Sampling random transfer functions

C. Lagoa, Xiang Li, M. C. Mazzaro, M. Sznaier
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引用次数: 9

Abstract

Recently, considerable attention has been paid to the use of probabilistic algorithms for analysis and design of robust control systems. However, since these algorithms require the generation of random samples of the uncertain parameters, their application has been mostly limited to the case of parametric uncertainty. Notable exceptions to this limitation are the algorithm for generating FIR transfer functions in Lagoa et al. and the algorithm for generating random fixed order state space representations in Calafiore et al. In this paper, we provide the means for further extending the use of probabilistic algorithms for the case of dynamic causal uncertain parameters. More precisely, we exploit both time and frequency domain characterizations to develop efficient algorithms for generation of random samples of causal, linear time-invariant uncertain transfer functions. The usefulness of these tools are illustrated by developing an algorithm for solving some multi-disk problems arising in the context of synthesizing robust controllers for systems subject to structured dynamic uncertainty.
抽样随机传递函数
近年来,概率算法在鲁棒控制系统分析和设计中的应用受到了广泛的关注。然而,由于这些算法需要生成不确定参数的随机样本,因此它们的应用大多局限于参数不确定的情况。值得注意的例外是Lagoa等人生成FIR传递函数的算法和Calafiore等人生成随机定序状态空间表示的算法。在本文中,我们提供了进一步扩展概率算法在动态因果不确定参数情况下的使用的方法。更准确地说,我们利用时域和频域特征来开发有效的算法,用于生成因果线性时不变不确定传递函数的随机样本。这些工具的有用性通过开发一种算法来解决在结构化动态不确定性系统的鲁棒控制器合成背景下出现的一些多磁盘问题来说明。
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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