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Iterative unfalsified adaptive control: analysis of the disturbance-free case

机译:迭代非伪造自适应控制:无扰动情况分析

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The paradigm of classical linear system identification is to assume that the system generating the data belongs to an uncertainty model set consisting of unknown transfer function coefficients and unknown noise variances. However, this uncertainty model set does not provide a means for estimating the size of the unmodeled dynamics, although formulae exist for large data length and large model order]. A philosophical shift from identification to unfalsification allows the uncertainty model set to include dynamic uncertainty with an unknown bound which can be estimated (unfalsified) along with the usual system identification parameters. We examine the use of uncertainty model unfalsification for direct and indirect iterative adaptive control. Specifically, we analyze three approaches to iterative adaptive control: (1) indirect control design via classical system identification, (2) indirect control design via plant uncertainty model unfalsification, and (3) direct controller unfalsification. Each approach is analyzed under the same simplifying assumptions: infinite data, the plant is linear-time-invariant and disturbance-free, and the iterative controller is also linear-time-invariant.
机译:经典线性系统识别的范例是假设生成数据的系统属于不确定模型集,该不确定模型集由未知传递函数系数和未知噪声方差组成。然而,尽管存在针对大数据长度和大模型阶数的公式,但这种不确定性模型集并未提供估算未建模动力学大小的方法。从识别到非伪造的哲学转变允许不确定性模型集包含具有未知界限的动态不确定性,可以将其与常规系统识别参数一起估计(伪造)。我们研究了将不确定性模型伪造用于直接和间接迭代自适应控制。具体而言,我们分析了三种迭代自适应控制方法:(1)通过经典系统识别进行间接控制设计;(2)通过工厂不确定性模型不伪造进行间接控制设计;(3)直接控制器不伪造。每种方法都在相同的简化假设下进行了分析:无限的数据,工厂是线性时不变且无干扰的,迭代控制器也是线性时不变的。

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