On-Demand Type Feedback Controller by Implicit Self-Tuning Control

A. Yanou
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Abstract

This paper proposes a design method of on-demand type feedback controller based on generalized minimum variance control by using implicit self-tuning control. Coprime factorization approach can extend controller such as generalized minimum variance control (GMVC), generalized predictive control (GPC) and so on. The extended controller includes additional parameter, which can re-design the characteristic of the extended controller. On the other hand, the closed-loop characteristic by the extended controller maintains original one. Although strong stability systems can be obtained by the extended controller in order to design safe systems, focusing on feedback signal, the extended controller can also adjust the magnitude of the feedback signal. That is, the proposed controller can be designed so that the magnitude of the feedback signal becomes zero in the case that the control object is achieved. In other words the feedback signal by the proposed controller can appear on demand of achieving the control object. Therefore this paper proposes on-demand type feedback controller using implicit self-tuning control for plant uncertainty. A numerical example is shown in order to check the characteristic of the proposed method.
基于隐式自整定控制的按需反馈控制器
本文提出了一种基于广义最小方差控制的随需反馈控制器的设计方法,该方法采用隐式自整定控制。协素分解方法可以对广义最小方差控制(GMVC)、广义预测控制(GPC)等控制器进行扩展。扩展控制器包含附加参数,可以重新设计扩展控制器的特性。另一方面,扩展控制器保持了原有的闭环特性。虽然为了设计安全的系统,扩展控制器可以获得强稳定性系统,但重点关注反馈信号,扩展控制器还可以调整反馈信号的大小。也就是说,所提出的控制器可以被设计成在达到控制目标的情况下,反馈信号的幅值变为零。换句话说,所提出的控制器的反馈信号可以在实现控制目标的需要时出现。因此,本文提出了一种采用隐式自整定控制的按需反馈控制器。通过数值算例验证了所提方法的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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