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Robust analysis and synthesis with unstructured model uncertainty in lifted system iterative learning control

机译:提升系统迭代学习控制中具有非结构化模型不确定性的鲁棒分析与综合

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This paper discusses robust iterative learning control (ILC) analysis and synthesis problems that account for model uncertainty in the lifted system representation. In the robust analysis, we transform the robust monotonic convergence condition with unstructured uncertainty into an equivalent convex problem. In this framework, for a given learning gain Q, the design of the learning gain L that maximizes the convergence speed is reformulated as a convex optimization problem. We discuss various properties of the proposed robust ILC analysis and design, and analyze the performance of the proposed robust ILC design through numerical simulations.
机译:本文讨论了鲁棒的迭代学习控制(ILC)分析和综合问题,这些问题解决了提升系统表示中的模型不确定性。在鲁棒分析中,我们将具有非结构化不确定性的鲁棒单调收敛条件转换为等效凸问题。在该框架中,对于给定的学习增益Q,将收敛速度最大化的学习增益L的设计重新设计为凸优化问题。我们讨论了提出的鲁棒ILC分析和设计的各种属性,并通过数值模拟分析了提出的鲁棒ILC设计的性能。

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