首页> 外文期刊>IFAC PapersOnLine >A scalable moment matching-based model reduction technique of linear networks 1 1 The research leading to these results has received funding from UEFISCDI Romania, project TE - MoCOBiDS, no. 176/01.10.2015.
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A scalable moment matching-based model reduction technique of linear networks 1 1 The research leading to these results has received funding from UEFISCDI Romania, project TE - MoCOBiDS, no. 176/01.10.2015.

机译:线性网络中基于可伸缩矩匹配的模型简化技术 1 < ce:footnote id =“ fn1”> 1 导致这些结果的研究已获得罗马尼亚UEFISCDI的资助,项目TE-MoCOBiDS,否。 176 / 01.10.2015。

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In this paper we address the problem of model order reduction of linear network systems. Using Sylvester equation-based moment matching techniques, we propose a framework to compute families of parametrized reduced order models that achieve moment matching and preserve the structure of the to-be-reduced model of the network. Further, using balanced truncation techniques we also reduce the number of subsystems in the network. The result is a low-order approximation of the linear network system with a reduced number of subsystems that exhibit properties similar to the given network. This approach leads to a scalable modeling algorithm for large-scale networks, using specific features of the system, such as the dynamical interactions between subsystems and the concepts from the model order reduction field.
机译:在本文中,我们解决了线性网络系统模型降阶的问题。使用基于Sylvester方程的矩量匹配技术,我们提出了一个框架来计算参数化降阶模型系列,这些模型可实现矩量匹配并保留网络待约化模型的结构。此外,使用平衡的截断技术,我们还减少了网络中子系统的数量。结果是线性网络系统的低阶近似,并且子系统的数量减少了,这些子系统表现出与给定网络相似的特性。这种方法使用系统的特定功能(例如,子系统之间的动态交互以及模型阶数减少字段中的概念)导致了针对大型网络的可伸缩建模算法。

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