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System Identification in a Real World

机译:在现实世界中的系统识别

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摘要

In this paper we discuss how to identify a mathematical model for a (non)linear dynamic system starting from experimental data. In the initial step, the frequency response function is measured, together with the properties of the disturbing noise and the nonlinear distortions. This uses nonparametric preprocessing techniques that require very little user interaction. On the basis of this information, the user can decide on an objective basis, in an early phase of the modelling process, to use either a simple linear approximation framework, or to build a more involved nonlinear model. We discuss both options here: i) Identification of linear models in the presence of nonlinear distortions, including the generation of error bounds; and ii) Identification of a nonlinear model. For the latter, a double approach is proposed, using either unstructured nonlinear state space models, or highly structured block oriented nonlinear models. The paper is written from a users perspective.
机译:在本文中,我们讨论如何从实验数据开始识别(非)线性动态系统的数学模型。在初始步骤中,测量频率响应函数,以及干扰噪声的性质和非线性失真。这使用了不需要非常小的用户交互的非参数预处理技术。在此信息的基础上,用户可以在建模过程的早期阶段进行客观基础,以使用简单的线性近似框架,或者构建更涉及的非线性模型。我们在此讨论两个选项:i)在存在非线性扭曲的情况下识别线性模型,包括产生错误界限; II)识别非线性模型。对于后者,使用非结构化非线性状态空间模型或高度结构化块导向的非线性模型提出了一种双重方法。本文是由用户的透视编写的。

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