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Iterative Algorithms for Symmetric Positive Semidefinite Solutions of the Lyapunov Matrix Equations

机译:Lyapunov矩阵方程的对称正半纤维解迭代算法

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It is well-known that the stability of a first-order autonomous system can be determined by testing the symmetric positive definite solutions of associated Lyapunov matrix equations. However, the research on the constrained solutions of the Lyapunov matrix equations is quite few. In this paper, we present three iterative algorithms for symmetric positive semidefinite solutions of the Lyapunov matrix equations. The first and second iterative algorithms are based on the relaxed proximal point algorithm (RPPA) and the Peaceman–Rachford splitting method (PRSM), respectively, and their global convergence can be ensured by corresponding results in the literature. The third iterative algorithm is based on the famous alternating direction method of multipliers (ADMM), and its convergence is subsequently discussed in detail. Finally, numerical simulation results illustrate the effectiveness of the proposed iterative algorithms.
机译:众所周知,可以通过测试相关Lyapunov矩阵方程的对称正定解来确定一阶自主系统的稳定性。然而,对Lyapunov矩阵方程的约束解的研究很少。在本文中,我们为Lyapunov矩阵方程进行了三种迭代算法,用于Lyapunov矩阵方程的对称正半纤维解。第一和第二迭代算法基于缓解近端点算法(RPPA)和PeaceMan-Rachford分裂方法(PRSM),并且可以通过对应于文献中的相应结果来确保它们的全局收敛。第三迭代算法基于乘法器(ADMM)的着名交替方向方法,随后详细讨论其收敛。最后,数值模拟结果说明了所提出的迭代算法的有效性。

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