首页> 外文会议>2013 IEEE International Multi Conference on Automation, Computing, Control, Communication and Compressed Sensing >Effective tracker design based on iterative learning control methodology with input constraint for a class of unknown interconnected large-scale sampled-data nonlinear systems
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Effective tracker design based on iterative learning control methodology with input constraint for a class of unknown interconnected large-scale sampled-data nonlinear systems

机译:基于带输入约束的迭代学习控制方法的有效跟踪器设计,用于一类未知互连的大规模采样数据非线性系统

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This paper proposes the decentralized iterative learning control (ILC) for a class of unknown sampled-data interconnected large-scale nonlinear with a closed-loop decoupling property via the off-line observer/Kalman filter identification (OKID) method. First, the OKID method not only is utilized to determine decentralized appropriate (low-) order discrete-time linear models for the class of unknown interconnected large-scale sampled-data systems by using known input-output sampled data but also to overcome the effect of modeling error on the identified linear model of each subsystem. For the tracking purpose, a norm-optimal ILC (NOILC) scheme is embedded to the decentralized models, and the constrained ILC problem is formulated in a successive projection framework. To reduce unwanted learning cycles, the digital-redesign linear quadratic tracker with the high-gain property is proposed to assign the initial control input of ILC. Finally, an illustrative example is given to demonstrate the effectiveness of the proposed methodologies.
机译:通过离线观测器/卡尔曼滤波识别(OKID)方法,针对一类具有闭环解耦特性的未知采样数据互连的大规模非线性系统,提出了一种分散式迭代学习控制(ILC)。首先,通过使用已知的输入-输出采样数据,OKID方法不仅用于为未知互连的大规模采样数据系统的类别确定分散的适当(低阶)离散时间线性模型,而且还克服了这种影响误差对每个子系统确定的线性模型的影响。为了进行跟踪,将标准最优ILC(NOILC)方案嵌入到分散模型中,并在连续投影框架中提出约束ILC问题。为了减少不必要的学习周期,提出了一种具有高增益特性的数字重新设计线性二次跟踪器来分配ILC的初始控制输入。最后,给出一个说明性的例子来证明所提出方法的有效性。

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