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Lifted system iterative learning control applied to an industrial robot

机译:提升系统迭代学习控制在工业机器人中的应用

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This paper proposes a model-based iterative learning control algorithm for time-varying systems with a high convergence speed. The convergence of components of the tracking error can be controlled individually with the algorithm. The convergence speed of each error component can be maximised unless robustness for noise or unmodelled dynamics is needed. The learning control algorithm is applied to the industrial Staubli RX90 robot. A linear time-varying model of the robot dynamics is obtained by linearisation of the non-linear dynamic equations. Experiments show that the tracking error of the robot joints can be reduced to the desired level in a few iterations.
机译:提出了一种具有高收敛速度的时变系统基于模型的迭代学习控制算法。跟踪误差分量的收敛可以用该算法单独控制。除非需要鲁棒的噪声或未建模的动力学,否则每个误差分量的收敛速度都可以最大化。学习控制算法应用于工业Staubli RX90机器人。通过将非线性动力学方程线性化,可以获得机器人动力学的线性时变模型。实验表明,通过几次迭代,可以将机器人关节的跟踪误差降低到所需水平。

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