Inverse Dynamic Torque Control of a Six-Jointed Robot Arm Using Neural networks

신경회로를 이용한 6축 로보트의 역동력학적 토크제어

  • 오세영 (포항공대 전자전기공학과) ;
  • 조문정 (금성사 중앙연구소) ;
  • 문영주 (포항공대 대학원 전자전기공학과)
  • Published : 1991.08.01

Abstract

It is well known that dynamic control is needed for fast and accurate control. Neural networks are ideal for representing the strongly nonlinear relationship in the dynamic equations including complex unmodeled effects. It thus creates many advantages over conventional methods such as simple, fast and accurate control through neural network's inherent learning and massive parallelism. In this paper, dynamic control of the full six degrees of freedom of an industrial robot arm will be presented using neural networks. Moreover, through application to a real robot the usefulness of neurocontrol is demonstrated. The back propagation and feedback-error learning is used to train the neurocontroller. Simulated control of a PUMA 560 arm demonstrates that it moves at high speed with good accuracy and generalizes over untrained trajectories as well as adapt to unforseen load changes and sensor noise.

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