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Robust learning controller design for MIMO stochastic discrete-time systems: An Hoo-based approach

机译:MIMO随机离散时间系统的鲁棒学习控制器设计:一种基于Hoo的方法

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This paper is devoted to designing iterative learning control (ILC) for multiple-input multiple-output discrete-time systems that are subject to random disturbances varying from iteration to iteration. Using the super-vector approach to ILC, statistical expressions are presented for both expectation and variance of the tracking error, and time-domain conditions are developed to ensure their asymptotic stability and monotonic convergence. It shows that time-domain conditions can be tied together with an Hoo-based condition in the frequency domain by considering the properties of block Toeplitz matrices. This makes it possible to apply the linear matrix inequality technique to describe the convergence conditions and to obtain formulas for the control law design. Furthermore, the Hoo -based approach is shown applicable to ILC design regardless of the system relative degree, which can also be used to address issues of model uncertainty. For a class of systems with a relative degree of one, simulation tests are provided to illustrate the effectiveness of the Hoo-based approach to robust ILC design.
机译:本文致力于为多输入多输出离散时间系统设计迭代学习控制(ILC),该系统受迭代之间随机干扰的影响。使用ILC的超向量方法,给出了跟踪误差的期望值和方差的统计表达式,并开发了时域条件以确保其渐近稳定性和单调收敛性。它表明,通过考虑块Toeplitz矩阵的属性,可以将时域条件与频域中基于Hoo的条件联系在一起。这使得可以应用线性矩阵不等式技术来描述收敛条件并获得控制律设计的公式。此外,示出的基于Hoo的方法适用于ILC设计,而与系统的相对程度无关,这也可以用于解决模型不确定性的问题。对于一类相对度为1的系统,提供了仿真测试,以说明基于Hoo的方法对鲁棒ILC设计的有效性。

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