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An inverse-model approach to multivariable norm optimal iterative learning control with auxiliary optimisation

机译:辅助优化的多变量范数最优迭代学习控制的逆模型方法

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摘要

Motivated by the commonly encountered problem in which tracking is only required at selected intermediate points within the time interval, a general optimisation-based iterative learning control (ILC) algorithm is derived that ensures convergence of tracking errors to zero whilst simultaneously minimising a specified quadratic objective function of the input signals and chosen auxiliary (state) variables. In practice, the proposed solutions enable a repeated tracking task to be accurately completed whilst simultaneously reducing undesirable effects such as payload spillage, vibration tendencies and actuator wear. The theory is developed using the well-known norm optimal ILC (NOILC) framework, using general linear, functional operators between real Hilbert spaces. Solutions are derived using feedforward action, convergence is proved and robustness bounds are presented using both norm bounds and positivity conditions. Algorithms are specified for both continuous and discrete-time state-space representations, with the latter including application to multi-rate sampled systems. Experimental results using a robotic manipulator confirm the practical utility of the algorithms and the closeness with which observed results match theoretical predictions.
机译:由于通常遇到的问题,即仅在时间间隔内的选定中间点进行跟踪,因此派生了一种基于优化的通用迭代学习控制(ILC)算法,该算法可确保将跟踪误差收敛到零,同时将指定的二次目标最小化输入信号的功能和选择的辅助(状态)变量。在实践中,提出的解决方案使重复的跟踪任务能够准确完成,同时减少了诸如有效载荷溢出,振动趋势和致动器磨损等不良影响。该理论是使用众所周知的规范最优ILC(NOILC)框架开发的,该框架使用了实际希尔伯特空间之间的一般线性函数运算符。使用前馈作用得出解,证明收敛,并使用范数界和正性条件给出鲁棒界。指定了连续时间和离散时间状态空间表示的算法,后者包括对多速率采样系统的应用。使用机器人操纵器的实验结果证实了该算法的实用性,并且所观察到的结果与理论预测值相吻合。

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