Control System Laboratory, Department of Electrical Engineering, National Cheng Kung University, Tainan 701, Taiwan, ROC.
ISA Trans. 2012 Jan;51(1):81-94. doi: 10.1016/j.isatra.2011.08.001. Epub 2011 Aug 27.
In this paper, an efficient decentralized iterative learning tracker is proposed to improve the dynamic performance of the unknown controllable and observable sampled-data interconnected large-scale state-delay system, which consists of N multi-input multi-output (MIMO) subsystems, with the closed-loop decoupling property. The off-line observer/Kalman filter identification (OKID) method is used to obtain the decentralized linear models for subsystems in the interconnected large-scale system. In order to get over the effect of modeling error on the identified linear model of each subsystem, an improved observer with the high-gain property based on the digital redesign approach is developed to replace the observer identified by OKID. Then, the iterative learning control (ILC) scheme is integrated with the high-gain tracker design for the decentralized models. To significantly reduce the iterative learning epochs, a digital-redesign linear quadratic digital tracker with the high-gain property is proposed as the initial control input of ILC. The high-gain property controllers can suppress uncertain errors such as modeling errors, nonlinear perturbations, and external disturbances (Guo et al., 2000) [18]. Thus, the system output can quickly and accurately track the desired reference in one short time interval after all drastically-changing points of the specified reference input with the closed-loop decoupling property.
本文提出了一种有效的分散迭代学习跟踪器,以提高具有闭环解耦特性的未知可控和可观采样数据互联大时滞系统的动态性能,该系统由 N 个多输入多输出(MIMO)子系统组成。离线观测器/卡尔曼滤波器识别(OKID)方法用于获得互联大系统中各子系统的分散线性模型。为了克服建模误差对每个子系统的已识别线性模型的影响,基于数字重新设计方法开发了具有高增益特性的改进观测器来替代 OKID 识别的观测器。然后,将迭代学习控制(ILC)方案与分散模型的高增益跟踪器设计集成在一起。为了显著减少迭代学习周期,提出了一种具有高增益特性的数字重新设计线性二次数字跟踪器作为 ILC 的初始控制输入。高增益控制器可以抑制不确定误差,如建模误差、非线性扰动和外部干扰(Guo 等人,2000)[18]。因此,具有闭环解耦特性的系统输出可以在指定参考输入的所有急剧变化点之后的一个短时间间隔内快速准确地跟踪期望参考。