二维foransini-marchesini系统的非脆弱H∞滤波器设计

Wu Xiao-Xue, Yang Tian-xing, Liu He-ping
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引用次数: 0

摘要

研究二维系统的非脆弱H∞滤波器设计问题。该滤波器具有区间型增益变化,这意味着它不能完全执行。首先,利用Finslers引理,将非脆弱滤波器设计化为一个鲁棒凸优化问题,并用经典顶点算法求解。需要注意的是,对于高维系统,所涉及的LMIS数量非常大,可能超过Matlab LMI工具箱的处理能力。为了解决这一难题,提出了一种高效的随机化算法。该算法可以显著减少LMI条件的数量。最后通过一个算例说明了所提方法的有效性。
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Non-fragile H∞ filter design for two-dimensional foransini-marchesini systems
This paper addresses the problem of non-fragile H∞ filter design for two-dimensional systems. This filter has interval-type gain variation, which means that it cannot be fully performed. Firstly, by Finslers'lemma, the nonfragile filter design has been formulated as a robust convex optimization problem, which is solved by the classic vertex algorithm. It should be noticed that, for high dimensional systems, the number of LMIS involved is so large that it may be over the processing capacity of Matlab LMI Toolbox. To solve this difficulty, an efficient randomized algorithm is proposed. This algorithm can reduce the number of LMI conditions significantly. Finally, a numerical example is given to illustrate the effectiveness of the proposed method.
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