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Improved results on H-infinity model reduction for continuous-time linear systems over finite frequency ranges

机译:有限频率范围内连续时间线性系统的H-无穷大模型简化结果

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This paper revisits the H-infinity model reduction problem for continuous-time linear systems over finite frequency ranges. Given an asymptotically stable system, our goal is to find a stable reduced-order system in such a way that the error of the transfer functions between the original system and the reduced-order one is bounded over a finite frequency range. By virtue of the generalized Kalman-Yakubovich-Popov (GKYP) Lemma, we first establish necessary and sufficient characterizations for this problem in terms of linear matrix inequalities (LMIs). For the low- and mid-frequency cases, through introducing a non-conservative multiplier and resorting to the projection lemma, the reduced-order system matrices are decoupled with the matrix variables from the GKYP Lemma. Then, by introducing a new diagonal matrix variable and based on congruence transformation, the reduced-order system matrices are further decoupled with the matrix variable induced by the projection lemma and can be parameterized by a new matrix variable. The results are extended to the high-frequency case without the use of projection lemma to reduce the conservatism. Moreover, an iterative convex optimization algorithm is developed to solve the conditions. Finally, we demonstrate via numerical examples that our method can achieve much smaller approximation error than existing results. (C) 2014 Elsevier Ltd. All rights reserved.
机译:本文回顾了有限频率范围内连续时间线性系统的H-∞模型降阶问题。给定一个渐近稳定的系统,我们的目标是找到一种稳定的降阶系统,以使原始系统和降阶系统之间的传递函数误差在有限的频率范围内。借助于广义的Kalman-Yakubovich-Popov(GKYP)引理,我们首先根据线性矩阵不等式(LMI)建立了对该问题的必要和充分的表征。对于低频和中频情况,通过引入非保守乘法器并求助于投影引理,将降阶系统矩阵与GKYP引理中的矩阵变量解耦。然后,通过引入新的对角矩阵变量并基于同余变换,将降阶系统矩阵与投影引理引起的矩阵变量进一步解耦,并可以通过新的矩阵变量对其进行参数化。将结果扩展到高频情况,而无需使用投影引理来减少保守性。此外,开发了一种迭代凸优化算法来解决该问题。最后,我们通过数值示例证明,与现有结果相比,我们的方法可获得的近似误差小得多。 (C)2014 Elsevier Ltd.保留所有权利。

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