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Relaxed stability conditions based on Taylor series membership functions for polynomial fuzzy-model-based control systems

机译:基于泰勒级数隶属函数的多项式模糊模型控制系统的松弛稳定性条件

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In this paper, we investigate the stability of polynomial fuzzy-model-based (PFMB) control systems, aiming to relax stability conditions by considering the information of membership functions. To facilitate the stability analysis, we propose a general form of approximated membership functions, which is implemented by Taylor series expansion. Taylor series membership functions (TSMF) can be brought into stability conditions such that the relation between membership grades and system states is expressed. To further reduce the con-servativeness, different types of information are taken into account: the boundary of membership functions, the property of membership functions, and the boundary of operating domain. Stability conditions are obtained from Lyapunov stability theory by sum of squares (SOS) approach. Simulation examples demonstrate the effect of each piece of information.
机译:在本文中,我们研究了基于多项式模糊模型(PFMB)的控制系统的稳定性,旨在通过考虑隶属函数的信息来放松稳定性条件。为便于进行稳定性分析,我们提出了一种近似形式的隶属函数的一般形式,该形式通过泰勒级数展开来实现。泰勒级数隶属度函数(TSMF)可以进入稳定性条件,以便表达隶属度与系统状态之间的关系。为了进一步降低保守性,考虑了不同类型的信息:隶属函数的边界,隶属函数的属性以及操作域的边界。稳定性条件是根据Lyapunov稳定性理论通过平方和(SOS)方法获得的。仿真示例演示了每条信息的效果。

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