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Identification of linear parameter-varying systems via IO and subspace identification - a comparison

机译:通过IO和子空间识别识别线性参数变化系统 - 比较

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A common challenge associated with designing a Linear Parameter-Varying (LPV) controller for a nonlinear plant is identification of a plant model in state-space form with static parameter dependency. Till date, the two most frequently used methods to solve this problem are special canonical forms of Input-Output (IO) and subspace (SS) identification. This paper compares both identification methods on various criteria with a focus on low-complexity LPV systems. Features of both methods are illustrated by identification results on a simulated MIMO LPV system taken from the literature and by experimental results on the air-path system of a gasoline engine. Finally, some insight into the selection of an identification method for a given model class is provided.
机译:与设计用于非线性工厂的线性参数变化(LPV)控制器相关的共同挑战是识别具有静态参数依赖性的状态空间形式的工厂模型。截至日期,解决此问题的两个最常用方法是输入输出(IO)和子空间(SS)识别的特殊规范形式。本文将识别方法与各种标准进行比较,重点在低复杂性LPV系统上。两种方法的特征通过识别结果来说明从文献中取出的模拟MIMO LPV系统以及通过汽油发动机的空气路径系统的实验结果。最后,提供了一些关于选择给定模型类的识别方法的洞察。

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