线性时变连续系统的快速迭代学习控制方法

De-yuan Meng, Y. Jia, Junping Du, S. Yuan
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引用次数: 2

摘要

针对线性时变连续系统,提出了一种快速迭代学习控制方案。它保证了只需经过一次学习试验就可以准确地跟踪整个期望的输出轨迹。在该方案中,ILC律有两种类型,即时变d型ILC律和快速ILC律。基于二维(2-D)模型,分别证明了两类ILC律的收敛性,并推导了充分条件。在此基础上,提出了两种相应的ILC算法,使我们能够找到所需的控制输入。同时,将ILC的应用从定常控制系统扩展到时变控制系统,建立了二维线性连续离散Roesser型模型。最后给出了两个数值模拟实例来说明所得结果。
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A fast iterative learning control scheme for linear time-variant continuous systems
In this paper, a fast iterative learning control (ILC) scheme is presented for linear time-variant continuous systems. It ensures that the whole desired output trajectory can be accurately tracked only after one learning trial. In this scheme, there are two types of ILC laws, i.e., the time-variant D-type ILC law and the fast ILC law. Based on two-dimensional (2-D) model, convergence of the both types of ILC laws is proved respectively, and sufficient conditions are derived. Motivated by this, two corresponding algorithms for ILC are proposed, which enable us to find the desired control inputs. Meanwhile, the 2-D linear continuous-discrete Roesser's type model is developed by extending the applications of ILC from time-invariant control systems to time-variant control systems. Two numerical simulation examples are included to illustrate the obtained results.
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