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Common eigenvector approach to exact order reduction for Roesser state-space models of multidimensional systems

机译:常规特征向量对多维系统鲁塞尔状态空间模型的准确顺序降低

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摘要

The well-known Popov-Belevitch-Hautus (PBH) tests play an important role in the Kalman decomposition of 1-D systems and reveal the relationship among the eigenvalues, the eigenvectors and the reducibility of a given 1-D state-space model. This paper is to try to generalize the PBH tests to the n-D case for the exact reducibility of n-D Roesser models by exploiting the so-called common eigenvectors. Specifically, the notion of constrained common eigenvectors is introduced, for the first time, which provides insight into the relationship between reducibility and multiple eigenvalues. Based on this result, new reducibility conditions and the corresponding reduction procedure are developed for n-D Roesser models. It will be shown that this common eigenvector approach is applicable to a larger class of Roesser models for which the existing approaches may not be applied to do further order reduction. A Grobner basis approach is proposed to compute such a constrained common eigenvector, which also leads to an equivalent reducibility condition. Moreover, a generalization to the state delay case is also given so that the eigenvalues of both the system matrix and the state-delay system matrix can be treated simultaneously. (C) 2019 Elsevier B.V. All rights reserved.
机译:众所周知的波普夫 - Belevitch-hautus(PBH)测试在Kalman分解的1-D系统中发挥着重要作用,并揭示了特征值,特征向量和给定的1-D状态空间模型的重复性之间的关系。本文试图通过利用所谓的常见特征向量来概括为N-D roesser模型的精确还原的PBH测试。具体地,首次引入受约束的共同特征向量的概念,该概念提供了洞察再生和多个特征值之间的关系。基于此结果,为N-D roesser模型开发了新的还原条件和相应的减少过程。结果表明,这种常见的特征向量方法适用于更大类别的roesser模型,其中现有方法可能不应用于进行进一步减少顺序。提出了一种Grobner基础方法来计算这种受约束的共同特征向量,这也导致了等效的还原条件。此外,还给出了状态延迟壳体的概括,以便可以同时处理系统矩阵和状态延迟系统矩阵的特征值。 (c)2019年Elsevier B.V.保留所有权利。

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