一类具有时滞的离散LTI系统的可控性和可观测性的数据驱动分析方法

Binquan Zhou, Zhuoqi Wang, Yueyang Zhai, H. Yuan
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引用次数: 8

摘要

针对一类具有未知参数矩阵的离散线性时不变系统的状态可控性和状态可观察性问题,提出了两种数据驱动的分析方法。为了分析系统的状态可控性和状态可观察性,这些数据驱动方法首先将系统模型转换为一个增强的状态空间模型,然后利用之前测量的状态/输出数据直接构建该增强模型的可控性/可观察性矩阵。与传统的基于模型的特征分析方法相比,我们的方法有两个主要优点。首先,验证系统的状态可控性/可观测性不需要识别未知参数矩阵,这些特性可以直接根据实测数据进行验证,因此我们的方法工作量较小。其次,在构造状态可控性/可观察性矩阵时,它们的计算复杂度较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Analysis Methods for Controllability and Observability of A Class of Discrete LTI Systems with Delays
We propose a couple of data-driven analysis methods for the state controllability and state observability of a class of discrete linear time-invariant (LTI) systems with delays, which have unknown parameter matrices. To analyze the state controlla-bility and the state observability, these data-driven methods first transform the system model into an augmented state-space model, and then use the state/output data that were previously measured, to directly build the controllability/observability matrices of this augmented model. Our methods have two main advantages over the traditional model-based characteristics analysis approaches. First, the unknown parameter matrices are not necessary to be identified for verifying the state controllability/observability of the system, but these characteristics can be directly verified according to the measured data, thus our methods have less workload. Second, their computational complexity is lower for the construction of the state controllability/observability matrices.
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