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Identification of systems with localised nonlinearity: From state-space to block-structured models

机译:具有局部非线性的系统的识别:从状态空间到块结构模型

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摘要

This paper presents a method that generates initial estimates for a rather general block-structured model, starting from the (more general) polynomial nonlinear state-space model. The considered block-structure, sometimes referred to as Linear Fractional Transformation (LFT) or Linear Fractional Representation (LFR), encompasses several simpler structures. It can e.g. describe Wiener, Hammerstein, Wiener-Hammerstein and nonlinear feedback structures. In fact, the chosen block-structure is the most general representation of a system with one Single-Input Single-Output (SISO) static nonlinearity. As is quite common in block-structure identification, the states and internal signals are assumed to be unknown. The method gradually imposes the structure of the LFR system, and at the same time finds an estimate of the Multiple-Input Multiple-Output (MIMO) linear dynamic part and the static nonlinearity (SNL). The method is illustrated via an experimental-data example.
机译:本文提出了一种从(更通用的)多项式非线性状态空间模型开始为通用的块结构模型生成初始估计的方法。所考虑的块结构(有时称为线性分数变换(LFT)或线性分数表示(LFR))包含几个更简单的结构。它可以例如描述Wiener,Hammerstein,Wiener-Hammerstein和非线性反馈结构。实际上,所选的块结构是具有单输入单输出(SISO)静态非线性的系统的最一般表示。正如在块结构识别中非常常见的情况一样,假定状态和内部信号未知。该方法逐渐强加了LFR系统的结构,同时找到了多输入多输出(MIMO)线性动态部分和静态非线性(SNL)的估计。通过实验数据示例说明了该方法。

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