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Multivariable Learning Using Frequency Response Data: A Robust Iterative Inversion-Based Control Approach with Application

机译:使用频率响应数据的多变量学习:基于鲁棒迭代反演的控制方法及其应用

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Learning control methods enable significant performance improvements for systems that operate repetitively. Typical methods rely on a parametric plant model to achieve fast and robust convergence. The aim of this paper is to develop a framework for multivariable systems that enables fast and robust learning without requiring a parametric plant model. This is achieved by connecting nonparametric frequency response function identification and robust control, which enables synthesis on a frequency-by-frequency basis. A nonconservative approach is obtained by ensuring that the identified uncertainty is directly compatible with the developed synthesis framework. Application to a multivariable benchmark motion system confirms the potential of the developed framework.
机译:学习控制方法可为反复运行的系统显着提高性能。典型的方法依赖于参数化的工厂模型来实现快速而稳健的收敛。本文的目的是为多变量系统开发一个框架,该框架无需参数化工厂模型即可实现快速而强大的学习。这是通过将非参数频率响应函数识别和鲁棒控制连接起来实现的,鲁棒控制可实现逐个频率的合成。通过确保所确定的不确定性与已开发的综合框架直接兼容,可以得到一种非保守的方法。在多变量基准运动系统上的应用证实了开发框架的潜力。

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