Learning Method

불확실한 로보트 시스템의 제어와 파라미터 추정을 위한 반복학습제어

  • 국태용 (포항공대 대학원 전자전기공학과) ;
  • 이진수 (포항공대 전자전기공학과)
  • Published : 1991.04.01

Abstract

An iterative learning control scheme for exact-tracking control and parameter estimation of uncertain robotic system is preented. In the learning control structure, the control input converges globally and asymtotically to the desired input as iteration increases. Since convergence of parameter errors depends only on the persistent exciting condition of system trajectories along the iteration independently of the time-duration of trajectories, it may be achieved with system trajectories with small duration. In addition, the proposd learning control schemes are applicable to time-varying parametric systems as well as time-invariant systems, because the parameter estimation is performed at each fixed time along the iteration. In the parameter estimator, the acceleration information as well as the inversion of estimated inertia matrix are not used at all, which makes the proposed learning control schemes more feasible.

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