Scalable positivity preserving model reduction using linear energy functions

Aivar Sootla, A. Rantzer
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引用次数: 22

Abstract

In this paper, we explore positivity preserving model reduction. The reduction is performed by truncating the states of the original system without balancing in the classical sense. This may result in conservatism, however, this way the physical meaning of the individual states is preserved. The reduced order models can be obtained using simple matrix operations or using distributed optimization methods. Therefore, the developed algorithms can be applied to sparse large-scale systems.
基于线性能量函数的可伸缩保正模型约简
在本文中,我们探讨了正保持模型约简。还原是通过截断原始系统的状态来实现的,而不需要经典意义上的平衡。这可能会导致保守主义,然而,通过这种方式,个体状态的物理意义得以保留。降阶模型可以通过简单的矩阵运算或采用分布式优化方法得到。因此,所开发的算法可以应用于稀疏的大规模系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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