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Adaptive iterative learning control of uncertain robotic systems

机译:不确定机器人系统的自适应迭代学习控制

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A distinct feature of the proposed AILC scheme is that uncertain parameters are estimated in the time domain whereas repetitive disturbances are identified and compensated in the iteration domain. The bounds of the parameters are not required to be known a priori, and the learning control gain can be adjusted independently of the parameter adaptation gain. The overall closed-loop stability and uniform error convergence in the iteration domain are established without any acceleration measurements or their estimated values. The proposed AILC scheme is a balanced combination of the conventional adaptive control and the iterative learning control, where the shortcomings of each scheme are complemented. The validity of the scheme is confirmed through a simulation example.
机译:所提出的AILC方案的一个显着特征是,在时域中估计不确定的参数,而在迭代域中识别并补偿重复性干扰。不需要先验地知道参数的界限,并且学习控制增益可以独立于参数自适应增益来调节。在没有任何加速度测量或其估计值的情况下,建立了迭代域中的总体闭环稳定性和均匀误差收敛。提出的AILC方案是常规自适应控制和迭代学习控制的平衡组合,其中每种方案的缺点都得到了弥补。通过仿真实例验证了该方案的有效性。

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