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Stability analysis and control design of singular Markovian jump systems via a parameter-dependent reciprocally convex matrix inequality

机译:通过参数依赖性互换凸矩形矩阵不等式统计马尔可夫跳跃系统的稳定性分析与控制设计

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This paper is concerned with the problems of stochastic stability and control design for singular Markovian jump systems (SMJSs) with time varying delay. The derivative coefficient is considered to be mode dependent. A parameter-dependent reciprocally convex matrix inequality (PDRCMI) is constructed, which covers some existing ones as its special cases. Different from some existing ones, the introduced parameters are completely known, which can be optimized by an iteration algorithm. To decrease the redundant decision variables, a mild assumption is given for the case of mode-dependent coefficient such that the considered system is decomposed into differential equations and algebraic ones. In this case, the components of state vectors of the subsystem are applied to construct a new augmented Lyapunov-Krasovkii functional (LKF). Based on the PDRCI and the new augmented LKF, a novel stochastic stability condition with both less computational demands and less conservativeness is derived. Based on the decomposed subsystems and the stability condition, a set of state feedback controller is designed in terms of linear matrix inequalities (LMIs). Some numerical examples are introduced to illustrate the effectiveness of the proposed results. (C) 2020 Elsevier Inc. All rights reserved.
机译:本文涉及单数马尔维亚跳跃系统(SMJSS)随机稳定性和控制设计问题,随着时间变化的延迟。衍生系数被认为是依赖的模式。构建了参数相关的互换凸矩阵不等式(PDRCMI),涵盖了一些现有的函数。与一些现有的参数不同,所引入的参数是完全已知的,可以通过迭代算法进行优化。为了减少冗余判定变量,对模式相关系数的情况给出了温和的假设,使得所考虑的系统被分解成微分方程和代数。在这种情况下,应用子系统的状态向量的组件被应用于构建新的增强Lyapunov-Krasovkii功能(LKF)。基于PDRCI和新的增强LKF,推导出具有较少计算需求和更少保守性的新型随机稳定性条件。基于分解的子系统和稳定性条件,在线性矩阵不等式(LMI)方面设计了一组状态反馈控制器。引入了一些数值例子以说明所提出的结果的有效性。 (c)2020 Elsevier Inc.保留所有权利。

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