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Robust adaptive control using multiple models, switching and tuning

机译:使用多种模型进行可靠的自适应控制,切换和调整

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摘要

The supervisory control problem is analysed as an online robust design problem using switching to select the relevant models for designing the control law. The proposed supervisory control algorithm is based on the integration of concepts used in supervisory adaptive control, robust control and receding horizon control. It involves a two-stage adaptive control algorithm: (i) the identification of a time-varying set of models Pn3;(k), from the set of admissible models Pn3;, that explains the input??output behaviour of the system, followed by (ii) the design of the control law using a parametric linear optimisation problem. The authors show that under the proposed supervisory control algorithm, the system output remains bounded for any bounded disturbance. The use of superstability concepts, together with certain assumptions on Pn3;, allows us to establish overall performance and robust stability guarantees for the supervisory scheme and to include constrains in the closed-loop variables as well as in the controller structure. The relevant features of the proposed control algorithm are demonstrated in a numerical simulation.
机译:通过切换选择相关模型来设计控制律,将监督控制问题分析为在线鲁棒设计问题。所提出的监督控制算法基于监督自适应控制,鲁棒控制和后退水平控制中所用概念的集成。它涉及两阶段的自适应控制算法:(i)识别一组随时间变化的模型Pn3;(k)从该组允许模型Pn3中进行识别;该模型解释了系统的输入-输出行为,其次是(ii)使用参数线性优化问题设计控制律。作者表明,在提出的监督控制算法下,系统输出对于任何有界扰动都保持有界。超稳定性概念的使用以及对Pn3;的某些假设,使我们能够建立监督方案的整体性能和鲁棒的稳定性保证,并将约束包括在闭环变量以及控制器结构中。数值仿真表明了所提出的控制算法的相关特征。

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  • 来源
    《Control Theory & Applications, IET》 |2011年第18期|p.2168-2178|共11页
  • 作者

    Giovanini L.;

  • 作者单位

    Faculty of Engineering and Water Sciences, National Council for Scientific and Technological Research and the Centre for Signals, Systems and Computational Intelligence, Universidad Nacional del Litoral, Santa Fe, Argentina;

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  • 正文语种 eng
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